A revisit to decadal change of aerosol optical depth and its impact on global radiation over China

A revisit to decadal change of aerosol optical depth and its impact on global radiation over China

Accepted Manuscript A revisit to decadal change of aerosol optical depth and its impact on global radiation over China Wenjun Tang, Kun Yang, Jun Qin,...

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Accepted Manuscript A revisit to decadal change of aerosol optical depth and its impact on global radiation over China Wenjun Tang, Kun Yang, Jun Qin, Xiaolei Niu, Changgui Lin, Xianwen Jing PII:

S1352-2310(16)30927-X

DOI:

10.1016/j.atmosenv.2016.11.043

Reference:

AEA 15036

To appear in:

Atmospheric Environment

Received Date: 18 September 2016 Revised Date:

14 November 2016

Accepted Date: 16 November 2016

Please cite this article as: Tang, W., Yang, K., Qin, J., Niu, X., Lin, C., Jing, X., A revisit to decadal change of aerosol optical depth and its impact on global radiation over China, Atmospheric Environment (2016), doi: 10.1016/j.atmosenv.2016.11.043. 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.

ACCEPTED MANUSCRIPT A revisit on decadal change of aerosol optical depth and its impact on global radiation over China Wenjun Tang1,2, Kun Yang1,2, Jun Qin1,Xiaolei Niu1, Changgui Lin3, Xianwen Jing4

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1. Key Laboratory of Tibetan Environment Changes and Land Surface Processes, Institute of Tibetan Plateau Research, Chinese Academy of Sciences, Beijing 100101, China.

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2. CAS Center for Excellence in Tibetan Plateau Earth Sciences, Chinese Academy

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of Sciences, Beijing 100101, China.

3. Regional Climate Group, Department of Earth Sciences, University of Gothenburg, Gothenburg, Sweden.

4. Laboratory for Climate Studies, National Climate Center, China Meteorological

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Administration, Beijing 100081, China. Corresponding author and address: Wenjun Tang, Dr.

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Institute of Tibetan Plateau Research, Chinese Academy of Sciences

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Building 3, Courtyard 16, Lin Cui Road, Chaoyang District, Beijing 100101, China Email: [email protected] Tel: +86-10-84097046 Fax: +86-10-8409707

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ACCEPTED MANUSCRIPT Abstract

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Global radiation over China decreased between the 1960s and 1990, since when it has

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remained stable. As the total cloud cover has continued to decrease since the 1960s,

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variations in aerosols were suggested in previous studies to be the primary cause for

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variations in global radiation over China. However, the effect of aerosols on global

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radiation on a decadal scale has not been physically quantified over China. In this

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study, aerosol optical depth (AOD) data since 1980 are estimated by combining

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horizontal visibility data at stations in China and AOD observed by the moderate

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resolution imaging spectroradiometer (MODIS). It is found that the AOD exhibits

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decadal changes, with two decreasing periods (before the end of 1980s and after 2006)

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and one increasing period (from 1990 to 2006). With the derived AOD, a clear-sky

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model is then applied to quantify the role of aerosols in the variations in global

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radiation over China. The results show that aerosol direct effect cannot fully explain

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the decadal variations in the global radiation over China between 1980 and 2010,

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though it has a considerable effect on global radiation climatology. There are

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significant differences between the trends of clear-sky global radiation impacted by

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aerosols and those of all-sky global radiation impacted by aerosols and clouds, and the

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correlation coefficient for the comparison is very low. Therefore, the variations in

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all-sky global radiation over China are likely to be due to changes in cloud properties

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and to interactions between clouds and aerosols.

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Keywords: Global radiation; aerosol optical depth; clear-sky; visibility

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1. Introduction Global radiation E g ↓ over most regions of the Earth experienced a transition

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from dimming to brightening around the late 1980s or early 1990s, based on ground

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observations and satellite retrievals [Stanhill and Moreshet, 1994; Stanhill and Cohen,

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1997; Stanhill and Cohen, 2001; Liepert, 2002; wild et al. 2005; Che et al., 2005;

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Pinker et al., 2005; Shi et al., 2008; Gilgen et al., 2009; Stanhill and Cohen, 2009;

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Wild et al., 2009; Wild, 2012a]. Variations in global radiation E g ↓ have profound

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influences on the environmental, societal, and economic aspects of our habitats.

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Decadal variations in global radiation E g ↓ originate from changes in the

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transparency of the atmosphere, which are mainly attributable to changes in clouds,

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aerosols and water vapor [Wild, 2012a]. For example, a change in aerosol loading has

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been suggested as the dominant factor for long-term variations in global radiation

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over Europe [Norris and Wild, 2007; Ohmura, 2009; Folini and Wild, 2011], while

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changes in cloud cover are the determining factor for long-term variations in global

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radiation over the United States [Liepert, 2002; Long et al., 2009; Augustine and

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Dutton, 2013].

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In China, several studies [e.g., Zhang et al., 2004; Che et al. 2005; Liang and Xia,

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2005; Xia et al., 2006a; Streets et al., 2006; Wang et al., 2012; Wang and Yang, 2014]

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speculated that changes in atmospheric aerosols are the dominant cause for global

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radiation variations over China, given that the total cloud cover (TCC) measured at

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China Meteorological Administration (CMA) stations has decreased since 1954

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[Kaiser, 1998; Kaiser, 2000; Qian et al., 2006; Xia, 2010]. However, aerosol 3

ACCEPTED MANUSCRIPT emissions over China continued increasing around 1990 [Wang et al., 2009] and so its

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variation does not explain the change in the radiation transition from dimming to

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slightly brightening around 1990. Indeed, Lin et al. [2015] established a statistical

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wind speed –global radiation relationship and with which derived that aerosol direct

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effect can only explain 20% of the decadal change in global radiation over China.

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Furthermore, it should be noted that a decrease in TCC does not necessarily

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correspond to a decrease in cloud optical thickness because of the diversity of possible

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cloud shapes and types. For example, Yang et al. [2012] found that the TCC over the

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Tibetan Plateau has decreased since 1984, while deep cloud cover has increased.

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Aerosols over China have drawn much attention over the past decade, due to

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their potential effects on climate and the environment [Ramanathan et al. 2001; Wu et

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al., 2013; Rosenfeld et al. 2014]. The annual mean aerosol optical depth (AOD)

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averaged over China is about three times that averaged over all the Aerosol Robotic

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Network (AERONET) sites [Li et al., 2011]. The aerosol radiative effect over China

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can even reach to several tens of W m−2 on global radiation climatology [Li et al.,

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2011], but physically-based quantitative evaluation of aerosol effects on long-term

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variations in global radiation over China is challenging for the following reasons.

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First, a long-term observational dataset of aerosols over China is not available.

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However, visibility is a parameter that is routinely measured at weather stations. This

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parameter is often used to estimate near surface AOD [Vautard et al., 2009; Wang et

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al., 2009; Wang et al., 2012]. Some radiation transfer software packages, such as

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MODerate resolution atmospheric TRANsmission (MODTRAN) and Second 4

ACCEPTED MANUSCRIPT Simulation of a Satellite Signal in the Solar Spectrum (6S) [Berk et al., 1998;

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Vermote et al., 1997] also use visibility to characterize near surface AOD information.

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Second, it is difficult to distinguish the effects of clouds, aerosols, water vapor

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and their interactions on long-term changes in global radiation [Wild et al., 2012b].

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An analysis of long-term clear-sky global radiation may provide information that is

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useful for the evaluation of the effects of aerosols on variations in global radiation.

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Alternatively, using clear-sky radiation model with reliable source of aerosols can

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quantitatively evaluate the contribution of aerosols to long-term changes in clear-sky

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global radiation.

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In this study, we first use the observed visibility data to characterize long-term

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variations in near surface AOD over China. We then use the MODIS monthly mean

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AOD to correct the visibility-based AOD before application. Although the

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visibility-based AOD may have great uncertainty, the long-term variation in the

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visibility-based AOD is relatively reliable [Wang et al., 2009]. With the derived AOD

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data, we try to quantify the effect of aerosols on changes of clear-sky global radiation

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so as to evaluate the role of aerosols in global radiation variation over China. This

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may help us to further evaluate the causes of the variations in global radiation over

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China.

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2. Data

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Three types of data are used in this study. The first is the CMA routine weather

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data recorded at 519 stations where the data contain records for at least 20 days per 5

ACCEPTED MANUSCRIPT month from 1980 to 2010. The CMA observation data comprise air temperature,

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relative humidity, surface pressure, sunshine duration, TCC, low cloud cover (LCC),

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and visibility. These data are used to estimate clear-sky and all-sky global radiation

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with Yang’s hybrid model [Yang et al., 2006]. Visual observations of cloud covers

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(includes TCC and LCC) and visibility are taken by trained observer following the

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World Meteorological Organizations (WMO) standards every six hours (0:00, 6:00,

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12:00, and 18:00 GMT) at each station. Daily mean values of these CMA data are

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used except visibility, for which the 6:00 GMT (14:00 Beijing Standard Time) values

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is used. The geographical distribution of the 519 stations is shown in Figure 1. The

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second is the MODIS Level-3 monthly-mean AOD data (Aqua) from 2002 to 2010,

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which is used to correct the visibility-based AOD. The half-year climatology of

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MODIS AOD is also presented in Figure 1. To investigate the decadal change of

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aerosols and its effect on long-term variations in global radiation at a regional scale,

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we divide mainland China into three sub-regions (see Figure 1), following Lin et al.

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[2015], who defined the sub-regions according to the distribution of MODIS

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multi-year mean AOD. The region of central-eastern China (CE) exhibits the highest

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AOD values, and moderately lower AOD values are found in the region of southern

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China (SC). The other regions (OT), including northeastern China, northwestern

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China and the Tibetan Plateau have the lowest AOD among the three sub-regions. The

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third is the quality-controlled all-sky global radiation dataset ( E qc ↓ , available at

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http://dam.itpcas.ac.cn), which is developed with two datasets by Tang et al. [2013].

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One is estimated with routine meteorological variables by Yang’s hybrid model at 716

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ACCEPTED MANUSCRIPT individual CMA stations, and the other is estimated with the Artificial Neural

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Network (ANN) based model at 96 individual CMA radiation stations. The former is

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dynamically corrected by the latter at a monthly scale because the accuracy of the

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latter is generally higher than the former. The quality-controlled all-sky global

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radiation dataset ( Eqc ↓ ) was validated over China by Tang et al. [2013], and the

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relative mean bias error (MBE) and root mean square error (RMSE) to the

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measurements are about 0.8% and 12.7%, respectively. Tang et al. [2011] selected ten

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CMA radiation stations with continuous and quality-consistent measurements to

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validate the long-term variations in the all-sky global radiation estimated by Yang’s

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hybrid model and the ANN-based model, and found that the long-term variations in

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the estimated global radiation are generally reliable. Thus, we may believe that the

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long-term variations of the quality-controlled all-sky global radiation dataset ( Eqc ↓ )

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are reliable. These all-sky global radiation data are compared with the clear-sky global

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radiation to quantify the role of aerosols in global radiation over China.

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Two issues should be noted when deriving aerosol information from visibility

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data. One is that the haze information in visibility data is affected by the water vapor

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and naturally occurring hydrometeors (such as fog, rain and snow), which should be

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corrected and eliminated, respectively. Che et al. [2007] proposed a method to filter

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visibility data, in which three rules were used: (i) Only use the 6:00 GMT values to

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represent daily visibility because the noon observation of visibility is more

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representative than the other three ones (two in night and one in morning) [Wu et al.,

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2012]; (ii) filter the visibility measurements for natural events such as fog, rain, snow;

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ACCEPTED MANUSCRIPT and (iii) exclude visibility measurements that correspond to a relative humidity of

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higher than 90%. In addition, the impact of relative humidity on visibility was also

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corrected following to the method reported in Che et al. [2007]. Another issue is that

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different observation methods were used before and after 1980. Prior to 1980,

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visibility was recorded using 10 distance ranks, while after 1980 real distances were

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used. To avoid the uncertainty introduced by this difference in observation methods,

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we only use data acquired since 1980.

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3. Methods

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3.1 Determination of Aerosol Optical Depth

In this study, the AOD at 550 nm is determined by two steps. Firstly, the

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traditional Elterman AOD retrieval method [Elterman, 1970; Zhao et al., 1986] is used

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to calculate AOD from horizontal visibility data using Equation (1):

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′ τ 550

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− − − − 3.912 0.75 2−ν * H H H H = 0.733( − 0.0116)( ) [H 1(e 1 − e 1 ) + 12.5e 1 + H 2e 1 ], (1) 5.5

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λ

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V

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′ H 1 = 0.886 + 0.0222V [km], H 2 = 3.77 [km]. τ 550 is AOD at the

where

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wavelength of 550 nm, Z [km] the site altitude, ν * (=3) the Junge spectral parameter,

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and V [km] the visibility at sea level, which is derived from the measured visibility

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Vz [km] by Elterman [1970], as shown in Equation (2):

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V z = 3.912[0.0116 − 0.00099z + (

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z (0.886 + 0.222V ) −1

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(2)

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Qiu and Lin [2001] pointed out that the aerosol vertical distribution assumed in

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Elterman [1970] is not applicable to China and needs to be corrected. Therefore, they 8

ACCEPTED MANUSCRIPT introduced a correction coefficient f, which depends on the distribution of aerosol

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particle number density with height. f =1 means that the aerosol vertical distribution is

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the same as the assumption in Elterman [1970]; f >1 means that the attenuation of

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aerosol particle number density with height is slower than that assumed in Elterman

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[1970]; and f <1 means that the attenuation of aerosol particle number density with

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height is faster than that assumed in Elterman [1970].

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Secondly, following the method of Qiu and Lin [2001], the final AOD ( τ 550 ) is

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derived from Equation (3) by implementing a correction coefficient f to account for

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the impact of the aerosol vertical profile.

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′ ⋅f τ 550 = τ 550

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Qiu and Lin [2001] determined the correction coefficient f by comparing the AODs

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retrieved from Equations (1) and (2) with those retrieved from direct solar radiation

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measurements at 16 stations over China. However the small number of stations

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considered means that the correction method presented in Qiu and Lin [2001] requires

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local calibration in order to prevent large errors when applied to other stations. To

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address this, we use MODIS Level-3 AOD data (Aqua) from 2002 to 2010 to calibrate

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Equation (4) at a monthly mean scale,

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2 (d ⋅Vz / Pw )

f = e(a +b ⋅Pw +c ⋅Vz )⋅e

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(4)

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where Pw [hPa] is surface vapor pressure, and the formula is similar to the one of

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Qiu and Lin [2001]. The parameters ( a , b ,

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shuffled complex evolution method [Duan et al., 1993]. Once these parameters have

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been determined for each station, the final AOD from 1980 to 2010 can be derived. It 9

c and d ) are optimized using the

ACCEPTED MANUSCRIPT should be noted that the spatial resolution difference between level-3 MODIS AOD

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and the station AOD would introduce non-negligible uncertainty into the accuracy of

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the final AOD. However, the effect of the spatial resolution difference would be

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reduced when the calibration procedure is done at the monthly-mean scale.

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As shown in Figure 2, we compare the visibility-based monthly-mean AODs at

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550 nm before and after correction with the observed AOD recorded at the Beijing

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AERONET station [Xia et al., 2006b]. The AERONET AODs at 550 nm are

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converted from the observed values at 440 nm using the corresponding Ångström

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exponent. It can be seen that the visibility-based AODs before correction are

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substantially underestimated and no obvious seasonal variation is apparent. In contrast,

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the visibility-based AODs after correction exhibit an obvious seasonal pattern, and the

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variations are relatively consistent with the observed data. In Figure 2, we may find

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some large discrepancy between the corrected visibility-based AOD and the

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AERONET AOD, which may be due to the accuracy of the monthly-mean MODIS

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AOD. As well known, the algorithm for MODIS AOD retrieval works only under

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clear-sky condition. If there are not enough effective retrievals in a month due to

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cloudy conditions, the monthly-mean MODIS AOD may not be representative and

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thus would lead to large discrepancy. To further demonstrate the applicability of the

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above calibrated method, we separate the MODIS AOD data into two groups: data

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between 2005 and 2010 are used to calibrate the parameters, and data between 2002

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and 2004 are used to evaluate the performance of the calibration method. Figure 3

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shows the validation of the visibility-based monthly-mean AODs before and after

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ACCEPTED MANUSCRIPT correction against the MODIS AODs between 2002 and 2004 at all CMA stations.

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After correction, the accuracy of the visibility-based AOD is obviously improved,

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with the mean bias error (MBE) reducing from 0.1 to 0.04, root mean square error

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(RMSE) reducing from 0.31 to 0.19 and correlation coefficient increasing from 0.44

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to 0.74. This demonstrates that the correction method is feasible and can improve the

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accuracy of the visibility-based AOD.

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An issue should be noted that the correction method presented in this study

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improves the absolute accuracy of the visibility-based AOD with MODIS AOD, but

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does not change the relative variations in the visibility-based AOD.

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3.2 Modeling aerosols and water vapor direct effects on global radiation

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Yang’s hybrid model [2006] is used in this study. The model contains two parts.

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One is the calculation of transmittances for clear sky, which is converted from a

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radiative transfer model and has accuracy comparable to that of spectral radiative

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transfer models [Gueymard, 2003a; 2003b], based on local geographical and

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meteorological conditions. The other is the calculation of transmittance for cloud,

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which is parameterized with sunshine duration data. The inputs of the Yang’s model

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contain surface pressure, water vapor, ozone thickness and Ångström turbidity and

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sunshine duration. Therefore, using the hybrid model, we can estimate clear-sky

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global radiation and all-sky global radiation simultaneously. In order to quantify the

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effects of aerosols and water vapor on all-sky global radiation climatology over China,

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three control experiments were designed to simulate the all-sky global radiation using

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the hybrid model of Yang et al. [2006]. First is to simulate the all-sky global radiation

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ACCEPTED MANUSCRIPT 219

without considering aerosol attenuation; second is to simulate the all-sky global

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radiation without considering water vapor absorption; and third is to simulate the

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all-sky global radiation ( E g ↓ ). It is difficult to directly quantify the role of aerosols and water vapor in

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long-term variations of global radiation because we cannot distinguish the effects of

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clouds, aerosols and water vapor on long-term variations in global radiation. However,

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it may be a feasible method to evaluate the role of aerosols and water vapor in

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long-term variations of global radiation, by comparing long-term variations (or trends)

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between all-sky global radiation and clear-sky global radiation impacted by aerosols

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or water vapor. The clear-sky part of Yang’s hybrid model is used to estimate the

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clear-sky daily global radiation at the 519 stations. In order to separate the impact of

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aerosols and water vapor on clear-sky global radiation, three simulation experiments

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were also designed. The first experiment simulates the clear-sky global radiation

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(termed E a ↓ ) with water vapor fixed at 1980 levels, and so investigates the impact of

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aerosols on variations in clear-sky global radiation. The second experiment simulates

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clear-sky global radiation (termed E w ↓ ) with aerosol loading fixed at 1980 levels, and

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so investigates the impact of water vapor on variations in clear-sky global radiation.

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The third experiment simulates clear-sky global radiation (termed E(a +w )↓ ) impacted

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by both aerosols and water vapor.

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The Ångström turbidity is converted from the AOD at 550 nm, which was first

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estimated from visibility observed at CMA stations [Elterman, 1970] and then

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corrected with MODIS AOD data on the monthly mean scale. The ozone thickness is 12

ACCEPTED MANUSCRIPT derived from the climatological data based on Total Ozone Mapping Spectrometer

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zonal means, which are provided by the National Aeronautics and Space

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Administration Goddard Space Flight Center. Water vapor can be derived from the

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re-analysis data, but their spatial resolutions are too coarse (larger than 0.5o) and

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applying re-analysis data at certain stations through interpolation may bring some

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uncertainty. On the other hand, water vapor can be easily derived at routine weather

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stations with the semi-empirical formula. The accuracy of the water vapor estimated

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by this way is not high, but the long-term variations in the water vapor estimated from

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air temperature and relative humidity is reliable, which is accordant with the main

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objective of this study, i.e., to discuss the role of aerosols and water vapor on the

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long-term changes of global radiation over China. Therefore, the water vapor is

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determined approximately from the air temperature and relative humidity according to

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Yang et al. [2006] as Equation (5):

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Pw = 0.00493RH ⋅ T −1 exp(26.23 − 5416T −1 ), where RH [%] is relative humidity and T [K] is air temperature.

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4. Results

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4.1 AOD variations

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(5)

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Figure 4 shows the annual mean time series of AOD ( τ 550 ) between 1980 and

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2010 averaged over the whole China (CN), the CE region, the SC region and the OT

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region, respectively. Averaged over the whole China (CN), the AOD decreases from

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1980 to 1989 at a rate of around −0.002 per year, increases since 1990 until 2006 at a 13

ACCEPTED MANUSCRIPT rate of around 0.0014 per year, and then decreases after 2006 at a rate of around

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-0.0113 per year. The variations of aerosols over CE regions are similar to the one

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over the whole China with the same two increasing periods (before the end of 1980s

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and after 2006) and one decreasing period (from 1990 to 2006). Averaged over the SC

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region, the AOD slightly increases from 1980 to 1989, rapidly increases since 1990

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until 2006, and then decreases after 2006. The increasing rate between 1990 and 2006

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is obviously larger than the ones averaged over the whole China and the CE region.

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Averaged over the OT region, the AOD decreases from 1980 to 1989, and then

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slightly increases since 1990. But the slightly increasing trend does not pass the

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significance test (p < 0.05).

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As seen from Figure 4, one may question that the AOD derived here is not

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significantly increased during the last decade in China, and especially, the AOD

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decreases after 2006. These seem to conflict with the impression that the haze days

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increased significantly over China in recent years. But this impression may be not true.

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Actually, there are severally studies analyzing the long-term variations of haze days in

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China (Fu and Dan [2014]; Fu et al. [2014]). Fu and Dan [2014] analyzed the haze

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days over China (except Xinjiang and Tibet) during 1960–2010. Their results show

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that haze days decrease weakly since the end of 1970s, and increase rapidly since the

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middle of 1990s, but decrease after the middle of 2000s (See Figure 6 of Fu and Dan

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[2014]). This is generally consistent with the variations of AOD in Figure 4. All the

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four urban agglomerations (The Jing-Jin-Ji region, Yangtze River Delta region, Pearl

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River Delta Region and Sichuan Basin region) show a slow decrease in haze days

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ACCEPTED MANUSCRIPT after the middle of 2000s (See Figure 6(b) of Fu and Dan [2014]). Fu et al. [2014]

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analyzed the trends of fog and haze in the North China Plain over the past 30 years

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and also found a slow decrease in haze days after the middle of 2000s, which is

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consistent with the variation of SO2 emissions in Hebei Province (See Figure 3 of Fu

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et al. [2014]). Liu et al. [2015] investigated the emissions from China’s coal-fired

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power plants during 1990–2010, and found that the emissions of SO2, PM2.5 and PM10

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are decreased since 2006 (See Figure 4 of Liu et al. [2015]). These results are

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consistent with the conclusion that the AOD derived in this study is decreased after

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2006.

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Li et al. [2014] derived recent trends in aerosol optical properties from

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AERONET measurements and found that the 440 nm AOD at Beijing station has a

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decreasing trend since 2002, though the trend is not statistically significant (See

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Figure 2 and Table 1 in Li et al. [2014]). Xu et al. [2015] retrieved the 750 nm AOD

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over 14 first-class solar radiation stations (contains continuous measurements of

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global, direct and diffuse radiation) in China based on direct radiation measurements

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during 1993–2012, and found decreasing trends of AOD at two stations of Beijing and

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Guangzhou (See Figure 9 of Xu et al. [2015]). These two studies also suggest that the

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AOD is not continuously increased in the last decade in CE and SC regions, despite

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the AOD values at these regions are general large.

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4.2 Validity of the estimated AOD for radiation variation study

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It is hard to directly validate the estimated AOD due to lack of observed aerosols

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data. Instead, we present an indirect validation through comparing observed clear-sky 15

ACCEPTED MANUSCRIPT global radiation with the simulated one by Yang’s hybrid model, in which AOD (or

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Ångström turbidity) is an important input. In order to evaluate the accuracy of the

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estimated clear-sky global radiation ( E(a +w )↓ ), we chose the clear days at all CMA

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radiation stations. A clear-sky day is defined as one with daily TCC being less than

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10%, according to Qian et al. [2007]. The instrument to measure the radiation in CMA

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stations and its calibration procedures are introduced in Tang et al. [2010]. A quality

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control scheme was applied to the CMA observed radiation data to exclude the

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erroneous and suspected data [Tang et al., 2010]. Figure 5 presents the validation

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results of the estimated daily clear-sky global radiation against the observed one at all

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CMA radiation stations during 1993-2000. The relative MBE and RMSE of the

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estimated clear-sky daily global radiation to the observations are about 1.9% and

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8.9%, respectively. The slightly overestimation of the daily clear-sky radiation may

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partly be attributed to the cloud contamination in the observed clear sky global

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radiation, which was identified based on daily TCC observations.

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Furthermore, we evaluate the applicability of the estimated AOD in representing

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the inter-annual variability of clear-sky radiation. We count the number of clear-sky

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days in each year at each CMA radiation station, and find that there are 32 radiation

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stations, each of which contains at least 20 clear-sky days in each year during

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1980-2010. Considering the inhomogeneous distribution of clear-sky days and

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seasonal cycle of solar radiation, Figure 6 shows the comparisons of the variations in

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solar transmittance under clear-sky days between the observed one and the estimated

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one averaged over the 32 CMA radiation stations during 1980-2010. It can be found

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that of the observed one, though the estimated values are slightly underestimated. This

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indicates that the long-term variations in the estimated AOD are relatively reliable,

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which is consistent with the conclusion of Wang et al. [2009].

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4.3 Aerosol effect on global radiation variations

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Considering the potential transition for global radiation over China, Tang et al.

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[2011] divided the data into two time periods: pre- and post- 1989. For consistency

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with the analysis of global radiation over China, we also separate the time period into

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two sub-periods (1980 – 1989 and 1990 – 2010) and investigate the decadal change in

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each period. Figure 7 presents the trends comparisons between the clear-sky global

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radiation ( E a ↓ ) impacted by aerosols and the corresponding all-sky global radiation

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( E qc ↓ ) at the 519 individual CMA stations for time periods 1980 – 1989 and 1990 –

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2010, respectively. It is shown that there are significant differences between the trends

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in E a ↓ and E qc ↓ , and the correlation coefficient between them is 0.01 and -0.03 for

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the two time periods respectively. These low correlation values demonstrate that

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long-term variations in E qc ↓ are not related to those of E a ↓ , indicating that aerosols

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are unlikely to be the main cause for the long-term variations in global radiation over

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China.

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To further investigate the impacts of aerosols on long-term variations in global

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radiation at a regional scale, Figure 8 (a) shows the anomalies of annual mean

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clear-sky global radiation ( E a ↓ ) and all-sky global radiation ( E qc ↓ ) averaged over the

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whole China (CN) for 1980-2010. The clear-sky global radiation ( E a ↓ ) increases 17

ACCEPTED MANUSCRIPT from 1980 to 1989 at a rate of about 0.13 W m−2 yr−1, and then decreases from 1990 to

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2010 at a rate of about -0.07 W m−2 yr−1. Obviously, the variations of the all-sky

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global radiation ( E qc ↓ ) are quite different from the variations of the clear-sky global

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radiation ( E a ↓ ). Their trends are opposite to each other for both time periods (1980 –

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1989 and 1990 – 2010). Moreover, the trends seen in E a ↓ for the two time periods

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are statistically significant, while the trends seen in E qc ↓ do not pass the significance

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test (p < 0.05). This may indicate that variations in aerosols are not the primary causes

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for variations in global radiation over China. Figure 8 (b)–(d) presents the results

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averaged over the CE region, the SC region and the OT region, respectively. In the

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CE region, the trends in E a ↓ and E qc ↓ are opposite to each other during 1980 –

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1989, but they are both decreasing during 1990 – 2010, and the former can seem to

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explain about 54% (-0.07/-0.13) of the latter. Similarly to the results averaged over

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the whole China, the aerosols cannot account for the variations of the global radiation

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over the SC and the OT regions.

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4.4 Water vapor on global radiation variations

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In addition to aerosols, water vapor may have a considerable effect on global

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radiation climatology. To present the effects of aerosols and water vapor on global

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radiation climatology, Figure 9 shows the difference between the all-sky global

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radiation without considering aerosol attenuation and all-sky global radiation, and the

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one between all-sky global radiation without considering water vapor absorption and

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all-sky global radiation averaged over all CMA stations from 1980 to 2010,

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respectively. The effects of aerosols and water vapor on global radiation climatology

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ACCEPTED MANUSCRIPT are about 30 W m-2 and 25 W m-2, respectively. This indicates that water vapor may

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have equally important role in determining the variations of global radiation as

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aerosols. Figure 10 compares the trends of the clear-sky global radiation ( Ew ↓ )

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impacted by water vapor with those of all-sky global radiation ( E qc ↓ ) at the 519

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individual CMA stations for the time periods 1980 – 1989 and 1990 – 2010. It can be

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seen that fluctuations in Ew ↓ are significantly lower in magnitude than the

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corresponding fluctuations in E qc ↓ , in fact Ew ↓ remains close to zero and within the

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range -0.1 to 0.1. This indicates that the variations in E qc ↓ over China cannot be

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accounted for by the variations in Ew ↓ , suggesting that water vapor is not the primary

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factor for long-term variations in global radiation over China.

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5. Discussions

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Based on above results, aerosols and water vapor are not the primary causes for

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the long-term variations in global radiation over China. Alternatively, the changes of

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cloud properties and the interactions between clouds and aerosols may be the main

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causes for the variations in global radiation over China. The effect of cloud on global

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radiation climatology over China can be derived by using the clear-sky global

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radiation ( E(a +w )↓ ) minus the all-sky global radiation ( E g ↓ ) averaged over China, and

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its value is about 65 W m-2, which is much greater than the effects of aerosols and

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water vapor as shown in Figure 9. This indicates that the cloud effect may be the

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primary factor for long-term variations in global radiation over China. To further

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discuss the role of cloud in the long-term changes of global radiation over China,

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ACCEPTED MANUSCRIPT Figure 11 shows anomalies in TCC, LCC and all-sky global radiation ( E qc ↓ ),

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normalized and averaged over the whole China (CN), CE, SC and OT regions during

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1980 – 2010. In general, there is negative correlation between global radiation and

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cloud (TCC or LCC). Especially, the negative correlation coefficient between global

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radiation and cloud is -0.76 and -0.82 over the SC region for TCC and LCC,

400

respectively. This may indicate that the changes of cloud (including aerosol indirect

401

effect) could explain the variations of global radiation over the SC region.

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The aerosol indirect effect on long-term variations in global radiation cannot be

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ignored since aerosols can indirectly attenuate global radiation through altering cloud

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reflectivity and lifetime. In pristine regions, aerosol–cloud interactions may amplify

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the variations in global radiation; while in polluted regions, aerosol–cloud interactions

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may suppress the variations in global radiation [Wild et al. 2012a]. Stanhill et al.

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[2014] presented a novel idea for separating aerosol direct and indirect effects on

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global radiation. They analyzed the Angstrom-Prescott relationship between

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normalized global radiation and sunshine duration at five stations with different

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climate, and found that the parameters of this relationship were rather stable across

411

sub-periods related to the dimming and brightening, thus they concluded that changes

412

in the cloud cover rather than anthropogenic aerosol emissions was the major cause

413

for the variations in global radiation. However, this hypothesis has been tested and

414

rejected at Potsdam station (one of the five stations used in Stanhill et al. [2014]) by

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Vetter and Wechsung [2015], who found that the residuals of the Angstrom-Prescott

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relationship at Potsdam station are not only nonrandom but also contain variations

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ACCEPTED MANUSCRIPT that are consistent with the variations in the aerosol emissions around Potsdam.

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Another point is that cloud types, which have different impacts on global radiation,

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may change with climate conditions. For example, the cloud types over the Tibetan

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Plateau have changed since 1984 with less TCC but more LCC [Yang et al., 2012].

421

Therefore, it is very difficult to quantify the effect of aerosols on cloud and the effect

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of cloud on long-term variations in global radiation because variations in cloud cover

423

do not represent variations in cloud optical properties since the same cloud cover

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amount may correspond to clouds with different optical depths and different

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microphysical properties [Stubenrauch et al., 2013]. Therefore, the uncertainties in

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explaining the variations of global radiation with cloud cover should be investigated

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and quantified in future studies.

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6. Conclusions

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The global radiation over China has undergone substantial decadal changes over

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the past five decades, and this may be attributed to variations in water vapor, clouds,

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aerosols and interactions among them. In this study, we first derive the long-term

433

aerosol information by estimating the AOD from the visibility data and correcting

434

with the MODIS AOD data. AOD averaged over China exhibits decadal changes,

435

with two decreasing periods (before the end of 1980s and after 2006) and one

436

increasing period (from 1990 to 2006). Then the effect of aerosols on long-term

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variations in global radiation over China is quantified, using a physical radiation

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model for clear skies. It is found that aerosols have a considerable effect on global

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ACCEPTED MANUSCRIPT radiation climatology over China, but aerosols cannot wholly explain the variations in

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global radiation over China. Generally, the aerosol direct effect can explain about 54%

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of the variations in global radiation over the CE region during 1990–2010. In CE

442

region during 1980–1989 and in CE region during 1980–1989 and 1990–2010, the

443

aerosol direct effect suppresses the decadal variations in global radiation. This result

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is consistent with the finding of Lin et al. (2015), who indicated that aerosol direct

445

effect can only explain 20% of the decadal change in global radiation over China

446

according to a statistical method. Therefore, it is reasonable to speculate that

447

variations in clouds and interactions between clouds and aerosols are the main causes

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of the long-term variations in global radiation over China. As this study only

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considers the direct effect of aerosols on global radiation variation, the aerosol

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indirect effect also warrants further investigations.

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Acknowledgments

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This work was supported by the National Natural Science Foundation of China

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(Grants No. 41301359), “Strategic Priority Research Program (B)” of the Chinese

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Academy of Sciences (Grant No. XDB03030306), Open Fund from the State Key

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Laboratory of Remote Sensing Science (Grant No. OFSLRSS201303) that is

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cosponsored by the Institute of Remote Sensing and Digital Earth, Chinese Academy

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of Sciences and Beijing Normal University, and China Postdoctoral Science

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Foundation (Grant No. 2014T70127). The CMA station data were obtained from the

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National Meteorological Information Center.

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ACCEPTED MANUSCRIPT Figure captions

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Figure 1 The distribution of the CMA routine meteorological stations where the data

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contain records for at least 20 days per month from 1980 to 2010. The

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color filling represents the MODIS winter half-year AOD climatology

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according to Lin et al. [2015], and the grey indicates missing AOD values.

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Figure 2 Comparisons between monthly mean AOD estimated from visibility data

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before and after correction, and AOD recorded at Beijing station. The

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observation data are from Beijing AERONET station.

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Figure 3 Validation of monthly mean visibility-based AOD before and after correction against MODIS AOD for 2002 – 2004 at all CMA stations. Figure 4 Annual mean time series of AOD ( τ 550 ) averaged over the whole China

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(CN), the CE region, the SC region and OT region for 1980 – 2010. The

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star symbol (*) denotes a trend that passes the significance test (p <0.05).

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and the estimated one at all CMA radiation stations during 1993–2000.

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Figure 5 Comparison between the observed daily clear-sky global radiation ( E(a +w )↓ )

Figure 6 Comparison of the variations in solar transmittance under clear-sky days

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between the estimated one and the observed one averaged over the 32 CMA radiation stations during 1980–2010.

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Figure 7 Comparison between the trends in clear-sky global radiation impacted by

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aerosols ( E a ↓ ) and the trends in all-sky global radiation ( E qc ↓ ) at 519

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individual CMA stations for (a) 1980 – 1989 and (b) 1990 – 2010.

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Figure 8 Anomalies of annual mean clear-sky global radiation ( E a ↓ ,blue Line) and 31

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all-sky global radiation ( E qc ↓ ,red Line) averaged over (a) CN, (b) CE, (c)

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SC, and (d) OT for 1980 – 2010. The star symbol (*) denotes a trend that

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passes the significance test (p <0.05). Figure 9 The effects of aerosols (with solid marker) and water vapor (with circle

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marker) on global radiation climatology averaged over all CMA stations

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during 1980 – 2010. The effect of aerosols is the difference between the

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all-sky global radiations estimated with/without considering aerosol

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attenuation, and the effect of water vapor is the difference between the

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all-sky global radiations estimated with/without considering water vapor

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absorption.

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Figure 10 Comparison between the trends in clear-sky global radiation impacted by

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water vapor ( E w ↓ ) and the trends in all-sky global radiation ( E qc ↓ ) at 519

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individual CMA stations for (a) 1980 – 1989 and (b) 1990 – 2010.

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Figure 11 Normalized anomaly time series of TCC, LCC and all-sky global radiation

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( E qc ↓ ) averaged over (a) CN, (b) CE, (c) SC, and (d) OT for 1980 – 2010.

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Figure 1 The distribution of the CMA routine meteorological stations where the data

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contain records for at least 20 days per month from 1980 to 2010. The color

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filling represents the MODIS winter half-year AOD climatology according

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to Lin et al. [2015], and the grey indicates missing AOD values.

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Figure 2 Comparisons between monthly mean AOD estimated from visibility data

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before and after correction, and AOD recorded at Beijing station. The

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observation data are from Beijing AERONET station.

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correction against MODIS AOD for 2002 – 2004 at all CMA stations.

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Figure 3 Validation of monthly mean visibility-based AOD before and after

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Figure 4 Annual mean time series of AOD ( τ 550 ) averaged over the whole China

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(CN), the CE region, the SC region and OT region for 1980 – 2010. The star

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symbol (*) denotes a trend that passes the significance test (p <0.05).

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Figure 5 Comparison between the estimated daily clear-sky global radiation ( E(a +w )↓ ) and the observed one at all CMA radiation stations during 1993–2000.

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Figure 6 Comparison of the variations in solar transmittance under clear-sky days

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between the estimated one and the observed one averaged over the 32 CMA

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radiation stations during 1980–2010.

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Figure 7 Comparison between the trends in clear-sky global radiation impacted by

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aerosols ( E a ↓ ) and the trends in all-sky global radiation ( E qc ↓ ) at 519

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individual CMA stations for (a) 1980 – 1989 and (b) 1990 – 2010.

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Figure 8 Anomalies of annual mean clear-sky global radiation ( E a ↓ ,blue Line) and

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all-sky global radiation ( E qc ↓ ,red Line) averaged over (a) CN, (b) CE, (c)

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SC, and (d) OT for 1980 – 2010. The star symbol (*) denotes a trend that

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passes the significance test (p <0.05).

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Figure 9 The effects of aerosols (with solid marker) and water vapor (with circle

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marker) on global radiation climatology averaged over all CMA stations

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during 1980 – 2010. The effect of aerosols is the difference between the

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all-sky global radiations estimated with/without considering aerosol

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attenuation, and the effect of water vapor is the difference between the

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all-sky global radiations estimated with/without considering water vapor

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absorption.

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Figure 10 Comparison between the trends in clear-sky global radiation impacted by

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water vapor ( E w ↓ ) and the trends in all-sky global radiation ( E qc ↓ ) at 519

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individual CMA stations for (a) 1980 – 1989 and (b) 1990 – 2010.

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( E qc ↓ ) averaged over (a) CN, (b) CE, (c) SC, and (d) OT for 1980 – 2010.

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Figure 11 Normalized anomaly time series of TCC, LCC and all-sky global radiation

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radiation over China.