Accepted Manuscript Solar irradiation from the energy production of residential PV systems Cédric Bertrand, Caroline Housmans, Jonathan Leloux, Michel Journée PII:
S0960-1481(18)30181-2
DOI:
10.1016/j.renene.2018.02.036
Reference:
RENE 9767
To appear in:
Renewable Energy
Received Date: 24 October 2017 Revised Date:
11 January 2018
Accepted Date: 6 February 2018
Please cite this article as: Bertrand Cé, Housmans C, Leloux J, Journée M, Solar irradiation from the energy production of residential PV systems, Renewable Energy (2018), doi: 10.1016/ j.renene.2018.02.036. This is a PDF file of an unedited manuscript that has been accepted for publication. As a service to our customers we are providing this early version of the manuscript. The manuscript will undergo copyediting, typesetting, and review of the resulting proof before it is published in its final form. Please note that during the production process errors may be discovered which could affect the content, and all legal disclaimers that apply to the journal pertain.
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Solar irradiation from the energy production of residential PV systems C´edric Bertrand †∗, Caroline Housmans †, Jonathan Leloux ‡, and Michel Journ´ee † † Royal Meteorological Institute of Belgium, Brussels, Belgium.
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‡ Universidad Polit´ ecnica de Madrid, Madrid, Spain
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Abstract
Considering the dense network of residential photovoltaic (PV) systems implemented in Belgium, the paper evaluates the opportunity of deriving global horizontal solar irradiation data from the electrical energy production registered at PV systems. The study is based on one year (i.e. 2014) of hourly PV power output collected at a representative sample of roughly 1500 residential PV installations. Validation is based on ground-based measurements of solar radiation
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performed within the network of radiometric stations operated by the Royal Meteorological Institute of Belgium and the method’s performance is compared to the satellite-based retrieval approach.
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Our results indicate that the accuracy of the derived solar irradiation data depends on a number of factors including the efficiency of the PV system, the weather conditions, the density of PV systems that can be used for the tilt to
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horizontal conversion, other data sources that can be accessed to complement the PV data. In particular, the computed solar irradiation data degrade as the information about the orientation and tilt angles of the PV generator becomes more inaccurate. It is also found that there are certain sun positions (i.e. low solar elevations) for which the method fails to produce a valid estimation. ∗ Corresponding
author. Tel.:+32 2 373 05 70 Email address:
[email protected] (C´ edric Bertrand † )
Preprint submitted to Renewable Energy
January 8, 2018
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Keywords: Photovoltaic system, solar radiation, decomposition model,
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transposition model, remote sensing, ground measurements, crowdsourcing
1. Introduction
Appropriate information on solar resources is very important for a variety
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of technological areas, such as: agriculture, meteorology, forestry engineering,
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water resources and in particular in the designing and sizing of solar energy
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systems. Traditionally, solar radiation is observed by means of networks of me-
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teorological stations. However, costs for installation and maintenance of such
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networks are very high and national networks comprise only a few stations.
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Consequently the availability of solar radiation measurements has proven to be
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spatially and temporally inadequate for many applications.
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Over the last decades, satellite-based retrieval of solar radiation at ground
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level has proven to be valuable for delivering a global coverage of the global
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solar irradiance distribution at the Earth’s surface (e.g. [1], [2] [3], [4]). The
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recent deployment of solar photovoltaic (PV) systems offers an opportunity to
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extend the in-situ characterization of the incoming solar radiation at the Earth’s
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surface through the reverse engineering conversion of the energy production of
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the PV systems to global solar irradiation data.
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During the last years, thanks to the newest developments in telecommunica-
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tion technologies, an increasing amount of electrical (power, frequency, current,
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voltage etc ...) data from the operation of PV systems has has become avail-
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able. These operational data are now typically available at time intervals of 10
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minutes, opening the doors to a totally new set of data analysis procedures that
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were difficult to imagine just a few years ago. Smart energy meters are pro-
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jected to become widespread in a couple of years, which will enable to monitor
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the energy production and other electrical outputs of millions of PV systems
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in the world. Therefore, in the near future, it will be possible to know the
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energy production of PV systems located at millions of points spread over the
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whole globe. This conveys the potential that solar irradiation data can also be
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retrieved at all these points.
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However, using the energy production registered at PV systems as a solar
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irradiation sensor is not straightforward (e.g. [5], [6]). It requires first to derive
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the solar irradiation from the energy production of the PV system (knowing
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that the power output of a PV system is not directly proportional to the solar
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irradiance that it receives). Second because modules are installed at a tilt angle
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close to local latitude to maximize array output (or at some minimum tilt to
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ensure self-cleaning by rain) this requires to convert the retrieved tilted global
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solar irradiance to horizontal. Towards this objective, operational data from a
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representative sample of Belgian residential PV installations (note that tilt and
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azimuth of residential PV systems often depend on the particular rooftop on
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which they are installed, rather than being designed for optimal performance )
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have been considered to assess the performance of such an approach.
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In Belgium, the total installed PV capacity has increased dramatically in
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recent years from 102.6 MW in 2008 (26.55 MW in 2007) to 3423 MW at the
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end of 2016, according to data collected by local renewable energy association
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APERe (http://www.apere.org/), which has combined the figures released by
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the country’s three energy regulators Brugel (https://www.brugel.brussels/),
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VREG (http://www.vreg.be/)and CWaPE (http://www.cwape.be/). By con-
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trast to the multi-megawatt PV plants installed in the South of Europe, res-
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idential and commercial rooftop PV systems with less than 10 kW capacity
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represent the majority of the installed capacity in Belgium. As an illustration,
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in 2016, the country installed about 170 MW across 25.000 PV systems.
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2. Data
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2.1. Residential PV systems data
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This work is based on one year (i.e. 2014) of hourly PV power output
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collected at more than 2893 PV systems in Belgium installed from 2008 to
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2013. PV generation data was collected via the Rtone company website (Rtone,
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http://www.rtone.fr). The PV energy production data provided by Rtone was
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monitored using the commercial Rbee Solar monitoring product, which measures
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the energy production with a smart energy meter at a 10-min time interval. The
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information concerning the PV systems (i.e. metadata) were supplied by their
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owners. Each PV system is localized by its latitude and longitude, completed
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with the corresponding altitude. The PV generator is characterized by its ori-
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entation and tilt angles, its total surface, and its total peak power. Additional
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information about the PV module manufacturer and model, inverter manufac-
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turer and model, installer, year of installation, PV cell/module technology can
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also be provided.
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Metadata has been subjected to several checks in order to isolate and remove
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as much erroneous information as possible. The standard set of filters employed
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before analyses are the following:
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1. selection of single array systems since generation data cannot be decom-
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posed into constituent arrays, 2. selection of systems located in Belgium,
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3. selection of systems with and orientation between -90o and +90o from
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south and a tilt from horizontal smaller than 60o .
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In some cases, system details were investigated manually to verify to a good
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degree of confidence whether the systems orientation, tilt or peak power are
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correct. Indeed, metadata are prone to errors on part of the owner, by entering
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incorrect system parameters but also in some cases due to installer’s conventions.
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As an example, tilt angle can be erroneously reported as 0o simply because 0 is
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used as default value in case of missing information. Another identified limita-
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tion is that many angles values are rounded as multiples of 5o .
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1470 systems have been selected and considered in this study after these
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preliminary checks (see Figure 1 for the location of the selected PV systems).
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It is worth pointing out that due to availability reasons, most of the data comes
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from Wallonia and Brussels. As indicated in Table 1, the vast majority of the
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selected PV generators have a tilt angle between 20o and 50o , which generally
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corresponds to the slope of the roofs on which they are installed ([7]).
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2.2. Ground stations measurements
The Royal Meteorological Institute of Belgium (RMI) has a long term ex-
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perience with ground-based measurements of solar radiation in Belgium (unin-
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terrupted 30 min average measurements in Uccle since 1951, in Oostende since
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1958, and in Saint-Hubert since 1959). Uccle is one of the 22 Regional Radiation
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Centres established within the WMO Regions. The incoming global horizontal
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solar irradiance is currently measured in 14 Automatic Weather Stations (AWS)
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in addition to the measurements performed in our main/reference station in Uc-
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cle (see Table 2).
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At the reference station in Uccle, measurements of the global horizontal so-
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lar irradiance (GHI) are performed by Kipp & Zonen CM11-secondary standard
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pyranometers. The CM11 pyranometer has a thermopile detector and presents
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a reduced thermal offset (i.e. about 2 Wm−2 at 5 K/h temperature change).
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The pyranometer directional error (up to 80o with 1000 Wm−2 beam) is less
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than 10 Wm−2 and its spectral selectivity (300-1500 nm) is smaller than 2%.
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At the 14 RMI’s AWS, GHI observations for the year 2014, were made with a
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Kipp & Zonen CNR1 net radiometer. It consists of a pyranometer (model type
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CM3 complying with the ISO Second Class Specification) and a pyrgeometer
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(model type CG3) pair that faces upward and a complementary pair that faces 5
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downward. The pyranometers and pyrgeometers measure shortwave and far in-
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frared radiation, respectively. The CM3 pyranometer has a thermopile sensor
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and presents a limited thermal offset (i.e. ± 4 Wm−2 at 5 K/h temperature
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change). Its directional error (with 1000 Wm−2 beam) is ± 25 Wm−2 and its
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spectral selectivity (350-1500 nm) is ± 5%.
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All ground measurements are made with a 5-s time step and then integrated
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to bring them to a 10-min time step. The 10-min data have undergone a series
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of automated quality control procedures ([8]) prior to be visually inspected and
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scrutinized in depth by a human operator for more subtle errors. Because our
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radiometric station in Saint-Hubert (AWS 6476) was known to operate defi-
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ciently in 2014, all GHI measurements from this station were discarded. The
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geographical location of the remaining 13 ground measurement sites is provided
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in Figure 1 together with the selected residential PV systems. Note that be-
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cause the data quality control revealed that the CNR1 net radiometer installed
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in the Buzenol station (i.e. AWS 6484) has only performed well intermittently
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during the year 2014, GHI measurements from this station were not used for
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validation purpose.
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3. Methods
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3.1. Conversion of PV system energy production to tilted global solar irradiation
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The initial step of the approach consists in the derivation of global irradi-
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ance in plane of array, Gt , from the specific power output, P , of a PV system.
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Numerous models to calculate P from Gt exist in the literature (e.g. [9], [10]).
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However, it is well known that the energy conversion efficiency of PV mod-
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ules depends on a number of different influences. Losses in PV systems can be
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separated in capture losses and system losses (e.g. [11], [12]). Capture losses
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are caused, e.g., by attenuation of the incoming light, temperature dependence,
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electrical mismatching, parasitic resistances in PV modules and imperfect max-
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imum power point tracking. System losses are caused, e.g., by wiring, inverter,
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and transformer conversion losses. All these effects cause the module efficiency
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to deviate from the efficiency measured under Standard Test Condition (STC),
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which defines the rated or nominal power of a given module.
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According to [13], the direct current (DC) power output of a PV generator can be properly described by:
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PDC = P ?
Gef f Gef f Gef f ? . 1 + κ (T − T ) . a + b + c ln . fDC (1) c c G? G? G? ?
refers to STC [Irradiance: 1000 W m−2 ; Spectrum: AM
where the symbol
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1.5; and cell temperature: 25o C], PDC is the DC power output of the PV gen-
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erator (W), P ? is the nameplate DC power of the PV generator (i.e. power at
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maximum-power point, in W), Gef f is the effective global solar irradiance (W
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m−2 ) received by the PV generator (it takes into consideration the optical ef-
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fects related to the solar incidence angle), G? is the global solar irradiance under
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STC (W m−2 ), κ is the coefficient of power variation due to cell temperature
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(%/o C) , Tc and Tc? are respectively the cell temperatures under operating and
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STC conditions (o C), the three parameters a, b and c describe the efficiency
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dependence on irradiance, and fDC is a coefficient that lumps together all the
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additional system losses in DC (e.g. technology-related issues, soiling and shad-
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ing).
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The first round brackets on the right-hand side of Eq. 1 takes into account
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the dependence of the efficiency with the temperature. The formulation goes a
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long way back ([14], [15]) and considers that the PV module efficiency is affected
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by temperature, decreasing at a constant rate. Handling with this model for-
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mulation just requires standard information: P ? is the PV array rated power,
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which can be estimated as the product of the number of PV modules constitut-
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ing the PV array multiplied by their nameplate STC power, and κ is routinely
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measured in the context of worldwide extended accreditation procedures: IEC
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Standard-61215 (2005) and IEC Standard-61646 (2008) for crystalline silicon
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and thin film devices, respectively. P ? and κ values are always included in PV
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manufacturer’s data sheets or in more specific information as flash-reports.
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The second round bracket on the right-hand side of the Eq. 1 considers the
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efficiency dependence on irradiance. That was initially attempted by adding a
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base 10 logarithm ([14]) but it is better implemented by this empirical model
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proposed by [16] and [17] where a, b and c are empirical parameters. The effi-
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ciency increases with decreasing irradiance, due to series resistance effects, are
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represented by the term (b . Gef f /G? ), providing b ≤ 0, while the efficiency
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decreases with decreasing irradiance, due to parallel resistance effects, are rep-
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resented by the term (c ln Gef f /G? ), providing c ≥ 0.
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The corresponding alternating current (AC) power output of the PV system from this DC power at the inverter entry is given by:
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PAC = PDC ηIN V fAC
(2)
where PAC is the AC power output of the PV generator, ηIN V is the yield of the
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inverter, and fAC is a coefficient that lumps together all the technology-related
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additional AC system losses.
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The energy produced during a period of time T is finally given by:
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Z
t=T
EAC =
PAC dt
(3)
t=0
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To assess the technical quality of a particular PV system, energy performance
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indicators are obtained by comparing its actual production along a certain pe-
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riod of time with the production of a hypothetical reference system (of the same
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nominal power, installed at the same location, and oriented the same way). The
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Performance Ration (PR) which is the quotient of alternating current yield
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and the nominal yield of the generators direct current, is by far the most widely
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used performance indicator. It is defined mathematically as:
PR =
ηachieved EAC /Gt = ? ? ηspec PN /G
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(4)
where PN? is the nominal (or peak) DC power of the PV generator, understood
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as the product of the number of PV modules multiplied by the corresponding
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in-plane STC power. Because EAC , PN? and Gt are given by the billing energy
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meter of the PV installation, the PV manufacturer and the integration of a
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solar irradiance signal, the PR value can be directly calculated. The difference
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between 1 and PR lumps together all imaginable energy losses (i.e. capture
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losses and system losses).
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For a given PV system and site, the P R value tends to be constant along
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the years, as much as the climatic conditions tend to repeat. When sub-year
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periods are considered, the P R dependence on unavoidable and time-dependent
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losses requires corresponding correction in order to properly qualify the tech-
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nical quality of a PV system. Based on Eqs. 1 to 3, we can reformulate Eq. 4 as:
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1 .PR = 1 fG . fT . fAC . fP DC . fBOS
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(5)
in which the losses have been lumped into five main categories: 1. fG : PV module’s yield in function of incident irradiance level,
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2. fT : PV module’s yield in function of cell’s temperature,
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3. fAC : yield of the conversion from DC to AC.
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4. fP DC : yield that represents the ratio of the real DC power and the rated
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DC power,
5. fBOS : yield of the balance of system. Three of these five losses parameters can be expressed analytically. Based
on Eq. 1, the efficiency dependence on irradiance is:
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fG = a + b
Gef f Gef f + c ln ? G G? 9
(6)
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However, such a formulation of the fG parameter is useless here since the
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effective irradiance, Gef f , is by definition unknown in our case. To overcome
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such a limitation, fG is split into its two main contributing factors:
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fG = firr . finc
(7)
where firr represents the variation in the PV module efficiency with the level
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of the solar irradiance and finc the variation in the PV module efficiency as a
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function of the incidence angle of the solar irradiance, respectively. Then, ap-
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proximating the ratio Gt /G? by the Capacity Utilization Factor (CUF) defined
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as:
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CU F =
EAC T . PN?
(8)
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with EAC the energy produced during a period of time T (see Eq. 3) and PN?
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the nominal (or peak) DC power of the PV system, firr can be estimated by:
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(9)
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firr = a + b . CU F + c ln(CU F )
In this equation, the three parameters a, b and c vary according to the con-
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sidered PV module technology. Values representative of crystalline silicon cells
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technology (i.e., a=1, b=-0.01 and c=0.025) have been assumed for all PV mod-
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ules here. Finally, based on [18], finc can be expressed as follows:
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finc = 1 −
1 − exp(−(cos θi )/αr ) 1 − exp(−1/αr )
(10)
where θi is the irradiance angle of incidence and αr the angular loss coefficient,
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an empirical dimensionless parameter dependent on the PV module technology
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and the dirtiness level of the PV module. Typical αr values range from 0.16 to
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0.17 for commercial clean crystalline and amorphous silicon modules. In this
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work a value of 0.20 has been assumed for αr which is a typical value for crys-
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talline silicon PV modules presenting a moderate level of dirtiness.
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The second factor, fT , is defined as:
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fT = 1 + κ (Tc − Tc? )
(11)
where the operating temperature of the solar cell, Tc , is calculated from the
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ambient temperature, Ta , using the following equation based on the Nominal
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Operation Cell Temperature (NOCT) defined as the temperature reached by
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the cells when the PV module is exposed to a solar irradiance of 800 W.m−2 ,
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an ambient temperature of 20o C, and a wind speed of 1 m.s−1 (it is obtained
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from the manufacturer datasheets):
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Tc = Ta + 260
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N OCT − 20 . Gt 800
(12)
Similarly to Eq. 6 the CUF approximation is used to estimate Tc reformulating Eq. 12 as follows:
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Tc = Ta +
(N OCT − 20)/800 . 1000 . CU F
(13)
The third factor, fAC , is computed from:
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fAC =
PAC . ηEU R
PN?
(14)
where, the so-called ”European efficiency” of the inverter, ηEU R , is given by the
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formula:
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(15)
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ηEU R = 0.03 η5 + 0.06 η10 + 0.13 η20 + 0.1 η30 + 0.48 η50 + 0.2 η100 268
with η5 , η10 , η20 , η30 , η50 , η100 the instantaneous power efficiency values at 5%,
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10%, 20%, 30%, 50% and 100% load.
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The fourth factor, fP DC , as well as the fBOS factor cannot not be directly
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estimated because the real energetic behavior of each PV system is a priori
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unknown. Lumping both factors together into a new losses factor, fP ERF , it
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follows from Eqs. 4 and 5 that
fP ERF =
1 fG . fT . fAC
.
EAC /Gt PN? /G?
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(16)
where the fP ERF factor sums up all the performance losses that, on the first
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hand could be avoided and, on the other hand that cannot be modeled through
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a simple and general analytical expression. This factor can be estimated for
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each PV system from historical data of EAC and Gt using the EAC data di-
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rectly from the energy meters and Gt data obtained from the combination of
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clear-sky radiative model simulations and cloud cover information. It is worth
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pointing out that to reduce the uncertainties in its estimation, the fP ERF factor
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was determined on a monthly basis from clear sky situations.
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Similarly to [19], clear-sky situations were determined from the PV systems
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energy production time series using a modified version of the algorithm devel-
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oped by [20]. For each PV system, fP ERF , was calculated as being the ratio
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between the electrical energy produced by the PV system corrected by the three
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other losses factors (i.e. fG , fT , and fAC ) together with the quotient PN? /G? and
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the calculated in-plane clear-sky irradiation received by the PV system during
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the considered month. Clear sky simulations were carried out by running the In-
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eichen and Perez clear-sky model [21] using monthly mean climatological Linke
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turbidity values from PVGIS/CMSAF (http://re.jrc.ec.europa.eu/pvgis/). Sim-
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ulated clear sky global horizontal irradiances were then transposed to tilted
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clear sky global irradiance using the ERB decomposition model ([22]; see Ap-
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pendices A.1) and the HAY transposition model ([23]; see Appendices B.1).
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Finally, once all losses factors are estimated, the derivation of the in-plane
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hourly global solar irradiance from the hourly PV system energy production is
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given by:
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Gt =
1 EAC . fG .fT .fAC .fP ERF PN? /G? 12
(17)
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where all losses factors except fP ERF are evaluated on a hourly basis using air
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temperature measurements performed within the RMI’s AWS spatially interpo-
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lated at each of the PV system locations in the computation of the operating
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solar cells temperature, Tc (see Eq. 13). fP ERF are determined monthly from
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the previous month EAC data.
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3.2. Tilt to horizontal global solar irradiance transposition
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The next step consists in the conversion of the retrieved in-plane global solar
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irradiance values from the PV systems energy outputs to global horizontal solar
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irradiance at each of the PV systems location. If many transposition models
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have been proposed in the literature (see [24] for a review) to convert solar ir-
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radiance on the horizontal plane, Gh , to that on a tilted plane, Gt , the inverse
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process (i.e. converting from tilted to horizontal) is only poorly discussed in
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literature (e.g. [25], [26], [27], [28], [5], [6], [29]). The difficulty relies on the fact
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that the procedure is analytically not invertible.
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Transposition models have the general form:
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Gt = Bt + Dt + Dg
(18)
where the tilted global solar irradiance, Gt , is expressed as the sum of the in-
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plane direct irradiance, Bt , in-plane diffuse irradiance, Dt , and the irradiance
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due to the ground reflection, Dg . The direct component, Bt , is obtained from:
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cos θi = Bh rb (19) cos θz with Bn the direct normal irradiance and Bh the direct irradiance on a horizon-
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tal surface, respectively. θi is the incidence angle and θz the solar zenith angle,
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respectively. Parameter rb = cos θi / cos θz is a factor that accounts for the di-
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rection of the beam radiation. The diffuse component, Dt , and the irradiance
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due to the ground reflection, Dg , can be modeled as follows:
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Bt = Bn cos θi = Bh
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Dt = Dh Rd 13
(20)
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Dg = ρGh Rr
(21)
where Dh is the diffuse horizontal irradiance, Gh the global horizontal irradi-
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ance (i.e., Gh = Dh + Bh ), Rd the diffuse transposition factor and ρ the ground
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albedo. The transposition factor for ground reflection, Rr , can be modeled un-
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der the isotropic assumption (e.g. [30]) as follows:
Rriso =
1 − cos β 2
(22)
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where, β, is the tilt angle of the inclined surface. See Figure 2 for angles defini-
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tion.
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Considering the effective global horizontal transmittance, Kt , the direct
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normal transmittance, Kn , and the diffuse horizontal transmittance, Kd (i.e.,
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Kd + Kn = Kt ):
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Gh = Kt Io cos θz
(23)
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Bn = Kn Io
Dh = Kd Io cos θz
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where Io is the extraterrestrial normal incident irradiance, Eq. 18 can be rewrit-
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ten as:
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Kd Kd + cos θz Rd + ρRr Gt = Kt Io cos θi 1 − Kt Kt
(24)
It comes from Eq. 24 that when only one tilted global solar irradiance mea-
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surement is considered, the conversion of Gt to Gh requires the use of a decompo-
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sition model (i.e. model that separate direct and diffuse solar components from
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the global one) to estimate Kd from Kt in addition to a transposition model
348
to solve the inverse transposition problem. Eq. 24 is solved by an iteration
349
procedure, varying the target quantity Gh (through Kt ) until the resulting G0t
350
matches the input Gt (e.g. [26], [28], [5], [29]). Note that an alternative method
351
to Eq. 24 based on the Olmo model ([31]) that presents the particularity of be-
352
ing analytically invertible was proposed by [5]. But, if the overall performance 14
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of the inverted Olmo model was found comparable with the other approach,
354
the results were slightly worse than those obtained by inverting the decompo-
355
sition and transposition models in combination with an iterative solving process.
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353
356
When two (or more) tilted irradiances values (with different tilt angles
358
and/or orientations) are involved in the inverse transposition process, only a
359
transposition model is required. The idea that simultaneous readings of a multi-
360
pyranometers system can be used to disangle the various components of solar
361
radiation on inclined surfaces was originally proposed by [25] to solve in remote
362
locations the periodic adjustment required by normal incidence and shadow-
363
band pyranometers to ensure that their readings remain accurate when long-
364
term data acquisition is in progress.
M AN U
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357
365
Given n tilted pyranometers (with different inclinations and/or orientations),
367
the inverse transposition problem can be represented in the matrix form (e.g.
368
[27]):
369
TE D
366
xT Λ x + B − C = 0
(25)
where Λ = {Ai } is a 2 × n × 2 third-order tensor, B = {Bi } is a n × 2 matrix,
371
C is a column vector with n given entries, and x a column vector with 2 variables:
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370
15
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372
0
Ai
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∈ <2×n×2 Ai = Ai 0 C1 B1 C2 B2 n×2 B= .. ∈ < .. . . Cn Bn Gt1 Gt2 n C= . ∈< ..
M AN U
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(26)
Gtn
xT = Dh
2 Bh ∈ <
373
where the coefficients Ai , Bi and Ci depend on the considered transposition
374
model.
375
The least square (hereafter referred to as LS) solution to Eq. 26 is given by: 1 min P (x) = ||xT Λ x + B − C||2 : x ∈ <2 (27) 2
TE D
376
with ||.|| referring to the Euclidean norm. However, the LS is hard to solve and
378
a standard technique to resolve Eq. 27 is to use a Newton type iteration method
379
(e.g. [32]). As an alternative, Eq. 26 can also be solved by minimizing the errors
380
(this approach is hereafter denoted to as EM - Errors Minimization). In this
381
case, the solution is to minimize
AC C
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377
382
( min E(x) =
n X
) 2i (x)
2
:x∈<
(28)
i=1
383
where, i (x) = (Ai Dh Bh + Bi Bh + Ci Dh ) − Gti , with i = 1, ..., n denoting the
384
tilted pyranometer.
16
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385
4. Results The Mean Bias Error (MBE) and the Root Mean Square Error (RMSE)
387
statistical error indexes have been used to evaluate the prediction of the global
388
horizontal solar irradiance from the energy production of residential PV systems. n
1X (ei ) n i=1 v u n u1 X RM SE = t (e2 ) n i=1 i M BE =
390
SC
389
RI PT
386
where ei = (Gi,e − Gi,o ) is the residual value, Gi,e are the estimated values and
392
Gi,o represent the observed measurements. A positive MBE (resp. a negative
393
MBE) means that the model tends to overestimate (resp. underestimate) the
394
observed measurements.
395
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391
To obtain dimensionless statistical indicators we express MBE and RMSE
397
as fractions of mean solar global irradiance during the respective time interval:
398
TE D
396
M BE ¯ M RM SE RM SE[%] = ¯ M M BE[%] =
399
401
402
¯ = where M
1 n
n P
(Gi,o ) is the measurements mean.
EP
400
i=1
Statistical error indexes were computed between in situ hourly irradiance measurements and the estimations computed from the hourly energy produc-
404
tions of residential PV systems surrounding the measurement stations. An ini-
405
tial radius of 5 km centered on the station was considered to select the residential
406
PV systems for the validation purpose. When less than 4 PV installations were
407
found within the delimited area, the radius was extended to 10 km. Table 3
408
indicates for each of our measurement sites the number of neighboring PV in-
409
stallations used for validation. No PV system was found in the vicinity of the
AC C 403
17
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Sint-Katelijn-Waver, Retie and Mont-Rigi stations (i.e. AWS 6439, AWS 6464
411
and AWS 6494, respectively) and 3 others stations only have one surrounding
412
residential PV system. At the opposite, the maximum number of installations
413
surrounding a station is 37 for Ernage (i.e. AWS 6459).
414
RI PT
410
Based on our former evaluation of the inverse transposition problem ([29]),
416
two different approaches have been considered to compute the global horizontal
417
solar irradiance from the PV systems energy production. In the first approach,
418
the tilt to horizontal conversion is performed independently at each PV installa-
419
tions surrounding the validation site using Eq. 24 with the OLS decomposition
420
model (see Appendices A.2) and the SKA transposition model (see Appen-
421
dices B.2). The median value of the individual PV system estimates is consid-
422
ered in the validation against AWS observations. This approach is referred to
423
as 1− PV-M hereafter. In the second approach all individual tilted global solar
424
irradiance estimates are used simultaneously and the tilt to horizontal conver-
425
sion is solved by EM (see Eq. 28) using the Powell’s quadratically convergent
426
method ([33]) and the SKA transposition model (see Appendices B.2). Indeed
427
the minimization carried out by using the Powell’s method has been found to
428
systematically outperform the LS solution ([29]). It is a generic minimization
429
method that allows to minimize a quadratic function of several variables with-
430
out calculating derivatives. The key advantage of not requiring explicit solution
431
of derivatives is the very fast execution time of the Powell method. In order to
432
avoid the problem of linear dependence in the Powell’s algorithm, we adopted
433
the modified Powell’s method given in [34] and implemented in [35]. This second
AC C
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415
434
approach is hereafter denoted to as X− PV-EM.
435
436
Performance of the two approaches in the GHI estimation from PV systems
437
AC power output was evaluated against in-situ observations and furthermore
438
compared to the performance of GHI estimates retrieved from Meteosat Sec-
439
ond Generation (MSG, [36]) satellite images as implemented on an operational
440
basis at RMI. Description of the RMI’s MAGIC/Heliosat-2 algorithm used to 18
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retrieve the solar surface irradiance at the SEVIRI imager spatial sampling dis-
442
tance above Belgium (e.g. about 6 km in the north–south direction and 3.3 km
443
in the east–west direction) from MSG images is provided in Appendices C.
RI PT
441
444
While the MSG based retrieval method always provides GHI estimates dur-
446
ing day time, there are certain sun positions for which the PV systems power
447
output method fails to produce a valid estimation. Unsuccessful tilt to horizon-
448
tal conversions are systematically found at solar elevations lower or equal to 5o
449
for both the 1− PV-M and the X− PV-EM approaches irrespective of the number
450
of PV systems involved in the conversion process and their angular configura-
451
tions (i.e. tilt and azimuth angles). Failure rates reported for the 1− PV-M
452
and the X− PV-EM approaches at each validation sites are provided in Table 3
453
together with the total number of available hourly data points at each location
454
for the year 2014. Unsurprisingly the largest failure rates (up to nearly 40% in
455
the case of the Melle station -AWS 6434-) are found at validation sites where
456
only one PV installation is available. With more PV systems, the number of
457
unsuccessful conversions after sunrise and before sunset is decreased. Table 3
458
tends to indicate that 1− PV-M starts to produce valid results at lower solar ele-
459
vation conditions than X− PV-EM (i.e. an overall failure rate of about 12.4% is
460
reported for 1− PV-M and of 19.6% for X− PV-EM, respectively) but it is largely
461
relying on the angular configurations of the PV installations found within the
462
group of PV systems.
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463
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445
464
4.1. Hourly validation
465
Table 4 compares hourly GHI estimates derived from PV production data
466
with the 1− PV-M and X− PV-EM approaches as well as from MSG images with
467
the corresponding ground measurements. To ensure that the comparisons are
468
made between comparable data, special attention was given to the coherence of
469
the data, the precision of the time acquisition, and the synchronization of the
470
different data sets with the ground measurements. Because of inaccuracies in the 19
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orientations and/or inclinations of the PV installations provided by the PV sys-
472
tems installers or owners, GHI computation from the energy production of only
473
one installation can generate RMSE values as large as 189.34 W.m−2 or 57.8%
474
(i.e. at the Middelkerke validation site, AWS 6407). Increasing the number of
475
PV installations involved in the estimation process smoothes the GHI estima-
476
tion to some extent. This is particularly apparent for 1− PV-M which globally
477
presents lower RMSE values than found for X− PV-EM (i.e. an overall RMSE
478
value of 113.5 W.m−2 or 41.4% is reported for 1− PV-M and of 121.9 W.m−2 or
479
44.4% for X− PV-EM, respectively). However, sensitivity experiments in which
480
the number of PV installations involved in the GHI determination was varying
481
revealed a larger variability in the resulting GHI estimations for 1− PV-M than
482
found for X− PV-EM which produces a more stable solution.
M AN U
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471
483
[5] reported a somewhat similar mean RMSE error of about 40% for GHI es-
485
timates derived from 5 years (from 2010 through 2014) of five-minute resolution
486
records of specific power of 45 PV systems in the region of Freiburg, Germany.
487
In contrast, GHI retrieval from MSG images shows a better performance with
488
an overall RMSE of 55.8 W.m−2 or 20.3%. Moreover, while the satellite re-
489
trieval tends to slightly overestimate the GHI values (i.e. MBE values ranging
490
from 0.16 to 5.87%), there is no clear trend in the GHI computation from mea-
491
sured AC PV output power. Positive and negative biases are reported for both
492
1− PV-M and X− PV-EM approaches. Moreover it can appear that the sign of
493
the bias even differs from one approach to the other (e.g. a negative MBE value
494
of -9.08 W.m−2 or -3.37% is reported at the Humain validation site (AWS 6472)
AC C
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484
495
for 1− PV-M approach while an overestimation of 7.86 W.m−2 or 2.92% is found
496
for X− PV-EM. In general, the magnitude of the bias is lower with X− PV-EM
497
than with 1− PV-M (i.e. MBE values ranging from -5.6% to 5.5% and from
498
-9.9% to 7.8%, respectively).
499
Table 5 compares the performance of the 1− PV-M and X− PV-EM approaches together with the MSG-based retrieval method in the hourly GHI 20
ACCEPTED MANUSCRIPT
computation as a function of the sky conditions. Sky-type classification is made
Kt
Kt0 =
1.031 exp
500
where Kt =
Gh E
−1.4 0.9+9.4/M
+ 0.1
RI PT
upon the modified clearness index proposed by [37] and defined as
is the usual clearness index (i.e. the horizontal surface so-
503
air mass and γ is the solar elevation angle in degrees (i.e. γ = 90 − θz ). This
504
zenith angle-independent expression of the clearness index, based on Kasten’s
505
([38]) pyrheliometric formula, ensures that a given Kt0 , unlike the classic in-
506
dex Kt , will represent meteorologicaly similar conditions regardless of the sun’s
507
position.. Note that error statistics reported in Table 5 were calculated from
508
validation sites accounting for at least three residential PV installations (i.e.
509
the Middelkerke/AWS 6407, Melle/AWS 6434 and Stabroek/AWS 6438 mea-
510
surement stations were excluded). Clearly, the relative accuracy of the GHI
511
estimates varies noticeably as the sky conditions moves from overcast to clear
512
sky situations irrespective of the calculation method. With a reported RMSE
513
value of roughly 116%, the 1− PV-M and X− PV-EM approaches fail to pro-
514
duce reliable estimations in overcast conditions (i.e. 0.0 ≤ Kt0 < 0.2) where
515
the global radiation is mainly composed of diffuse radiation. With a reported
516
RMSE in the order of 70% the satellite-based retrieval method also exhibits
517
a poor performance in overcast conditions but shows a rapid performance im-
518
provement as the sky becomes clearer and presents a minimum RMSE value of
AC C
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M AN U
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502
lar irradiance, Gh , normalized by the corresponding extra-atmospheric irradi −1 −1.253 ance, E = Io cos θz ). M = sin γ + 0.15(γ + 3.885) is the optical
501
519
11.3% in partly clear conditions (i.e. 0.6 ≤ Kt0 < 0.8). Similarly, the accuracy
520
of GHI estimations from measured AC PV output power increases as the sky
521
conditions becomes clear but the magnitude of the errors is still at least twice
522
the one found for the satellite retrieval method irrespective of the computation
523
approaches. As an example, RMSE values of roughly 30% are reported for the
524
1− PV-M and X− PV-EM approaches and of about 17% for the satellite-based
525
method in the clear sky bin (i.e. 0.8 ≤ Kt0 ≤ 1.0) where the direct component 21
ACCEPTED MANUSCRIPT
largely domines. The poor performance of the PV systems power output method
527
in overcast and cloudy conditions (i.e. 0.0 ≤ Kt0 < 0.4) is mainly due to the
528
reduced accuracy in the derivation of the in-plane hourly global solar irradiance
529
from the hourly PV system energy production as computed from Eq. 17 when
530
the global radiation is dominated by diffuse radiation (i.e. at low PV module’s
531
yield). This is supported by the recent evaluation of the tilt to horizontal global
532
solar irradiance conversion by [29] indicating that the relative accuracy of the
533
conversion does not vary noticeably as the sky condition moved from overcast
534
to clear sky situations irrespective of the considered transposition model (e.g. a
535
RMSE variation of about 3.5% was reported for the SKA transposition model
536
we use in the current study).
537
M AN U
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RI PT
526
Finally, both the PV systems power output method and the MSG based
539
retrieval method present a positive bias when the global radiation is dominated
540
by diffuse radiation (with MBE values of e.g. 43.1%, 37.3% and 45.4% reported
541
in the overcast bin for the 1− PV-M approach, the X− PV-EM approach and the
542
MSG based method, respectively) and a positive bias under clear-sky situation
543
(with e.g. MBE values of respectively -18.6%, -13.% and -9.7% reported in the
544
clear-sky bin). In overall the MSG based retrieval method present a positive
545
bias in the order of 3.5% while the PV systems power output method shows
546
a negative bias for both the 1− PV-M and X− PV-EM approaches (i.e. overall
547
MBE of -3.4% and -1.%, respectively).
548
4.2. Daily validation
AC C
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538
549
Computation of the statistical errors indexes on a daily basis is not as
550
straightforward as for an hourly basis because as already mentioned both the
551
1− PV-M and X− PV-EM approaches fail to produce valid GHI estimates at low
552
solar elevation conditions. In Table 6 RMSE and MBE indexes have been com-
553
puted by assuming no incoming global horizontal solar irradiance in the com-
554
putation of the daily global horizontal solar irradiation for data points where
555
no valid hourly GHI estimates were obtained. Because unsuccessful GHI esti22
ACCEPTED MANUSCRIPT
mations from AC power output can be as large as 39.7% when only one PV
557
installation is considered (see Table 3) the daily performance of the PV method
558
can be very limited in some places in comparison to the satellite method. As
559
an example, the RMSE of 1321.2 W.h.m−2 or 42.9% and the MBE of -984.8
560
W.h.m−2 or -31.9% reported at the Middelkerke validation site (AWS 6407) in
561
Table 6 for the PV system method reduce to a RMSE of 296.4 W.h.m−2 or 9.6%
562
and a MBE of 43 W.h.m−2 or 1.4% for the MSG-based retrieval method at this
563
validation site.
SC
RI PT
556
564
Globally Table 6 indicates that the daily computation exhibits a better per-
566
formance than hourly estimation irrespectively of the considered retrieval meth-
567
ods. An overall RMSE of 11% and a slight positive bias is reported for the satel-
568
lite based method. 1− PV-M and X− PV-EM behave quite similarly in terms of
569
RMSE (i.e. overall RMSE of 12%). Clearly the RMSE magnitude difference
570
between the MSG-based and the PV systems power output methods is drasti-
571
cally reduced when considering daily global solar irradiation quantities rather
572
than hourly GHI values. However the RMSE spatial variation (i.e. from one
573
validation site to another) is larger in the PV systems based method and, while
574
a systematic positive bias is reported for the satellite retrieval method, the sign
575
of the bias can vary from one validation site to another in the PV systems based
576
method and even between the 1− PV-M and X− PV-EM approaches on a given
577
site.
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578
M AN U
565
579
4.3. Spatial validation
580
Finally, to assess the spatial distribution of the solar surface irradiation
581
computed from hourly PV systems power outputs, the 1470 residential PV in-
582
stallations considered in our study (see Figure 1) were spatially aggregated into
583
150 clusters (see black dots on panel C in Figure 3 for the clusters spatial dis-
584
tribution) using the k-means algorithm ([39]). K-means clustering partitions
585
a dataset into a small number of clusters by minimizing the distance between 23
ACCEPTED MANUSCRIPT
each data point and the center of the cluster it belongs to. A minimum of four
587
PV installations by clusters was imposed except for two of them located in the
588
vicinity of the Belgian coast because of the very low density of PV installations
589
found in this area.
RI PT
586
590
Figure 3 presents an example of daily solar surface irradiation over the Bel-
592
gian territory as computed from the interpolation of ground measurements us-
593
ing the ordinary kriging (OK) method (e.g. [40]), the MSG satellite derived
594
estimation and the PV systems method using X− PV-EM. Clearly, due to the
595
sparsity of the ground stations networks, interpolating ground data generates
596
only a coarse distribution of the solar surface irradiation: large-scale variations
597
of the solar irradiation (such as the south–east to north–west positive gradi-
598
ent) are identified but local fluctuations remain unseen (Figure 3, panel a).
599
Satellite-derived estimates, on the other hand, provide a global coverage and
600
are therefore able to account for clouds induced small-scale variability in sur-
601
face solar radiation (Figure 3, panel b). Regarding the PV systems method, the
602
daily solar irradiation estimated at the PV clusters level were then interpolated
603
by OK method to cover the entire Belgian territory (Figure 3, panel c). As we
604
see, the south–east to north–west positive gradient is well apparent as well as
605
some of the regional specificities. For instance, the Gaume region (area in the
606
south-east of Belgium) located on the south side of the Ardenne (hilly mass) and
607
that enjoys longer sunshine time appears clearly on the mapping. In general,
608
the PV systems method provides small-scale patterns partly supported by the
609
MSG derived mapping. Some others appear as the signature of an erroneous
AC C
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591
610
estimation at the cluster level.
611
612
5. Conclusions and perspective
613
The accuracy of solar irradiation data derived from the energy production of
614
PV systems depends on a number of factors including the efficiency of the PV
24
ACCEPTED MANUSCRIPT
system, the weather conditions, the density of PV systems that can be used for
616
the tilt to horizontal conversion, other data sources that can be accessed to com-
617
plement the PV data. In particular, because the solar irradiation data obtained
618
by reverse engineering of the PV energy output data degrade as the informa-
619
tion about the orientation and tilt angles of the PV generator becomes more
620
inaccurate, reliable angular characterization of the PV generator is of prime
621
importance. Unfortunately, it was found that the provided angles can typically
622
bear inaccuracies up to 5-10o . To overcome such a limitation, the development
623
of a procedure able to assess the true azimuth and tilt angle of a PV genera-
624
tor from the sole knowledge of its hourly energy output data would be largely
625
beneficial for the method. Towards this objective, it is worth mentioning that
626
while the identification of a PV system’s location and orientation from perfor-
627
mance data has received limited attention in the past, [41] have introduced a
628
method for automatic detection of PV system configuration. And even more
629
recently, [42] have proposed a method to estimate the location and orientation
630
of distributed photovoltaic systems from their generation output data.
SC
M AN U
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631
RI PT
615
Another limitation of the method is that there are certain sun positions for
633
which the method fails to produce a valid estimation. As an example, unsuc-
634
cessful tilt to horizontal conversions systematically occurs at low solar elevation
635
(i.e. γ ≤ 5o ) irrespective of the number of PV systems involved in the conversion
636
process. Increasing the number of PV installations involved in the computation
637
process allows reducing the conversion failure rate and the smoothing the es-
638
timation to some extent. As an example, validation results computed on an
AC C
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639
hourly basis provide a mean RMSE value of about 40% when considering a
640
group of neighboring PV installations in the estimation process while values
641
as large as 60% are reported when using a single installation. By comparison,
642
satellite-based global horizontal irradiance estimation exhibits a better perfor-
643
mance with an associated overall RMSE of about 20%. By contrast the overall
644
performance of both methods does not differ significantly on a daily basis. How-
645
ever, spatially the distribution of the solar surface irradiation computed from 25
ACCEPTED MANUSCRIPT
PV systems outputs presents small-scale pattern artifacts signature of erroneous
647
estimations.
RI PT
646
648
Beside a more accurate characterization of the orientation and tilt angles
650
of the PV generator, the conversion of PV system energy production to tilted
651
global solar irradiance could certainly be improved by taking into account the
652
wind influence on the operating temperature of the solar cell as an example or by
653
performing clear-sky radiative transfer computations with a more sophisticated
654
model, etc. But because of the nature of the uncertainties that we have faced
655
during our study, it could also be valuable to investigate on how recent data min-
656
ing techniques (i.e. the extraction of hidden predictive information from large
657
databases [43]) can be incorporated in the transformation of electrical variables
658
into environmental variable such as solar irradiation. To this respect it is worth
659
pointing out that artificial neural networks and machine learning techniques
660
have already revealed to be powerful in the forecasting of solar irradiation data
661
(e.g. [44], [45], [46], [47] and [48]).
662
Acknowledgments
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663
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649
This study was supported by the Belgian Science Policy Office (BELSPO) through the Belgian Research Action through Interdisciplinary Networks (BRAIN-
665
be) pioneer research project BR/314/PI/SPIDER Solar Irradiation from the
666
energy production of residential PV systems .
EP
664
A. Decomposition models
668
A.1. ERB model (Erbs et al., 1982):
AC C 667
669
[22] developed a correlation between the hourly clearness index, Kt , and the
670
corresponding diffuse fraction, Kd based on 5 stations data. In each station,
671
hourly values of direct and global irradiances on a horizontal surface were regis-
672
tered. Diffuse irradiance was obtained as the difference of these quantities. The
26
ACCEPTED MANUSCRIPT
proposed correlation combines a linear regression for 0 < Kt ≤ 0.22, a fourth
674
degree polynom for 0.22 < Kt ≤ 0.8 and a constant value for Kt > 0.8
RI PT
673
1 − 0.09 Kt Kd = 0.9511 − 0.1604 Kt + 4.388 Kt2 − 16.638 Kt3 + 12.336 Kt4 0.165
Kt ≤ 0.22
0.22 < Kt ≤ 0.8 Kt > 0.8
675
A.2. OLS model (Skartveit and Olseth, 1987)
SC
(29)
Based on 15 years (i.e. 1965-1979) of hourly records of global and diffuse
677
horizontal irradiances with mean solar elevation larger than 10o performed in
678
Bergen (Norway: 60.4o N, 5.3o E) [49] proposed an analytical model expressing
679
the hourly diffuse fraction of global irradiance in terms of hourly solar elevation
680
and clearness index. In this model, the direct normal irradiance, Bn , is derived
681
from the global horizontal irradiance, Gh , and the solar elevation angle, γ, using
682
the following equation:
M AN U
676
Gh (1 − Ψ) sin γ
(30)
TE D
Bn = 683
where Ψ is a function of the clearness index, Kt . The model was validated with
684
data collected in 12 stations worldwide. The function Ψ reads as:
685
EP
1 for Kt < c1 h i Ψ = 1 − (1 − d1 ) d2 c1/2 + (1 − d2 ) c23 for c1 ≤ Kt ≤ 1.09c2 3 1 − 1.09c 1−Υ for Kt > 1.09c2 2 Kt where:
687
c1 = 0.2
AC C 686
688
689
c2 = 0.87 − 0.56 −0.06 γ c3 = 0.5 1 + sin π( dc43 − 0.5)
690
c4 = Kt − c1
691
d1 = 0.15 + 0.43 e−0.06 γ
692
d2 = 0.27
27
(31)
ACCEPTED MANUSCRIPT
694
695
d3 = c2 − c1 1/2 Υ = 1 − (1 − d1 ) d2 cc3 + (1 − d2 ) cc23 4 cc3 = 0.5 1 + sin π( cc d3 − 0.5)
696
cc4 = 1.09 c2 − c1
697
B. Transposition models
RI PT
693
Each model develops the diffuse transposition factor (i.e., the ratio of diffuse
699
radiation on a tilted surface to that of a horizontal), Rd , according to specific
700
assumptions.
701
B.1. HAY model (Hay, 1979):
M AN U
SC
698
702
In the HAY model ([23]), diffuse radiation from the sky is composed of an
703
isotropic component and a circumsolar one. Horizon brightening is not taken
704
into account. An anisotropy index, FHay , is used to quantify a portion of the
705
diffuse radiation treated as circumsolar with the remaining portion of diffuse
706
radiation assumed to be isotropic, i.e.,
TE D
RdHAY = FHAY rb + (1 − FHAY )
1 + cos β 2
(32)
where FHAY = Bh /(Io cos θz ) is the Hay’s sky-clarity factor and rb = cos θi / cos θz
708
the beam radiation conversion factor. θz is the solar zenith angle, θi is the in-
709
cidence angle of the beam radiation on the tilted surface, Bh is the direct hori-
710
zontal solar irradiance and Io is the extraterrestrial normal incident irradiance.
711
B.2. SKA model (Skartveit and Olseth, 1986):
EP
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Solar radiation measurements indicate that a significant part of sky diffuse
713
radiation under overcast sky conditions comes from the sky region around the
714
zenith. This effect vanishes when cloud cover disappears. [50] modified the HAY
715
model (Eq. 32) in order to account for this effect,
AC C
712
RdSKA = FHAY rb + Z cos β + (1 − FHAY − Z)
1 + cos β 2
(33)
716
where Z = max(0, 0.3 − 2FHAY ) is the Skartveit-Olseth’s correction factor. If
717
FHAY ≥ 0.15, then Z = 0 and the model reduces to the HAY model. 28
ACCEPTED MANUSCRIPT
718
C. Description of the RMIs MAGIC/Heliosat-2 algorithm Information on GHI over Belgium is retrieved from MSG data by an adapta-
720
tion of the well-known Heliosat-2 method ([51]) initially developed for Meteosat
721
First generation satellites. The principle of the method is that a difference
722
in global radiation perceived by the sensor aboard a satellite is only due to a
723
change in the apparent albedo, which is itself due to an increase of the radiation
724
emitted by the atmosphere towards the sensor (i.e. [52], [53]). A key parameter
725
is the cloud index (also denoted as effective cloud albedo), n, determined by the
726
magnitude of change between what is observed by the sensor and what should
727
be observed under a very clear sky. To evaluate the all-sky GHI, a clear-sky
728
model is coupled with the retrieved cloud index which acts as a proxy for cloud
729
transmittance. Inputs to the Heliosat-2 method are not the visible satellite im-
730
ages in digital counts as in the original version of the method ([52]) but images
731
of radiances/reflectances:
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ρt (i, j) − ρtcs (i, j) ρtmax (i, j) − ρtcs (i, j)
(34)
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nt (i, j) =
where nt (i, j) is the cloud index at time t for the satellite image pixel (i, j);
733
ρt (i, j) is the reflectance or apparent albedo observed by the sensor at time t;
734
ρtmax (i, j) is the apparent albedo of the brightest cloud at time t; ρtcs (i, j) is the
735
apparent ground albedo under clear-sky condition at time t.
736
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The MAGIC/Heliosat-2 method implemented at RMI ([54]) is applied to
738
the visible narrow-bands of the Spinning Enhanced Visible and Infrared Imager (SEVIRI) on board of the MSG platform. ρtcs (i, j) is derived from the fifth
740
percentile of the ρt (i, j) distribution related to the last 60 days ([55]) while
741
ρtmax (i, j) is estimated from theoretical radiative transfer model calculation (see
742
[54]). GHI estimates are computed for each pixel and MSG time slot by the
743
combination of the satellite cloud index, n, and the GHI in clear sky condition
744
calculated by the Mesoscale Atmospheric Global Irradiance Code (MAGIC)
745
clear-sky model ([56]). Daily global solar radiations are computed by trapezoidal
AC C 739
29
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integration over the diurnal cycle of the retrieved GHI t (i, j). The retrieval
747
process runs over a spatial domain ranging from 48.0o N to 54.0o N and from
748
2.0o E to 7.5o E within the MSG field–of–view. In this domain, the SEVIRI
749
spatial sampling distance degrades to about 6 km in the north-south direction
750
and 3.3 km in the east-west direction.
751
References
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913 914 915
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Location of the selected 1470 residential PV systems within the Belgian territory. Red dots indicate the location of the RMI’s ground radiometric stations considered in this study . . . . . . . Definition of angles used as coordinates for an element of sky radiation to an inclined plane of tilt β . . . . . . . . . . . . . . . Comparison between the daily spatial distribution of surface solar global irradiation (in W.h.m−2 ) over Belgium as computed (a) by the interpolating ground measurements, (b) by the MSG satellite retrieval method and, (c) by the PV systems power output method. Illustrations are for the 20 June, 2014. Black dots in panel (a) indicate the location of the RMI’s in-situ measurements sites. Black dots in panel (c) indicate the location of the 150 clusters of PV systems . . . . . . . . . . . . . . . . . . . . . .
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2˚30'
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Figure 1: Location of the selected 1470 residential PV systems within the Belgian territory. Red dots indicate the location of the RMI’s ground radiometric stations considered in this study
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(a) AWS 20/06/2014 W.h.m−2
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Figure 3: Comparison between the daily spatial distribution of surface solar global irradiation (in W.h.m−2 ) over Belgium as computed (a) by the interpolating ground measurements, (b) by the MSG satellite retrieval method and, (c) by the PV systems power output method. Illustrations are for the 20 June, 2014. Black dots in panel (a) indicate the location of the RMI’s in-situ measurements sites. Black dots in panel (c) indicate the location of the 150
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Table 1: Distribution of the number of PV systems as a function of the orientation and tilt angle. <–East -80 -70
0 4 4 13 67 4 0 0 0 0
0 0 2 4 8 2 0 0 0 0
0 0 1 14 21 2 0 0 0 0
-60
-50
-40
-30
0 0 2 4 13 2 0 0 0 0
0 0 0 0 0 0 0 0 0 0
1 6 19 50 188 12 0 0 0 0
0 0 10 24 38 3 0 0 0 0
Deviation from South (o ) -20 -10 0 10 20 0 2 12 24 36 6 0 0 0 0
0 2 10 18 30 4 0 0 0 0
3 7 20 71 223 16 0 0 0 0
0 0 8 9 16 2 0 0 0 0
0 2 5 21 32 3 1 0 0 0
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0 10 20 30 40 50 60 70 80 90
-90
41
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40
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0 0 9 14 23 1 0 0 0 0
0 0 0 0 0 0 0 0 0 0
0 2 18 47 147 17 0 0 0 0
0 0 2 7 24 5 0 0 0 0
0 0 4 6 12 6 0 0 0 0
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Table 2: Location of the ground stations involved in the RMI solar radiation monitoring network in which the global horizontal radiation is recorded. Lat. (o N) 51.198 50.905 50.976 51.326 51.076 50.798 50.096 50.583 51.222 50.194 50.040 50.916 49.621 50.512
Lon. (o E) 2.869 3.123 3.825 4.365 4.526 4.359 4.596 4.691 5.028 5.257 5.405 5.451 5.589 6.075
Alt. (m) 3.0 25.0 15.0 5.0 10.0 101.0 233.0 157.0 21.0 296.0 557.0 39.0 324.0 673.0
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Station Name MIDDELKERKE BEITEM MELLE STABROEK SINT-KATELIJNE-WAVER UCCLE DOURBES ERNAGE RETIE HUMAIN SAINT-HUBERT DIEPENBEEK BUZENOL MONT RIGI
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Station Code 6407 6414 6434 6438 6439 6447 6455 6459 6464 6472 6476 6477 6484 6494
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Hourly values 4184 4529 4477 4666 / 4698 4346 4573 / 4583 4469 / /
0 12? 4? 37? 0 5 3? 10 0
PV Method 1− PV-M X− PV-EM 36.74% / 12.89% 17.40% 39.74% / 22.29% / / / 16.69% 18.09% 13.71% 15.55% 13.21% 21.21% / / 17.72% 23.04% 14.03% 22.04% / / / /
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Table 3: Unsuccessful conversion (in %) reported for the PV systems 1− PV-M and X− PV-EM approaches, respectively. Also provided is the total number of hourly data points available at each validation sites and the number of PV installations found in the vicinity of the measurement stations. ? indicates the PV installations located within a radius of 10 km surrounding the validation site.
43
6407 6414 6434 6438 6447 6455 6459 6472 6477
AWS code
5 3?
1 5 1 1? 12? 4? 37?
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0.54 8.68 11.61 13.86 7.67 15.63 1.01 11.26 13.32
MBE (0.16%) (3.11%) (3.88%) (5.01%) (2.84%) (5.87%) (0.36%) (4.18%) (4.80%)
Table 4: Comparison between global horizontal solar irradiance produced by the PV systems power output method for both the 1− PV-M and X− PV-EM approaches and retrieved from the MSG satellite images with the corresponding ground measurements. The RMSE and MBE error statistics (in W.m−2 and %) are calculated on a hourly basis over the full year 2014. ? indicates the PV installations located within a radius of 10 km surrounding the validation site.
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MSG RMSE (21.22%) (20.28%) (20.93%) (22.69%) (19.64%) (22.37%) (20.14%) (19.66%) (19.84%)
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69.55 56.68 62.58 62.80 53.13 59.52 57.00 52.95 55.05
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X− PV-EM approach RMSE MBE / / / / 113.81 (40.73%) -9.00 (-3.22%) / / / / / / / / 107.76 (39.83%) -9.03 (-3.34%) 120.87 (45.42%) 14.63 (5.50%) 129.64 (45.81%) -15.84 (-5.60%) 129.87 (48.22%) 7.86 (2.92%) 129.15 (46.55%) -3.56 (-1.28%)
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PV system 1− PV-M approach RMSE MBE 189.34 (57.76%) -53.30 (-16.26%) 116.83 (41.81%) -24.06 (-8.61%) 116.94 (39.11%) -10.48 (-3.50%) 128.05 (46.26%) -32.51 (-11.75%) 106.14 (39.23%) 1.85 (0.68%) 114.88 (43.17%) 20.86 (7.84%) 112.23 (39.66%) -28.03 (-9.90%) 120.55 (44.76%) -9.08 (-3.37%) 110.13 (39.70%) -17.95 (-6.47%)
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73.83 106.96 117.59 133.60 128.89
(117.00%) (64.79%) (38.78%) (28.56%) (30.09%)
Method X− PV-EM 72.70 (115.21%) 112.55 (68.17%) 133.27 (43.95%) 142.86 (30.54%) 134.70 (31.45%)
113.49
(41.37%)
121.87
1− PV-M
(44.43%)
MSG
Data Number
46.26 54.82 63.48 53.04 72.45
(73.31%) (33.20%) (20.94%) (11.34%) (16.91%)
4164 5494 4981 6214 863
(19.18%) (25.30%) (22.94%) (28.61%) (3.97%)
55.75
(20.32%)
21716
(100.0%)
AC C
EP
TE D
M AN U
SC
Sky Condition 0.0 ≤ Kt0 < 0.2 0.2 ≤ Kt0 < 0.4 0.4 ≤ Kt0 < 0.6 0.6 ≤ Kt0 < 0.8 0.8 ≤ Kt0 ≤ 1.0 All Sky
RI PT
Table 5: Performance in term of RMSE of the PV systems power output method for both the 1− PV-M and X− PV-EM approaches and the MSG retrieval method in the global horizontal solar irradiance estimation as a function of the sky condition. Absolute (in W.m−2 ) and relative (in %) RMSE are computed from 21716 hourly 2014 data points. Validation sites accounting for less than 3 residential PV installations were discarded for the errors indices computation (i.e. AWS 6407, AWS 6434 and AWS 6438).
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6407 6414 6434 6438 6447 6455 6459 6472 6477
AWS code
5 3?
EP
approach MBE / / -106.57 (-4.92%) / / / / -115.75 (-3.92%) 116.07 (6.56%) -64.94 (-3.02%) 43.76 (2.74%) 100.60 (3.98%)
MSG MBE (1.40%) (5.37%) (4.60%) (5.31%) (3.19%) (8.12%) (1.90%) (7.04%) (6.37%)
Table 6: Comparison between daily cumulated surface solar irradiation produced by the PV systems power output method (for both the 1− PV-M and X− PV-EM approaches) and retrieved from the MSG satellite images with the corresponding daily ground measurements. The RMSE and MBE error statistics (in W.h.m−2 and %) are calculated on a daily basis over the full year 2014.? indicates the PV installations located within a radius of 10 km surrounding the validation site.
RI PT
43.03 116.29 150.23 154.50 94.28 143.62 40.94 112.68 161.13
SC
RMSE 296.38 (9.61%) 268.53 (12.41%) 337.75 (10.35%) 322.61 (11.09%) 232.35 (7.87%) 260.73 (14.74%) 231.97 (10.79%) 185.28 (11.58%) 271.98 (10.76%)
M AN U
X− PV-EM RMSE / / 304.64 (14.08%) / / / / 242.89 (8.23%) 306.30 (17.32%) 180.90 (8.42%) 226.74 (14.18%) 259.35 (10.26%)
TE D
PV systems 1− PV-M approach RMSE MBE 1321.23 (42.85%) -984.80 (-31.94%) 308.40 (14.25%) -175.35 (-8.10%) 534.81 (16.39%) -257.06 (-7.88%) 640.95 (22.04%) -434.83 (-14.95%) 250.26 (8.48%) 5.98 (0.20%) 348.20 (19.69%) 168.84 (9.55%) 225.21 (10.48%) -137.49 (-6.40%) 151.70 (9.48%) -13.18 (-0.82%) 266.96 (10.56%) -29.97 (-1.19%)
AC C
1 5 1 1? 12? 4? 37?
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