Journal Pre-proofs Research papers Integrated land-surface hydrological and biogeochemical processes in simulating water, energy and carbon fluxes over two different ecosystems Sidong Zeng, Jun Xia, Xiangdong Chen, Lei Zou, Hong Du, Dunxian She PII: DOI: Reference:
S0022-1694(19)31125-4 https://doi.org/10.1016/j.jhydrol.2019.124390 HYDROL 124390
To appear in:
Journal of Hydrology
Received Date: Revised Date: Accepted Date:
3 July 2019 2 October 2019 19 November 2019
Please cite this article as: Zeng, S., Xia, J., Chen, X., Zou, L., Du, H., She, D., Integrated land-surface hydrological and biogeochemical processes in simulating water, energy and carbon fluxes over two different ecosystems, Journal of Hydrology (2019), doi: https://doi.org/10.1016/j.jhydrol.2019.124390
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Integrated land-surface hydrological and biogeochemical processes in simulating water,
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energy and carbon fluxes over two different ecosystems
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Sidong Zenga, c, Jun Xiaa,b,d,*, Xiangdong Chene, Lei Zoud, Hong Duf, Dunxian Sheb
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aChongqing
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Chongqing, 400714, China
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bState
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University, Wuhan 430072, China;
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cChangjiang
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dKey
Institute of Green and Intelligent Technology, Chinese Academy of Sciences,
Key Laboratory of Water Resources and Hydropower Engineering Science, Wuhan
Institute of Survey, Planning, Design and Research, Wuhan 430010, China
Laboratory of Water Cycle and Related land Surface Processes, CAS, Beijing 100101
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China;
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e China
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f College
13
Wuhan 430074, China
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Abstract: Understanding the mechanism of the interactions between vegetation dynamics and
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the water cycle is rather important for determining global and regional water and carbon
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budgets. In this paper, a physically-based model integrating land-surface hydrological and
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biogeochemical processes by coupling a hydrological model and a biogeochemical model is
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developed to simulate the water, energy and carbon fluxes. The model is validated against
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observed biometric, eddy-covariance flux, soil moisture and temperature data over two
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different ecosystems. Results show that the model could simulate the vegetation physiological
Water Exchange, Beijing, 100053, China of Resources and Environmental Science, South-Central University for Nationalities,
* Corresponding author: Address: State Key Laboratory of Water Resources and Hydropower Engineering Science, Wuhan University, Wuhan 430072. E-mail address:
[email protected] 1
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and hydrological processes satisfactorily including net radiation, latent heat, gross primary
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production (GPP), net ecosystem exchange and soil moisture and temperature. Sensitivity
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analysis illustrates that evapotranspiration, GPP, net ecosystem production are quite sensitive
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to plant physiological controls such as the maximum electron transport rate, quantum
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efficiency of electron transport and runoff parameter. Moreover, results show that a close
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relationship between photosynthesis and transpiration. Water use efficiency shows a U-bend
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curve at different time steps and it also indicates a higher value in forest ecosystem than that
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of grass ecosystem. In the forest ecosystem, evapotranspiration is higher and the surface
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runoff is lower. Meanwhile it is almost carbon sink during the whole year, while in the grass
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ecosystem, it shows a carbon source during May to September. This study could provide an
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effective model for the simulation of water-carbon cycles.
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Keywords: Hydrological; Biogeochemical; DTVGM; CASACNP; Coupling
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1. Introduction
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The bidirectional effects of vegetation dynamics and hydrologic balance are well known
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and have received much attention in both hydrological and ecological research (Arora, 2002;
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Wagener et al., 2010; Shen et al., 2013). For example, regarding the interactions between
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vegetation and soil moisture via transpiration, water extraction by plant roots affects soil
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moisture transport and then runoff generation, and the influences are various from different
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species. Moreover, the feedback of soil moisture through its stress effects on transpiration,
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photosynthesis, and respiration affect plant growth and the carbon cycle. The leaf area index
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(LAI) also affects solar radiation transfer and rainfall interception by the canopy, subsequently
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affects the evapotranspiration, runoff, etc. In addition, nutrient limitation on carbon
2
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assimilation affects vegetation growth and the water balance. Several studies have shown that
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under climate change condition with increasing carbon dioxide (CO2) levels, plants tend to
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reduce stomatal conductance, suppress transpiration and enhance carbon uptake, which
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implies increases in plant biomass (Pritchard et al. 1999), water use efficiency and soil
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moisture (Volk et al., 2000). Moreover, the increases in plant biomass may not be sustainable
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in the long-term due to nutrient limitation (McMurtrie and Comins, 1996). These findings
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suggest that it is necessary to consider the interactions between carbon/nutrient dynamics and
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hydrological processes to better understand vegetation growth and hydrologic balance.
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Physically based hydrological models derived deductively from fundamental physical
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laws (Beven, 2002) have successfully been used to explain complex hydrological processes,
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such as the rainfall-runoff relationship, exchanges between surface and subsurface water, and
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flood routing. However, these physically based models often have not considered the effects
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of biogeochemical changes in vegetation such as LAI dynamics, root growth and stomatal
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conductance on hydrological balance. Biogeochemical models have used to characterize the
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carbon, nitrogen, and phosphorus cycles and simulate carbon, nitrogen, phosphorus transfer
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between different pools. However, the hydrological processes in most biogeochemical models
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are simplified, and the effects of the water cycle on biogeochemical processes are not well
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understood.
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From a modeling perspective, the coupling of physically based hydrological models and
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biogeochemical models that characterize vegetation dynamics and related carbon/nutrition
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cycles is required to explore the interactions between vegetation and hydrology (Park et al.,
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2011), and it is currently receiving much attention (Manzoni and Porporato, 2011;
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Riveros-Iregui et al., 2012; Wu et al, 2016; Zhao et al., 2018, 2019). For example, Park et al.
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(2011) developed a coupled hydrological and biogeochemical model and applied it to a larch
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forest in eastern Siberia. The authors found that soil water is the determinant that influences
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CO2 fluxes. Shen et al. (2013) coupled the Process-based Adaptive Watershed Simulator and
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Community Land Model and studied the complex effects of key controls of nitrogen,
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groundwater and soil water content on evapotranspiration, net primary productivity and other
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important water/carbon flux variables in a humid continental climate watershed in the Great
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Lakes region of North America. They found that nitrogen significantly controls transpiration
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and then influences other hydrologic fluxes. However, hydrological models still have rarely
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considered biogeochemical processes.
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The Distributed Time Variant Gain Model (DTVGM) developed by Xia et al. (2005) is
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an extension of a nonlinear approach derived from Volterra function (Xia et al., 1997; Xia,
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2002) coupled hydrological processes based on geographic information system and remote
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sensing platform. The DTVGM has been applied to many basins in China and has achieved
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good performance (Wang et al., 2009; Li et al., 2010; Zhan et al., 2013). The model includes
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several components of hydro-information analysis and modeling, such as data processing,
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snow melt, the evapotranspiration and runoff generation on each grid and flow routing
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between adjacent concentration belts. The model has smaller parameter sets for runoff
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generation, and the parameters can be estimated in terms of system identification approach to
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reduce uncertainty (Xia et al., 2005).
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CASACNP (Carnegie-Ames-Stanford Approach Carbon Nitrogen Phosphorous) is a
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process-based biogeochemical model that was developed by Wang et al. (2007) and Houlton
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et al. (2008) from the Carnegie-Ames-Stanford Approach (CASA) model (Randerson et al.,
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1997). This model has been well calibrated and used in several previous studies to study
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global and regional carbon cycles (Randerson et al., 2002; Wang et al., 2010). The model can
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simulate vegetation dynamics, including those of leaves, wood and root, and the carbon cycle
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in litter and soil organic matter. The model also considers the coupling of the biogeochemical
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cycles of carbon, nitrogen and phosphorus. Based on the coupling, the model can be used to
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examine the nutrition limit on vegetation productivity and growth, which is not considered in
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most other terrestrial biogeochemical models (Wang et al., 2007). However, CASACNP
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rarely considers hydrological processes or energy transfer. For example, soil moisture and soil
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temperature should be prepared as inputs to drive the model (Shi et al., 2011), that is the
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bidirectional effects of water and carbon are not well simulated. Besides, the accuracy of the
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simulation for photosynthesis affected by physiological characteristics and environmental
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factors is significant to carbon assimilation. In the CASA model, the net primary production
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is estimated simplified by the absorbed photosynthetically active radiation which ignores the
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complex physiological and environmental effects, which may bring certain error in the
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simulation of carbon assimilation. From the above descriptions, neither of the hydrological or
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biogeochemical models could meet the requirement of studying interactions between
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vegetation and hydrological balance. For these reasons, we integrated CASACNP with carbon
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assimilation modules modified to DTVGM in our research to enhance the ability and
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adaptability in simulating water, energy and carbon fluxes.
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In this study, the coupled DTVGM-CASACNP model is introduced to study water,
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energy and carbon fluxes over two different ecosystems. The objectives of this study are (1)
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to describe the physical processes of the model, (2) to evaluate the performance of the
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coupled model in simulating water, energy and carbon fluxes, soil moisture and temperature
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and (3) to study the coupling characteristic of vegetation and hydrological processes.
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2. Model description
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The coupling of the hydrological model (i.e., DTVGM) and biogeochemical model (i.e.,
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CASACNP) is described below, and the schematic of the coupled model is shown in Fig.1.
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The coupled model consists of three main modules: the land surface hydrological module
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included in the DTVGM, the carbon assimilation module based on Farquhar et al. (1980), and
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biogeochemical cycle module based on CASACNP.
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Place Fig.1 here
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2.1 Land surface hydrological processes
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Water budget The coupled model solves the water budget for both the canopy and soil,
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including rainfall interception, evaporation of intercepted water from the canopy,
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transpiration, soil evaporation, surface runoff, subsurface runoff, vertical movement of soil
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water, groundwater recharge and base flow.
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Interception by the canopy plays an important role in redistributing water components
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including evapotranspiration, infiltration and surface runoff, and even the deposition of
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solutes such as dissolved organic carbon and organic nitrogen (Lohse et al., 2009). The
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intercepted water (Wc) can be obtained by determining difference in gross precipitation (P)
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arriving at the top of the canopy and the throughfall (Pd), stemflow (Pa) and evaporation (Ec)
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from the intercepted water following Rutter et al. (1972) as follows.
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dWc P Pd Pa Ec dt
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Evapotranspiration (ET) is the link between the water budget and energy balance. In this
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study, it consists of three components: evaporation from canopy intercepted water (Ec),
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transpiration (Tr) and soil evaporation (Es). Ec is considered to be the potential evaporate from
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water surface with the limitation of water storage in the wet leaf area. Tr, which is the main
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force for water uptake by plant roots, is assumed to be the accumulation of water extraction
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from each soil layer where plant roots appear. It is influenced by the degree of stomatal
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opening and the atmosphere surrounding the canopy, including the absorbed net irradiation
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and aerodynamics factors. Soil water content and soil temperature also affect transpiration by
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controlling stomatal conductance. Es is controlled by the net radiation absorbed by the soil
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surface, aerodynamics factors and soil surface resistance determined by soil moisture and soil
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texture. The major equations for estimating ET are follows(Mo et al., 2005):
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Tr
Rnc C p D0 / rac 1 rc / rac
Ec
Es
1 f w
Rnc C p D0 / rac
fw
Rns G C p D0 / ras 1 rs / ras
(1)
(2)
(3)
(4)
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where Rnc and Rns are the net radiation absorbed by the canopy and soil surface (Wm-2),
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respectively. λ is the latent heat of vaporization of water (Jkg-1), is the slope of the curve of
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saturated vapor pressure to temperature (PaK-1), is the psychrometric constant (hPaK-1), is
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air density (kgm-3), Cp is the specific heat at a constant air pressure (Jkg-1K-1), D0 is the vapor
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pressure deficit at the source height (hPa), fw is the fraction of wet leaf area. rc, rs, rac, and ras 7
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are the canopy resistance, soil resistance, leaf boundary aerodynamic resistance and
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aerodynamic resistance from the soil surface to the source height, respectively (sm-1).
154 155
Surface runoff (Rs) is calculated by a nonlinear method which is a special formulation of the second order Volterra nonlinear functional series (Xia et al., 2002), as follows:
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Rs g1 g 2 API Pe
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API exp / K e Pe t / K e d
t
0
(5) (6)
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where g1 and g2 are parameters, API is the Antecedent Precipitation Index which indicates
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underlying surface wetness, Pe is the effective rainfall arriving at the ground surface (mm), is
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a time integrating variable, Ke is a parameter indicating the rate of soil moisture recession, and
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t is the time (s).
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Many previous studies have shown that soil moisture affects both the water and carbon
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cycles including photosynthesis, plant and soil respiration, evapotranspiration, etc. (Reynolds
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et al, 2004; Davidson and Janssens, 2006). The vertical transport of soil water limits the water
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available for water extraction by plant roots in different soil layers. In this paper, soil moisture
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transport is simulated by using the Richards’ equation as follows:
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K K R t z z z
(7)
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where is the volumetric soil water content (m3m-3), K is the soil hydraulic conductivity
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(cm/s), is the matric potential (cm), R is a source term that includes the uptake water by
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roots and subsurface runoff, and z is the soil depth (m). The relationship between K, and
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follows van Genuchten (1980):
8
s r r m 1 n s
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( 0) (8)
( 0)
m 2 r 1 K ( ) K s Se0.5 1 1 Se1/ m , m 1 , n 1, Se n s r
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(9)
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where s and r are the saturated and residual volumetric water contents, respectively, Ks is
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the saturated soil hydraulic conductivity (cms-1), and , m and n are parameters. The
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Richards’ equation can be solved numerically with the given boundary conditions and initial
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soil moisture at sub-daily timestep. The implicit difference equation of Equation (7) is as
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following:
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zi
i j 1,m 1 i j t
K
j 1 i 1/2
j 1, m 1 i 1
i j 1,m 1
zi 1 zi
K
j 1 i 1/2
j 1.m 1 i
i j11,m 1
zi zi 1
(10)
1, m 1, m K i j 1/2 K i j 1/2 Ri zi
180 181 182
In this study, the implicit difference equation is solved according to Celia et al.(1990) with the following boundary conditions.
K
K z
Pe Es RS , z 0,t 0
z
0
(11)
z z L ,t 0
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Energy balance Energy balance is considered for both the canopy and soil surface in this
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model. In this study, a “root-finding” numerically iterative algorithm is used to calculate the
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canopy and soil surface temperature at sub-daily timestep. Energy balance equations are
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solved iteratively until the energy balance error is smaller than a given permissible error. The
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energy balance equations are as follows, and considering the heat storage in the canopy and
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the soil surface layer are in the left terms in equation (10) (Sellers et al., 1986):
9
Tv Rnv H v LEv t T Cgs gs Rns H s LEs G t Cv
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(12)
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where Cv and Cgs are the bulk heat capacity per unit area of the canopy and upper soil layer,
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respectively (Jm-2K-1); Tv and Tgs are the canopy and soil surface temperature, respectively
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(K), Rn, H and LE are the net radiation, sensible and latent heat fluxes, respectively, and the
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subscripts v and s indicate the canopy and soil surface respectively (Wm-2). G is the soil heat
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flux (Wm-2) and obtained by the following equation.
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T T Tgs Ts ,1 G 0.5 k1 k2 s ,1 s ,2 z1 z2
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where k is the soil thermal conductivity (Wm-1K-1), Ts is the soil temperature. The subscript 1
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and 2 indicates the first and second layers under the ground surface, respectively.
(13)
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Soil temperature is also an important factor that affects root growth, photosynthesis,
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respiration and transpiration. In this coupled model, soil heat transfer is simulated by
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numerically solving the following heat flow equation with the given boundary conditions and
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initial soil temperature.
Cs
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Ts Ts k t z z
(14)
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where Cs is the soil volumetric heat capacity (Jm-3K-1), and k is the soil thermal conductivity
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(Wm-1K-1). Cs is calculated following Flerchinger and Saxton (1989) and k is calculated
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following Jonhansen (1975) which considering the soil water content.
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2.2 Carbon assimilation
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Photosynthesis The photosynthetic rate can be obtained by both empirical and physical
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models. In this coupled model, the photosynthetic rate is calculated for C3 and C4 species 10
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based on Farquhar et al. (1980) and Collatz et al. (1991, 1992), respectively. The
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photosynthetic rate is calculated for both sunlit and shaded leaves at the canopy scale
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following De Pury and Farquhar (1997). For both kinds of leaves, the net photosynthetic (A)
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rates are limited by Rubisco-limited photosynthesis (Av), electron transport-limited
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photosynthesis (Ae), export-limited carboxylation (for C3 species) or PEP-carboxylase-limited
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carboxylation (for C4 species) (As), and dark respiration (Rd) as follows:
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A min Av , Ae , As Rd
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The units of all the terms in the above equation are mol m-2s-1. In the equation, Av, Ae and As
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are calculated as follows:
218
219
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ci (C3 ) Vc max c K 1 o / K Av i c i o V (C4 ) c max J ci Ae 4 ci 2 Q par
(C3 )
(15)
(16)
(17)
(C4 )
(C3 ) 0.5Vc max As 3 4 10 Vc max ci (C4)
(18)
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where Vcmax is the photosynthetic Rubisco capacity (mol m-2s-1), ci and oi are the intercellular
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CO2 and oxygen (O2) concentrations, respectively (mol mol-1). Kc and Ko are the
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Michaelis-Menten constants of Rubisco for CO2 and O2, respectively (mol mol-1). is the
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CO2 compensation point of photosynthesis (mol mol-1). J is the electron transport rate (mol
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m-2s-1). is intrinsic quantum efficiency (mol CO2 mol-1), and Qpar is the absorbed
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photosynthetically active radiation (mol m-2s-1).
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Stomatal conductance Stomatal behavior is a controlling factor for both transpiration
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and photosynthesis. Stomatal conductance is influenced by both plant physiology and the 11
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surrounding weather conditions. Following Leuning (1995) and Wang and Leuning (1998),
230
the relationship between the photosynthesis rate and stomatal conductance is as follows:
g s g0
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a1 f sm A cs 1 Ds / D0
(19)
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A g c ca ci
(20)
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g c 1 1.56 g s1 1.37 gb1 g a1
(21)
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where gs, g0, gb, and ga are the bulk stomatal, residual, boundary and aerodynamic
235
conductance for water vapor, respectively (mol m-2s-1), gc is the total conductance for CO2
236
from the intercellular level to the reference source height above the canopy (mol m-2s-1). a1
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and D0 (Pa) are empirical parameters, cs and ca are the CO2 concentrations at the leaf surface
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and source height above the canopy, respectively (mol mol-1). Ds is the vapor pressure
239
deficit (Pa), and fsm is the effect of soil water content on stomatal conduction, which is
240
simulated using an empirical function (Wang and Leuning, 1998). In this study, the stomata
241
model and photosynthesis model are coupled to simulate photosynthesis and stomatal
242
conductance by solving equations (14) to (19) iteratively until convergence. For the accuracy
243
of the simulation, the stomata model and photosynthesis model should be run at sub-daily
244
timestep.
245
2.3 Biogeochemical cycles
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Carbon cycle In the CASACNP model, there are nine carbon pools consist of three plant
247
pools: leaf, root and wood, three litter pools: structural, metabolic and coarse woody and three
248
soil organic pools: microbial biomass, slow and passive pools. The carbon is transferred from
249
plant pools to litter pools and from litter pools to soil pools. Meanwhile carbon is also
250
turnover among different pools in litter and soil pools individually. The major equations of 12
251
carbon cycle are as followings (Wang et al., 2010):
dCi ac ,i Fc i Ci , i leaf,wood or root dt
252
253
254
dC j dt
(22)
b j ,i i Ci mn j C j j metabolic, structural or coarse woody (23) i
dCk ck , j mn j C j d k ,kk kk Ckk k Ck , kk k , dt j kk k microbial, slow or passive, ac ,i 1, b j ,i 1 i
(24)
j
255
Where C is pool size (g C m-2) and is turnover rate (d-1) with the subscript i, j and k
256
denoting for plant, litter and soil, respectively. Fc is the net primary productivity (NPP) and
257
ac,i is the fraction of NPP allocated to three plant pools. bj,i is the fraction of carbon from plant
258
pool i to litter pool j and ck,j is the fraction of carbon from litter pool j to soil pool k. dk,kk is the
259
fraction of carbon from soil pool kk to soil pool k. mn is the limitation of nitrogen on litter
260
decomposition. Leaf area index (LAI) is simulated by the function of carbon storage in leaf:
261 262
LAI SLA0 Cleaf
(25)
where SLA is the leaf specific area (m2 gC-1).
263
Phenology Phenology dynamics are an important component when relating carbon
264
modeling and ecosystem function (Parmesan and Yohe, 2003). Phenology dynamics,
265
including the time of budburst and blossom of different species are measured and simulated
266
and have been widely used to study responses to climate change at different site. However,
267
individual phenology dynamics can only work well at the local scale and for a few kinds of
268
vegetation and do not satisfy the differences for different ecosystems (Zhang et al., 2006).
269
According to Moulin et al. (1997) and Zhang et al. (2006), using vegetation index
270
measurements can be an alternative approach to identify vegetation phenology. With this
13
271
approach, phenology is divided into four phases by greenness, which is quantified using a
272
vegetation index: (1) greenup: the date of onset of greenness increase; (2) maturity: the date
273
when greenness reaches the maximum degree (3) senescence: the date when greenness begins
274
to decrease; (4) dormancy, the date when greenness is lowest. In this study, the phenology
275
characteristics are derived from the remote sensing observations by Zhang et al. (2006). In
276
different phenology phases, the allocations of NPP to plant pools differ. In phase 1, the
277
fraction of NPP allocated to leaf is set to 0.8, root is 0.1, and wood is 0 and 0.2 respectively
278
for woody and non-woody vegetation. In phase 2, the fractions of allocation are constant but
279
vary between different vegetation types, and the values follow Fung et al. (2005). During
280
phases 3 and 4, the fraction of allocation to leaf is set to 0 and the allocation coefficient in
281
phase 2 is allocated to wood and root.
282
3. Sites and model initialization
283
3.1 Sites dataset
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This research was performed in the Loblolly Pine (LP) site and Open Field (OF) site in
285
the Blackwood Division of the Duke Forest near Durham, North Carolina (35.98N,
286
79.09W). This area has a moderate climate with warm and humid summers and mild winters.
287
The mean annual precipitation is approximately 1117.6 mm and is well distributed throughout
288
the year. The mean annual temperature ranges from 21.7 C to 9.0 C in the growing and
289
nongrowing seasons, respectively. The soils are low-fertility acidic Hapludalf in the Enon
290
Series, with clay loam in the upper 0.3 m and clay below down to the bedrock at 0.7 m.
291
In the LP site, the surrounding dominant stand is a uniform-age loblolly pine forest that
292
was planted in 1983. The understory is diverse and includes more than 26 species dominated
14
293
by sweetgum, red maple, winged elm and flowering dogwood, which utilize the C3
294
photosynthesis pathway. The growing season occurs from March to mid-October and the leaf
295
area index ranges from 2.0 to 5.0 in all phases. In the OF site, the dominant stand is the C3
296
grass Festuca arundinacea shreb, and few plants use the C4 photosynthesis pathways. The leaf
297
area index ranges from 1.0 to 3.0 in all growth phases. It should be noted that the field is
298
mowed once or twice each summer since 1992.
299
Information of the two sites is shown in Table 1.
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301
Place Table 1 here
302
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303
The data used in this study were downloaded from the AmeriFlux Site and Data
304
Exploration System at the site http://ameriflux.ornl.gov/. The LP site is equipped with seven
305
20 m aluminum walkup towers. The flux and radiation instruments are set at 20 m from the
306
ground surface and other instruments such as temperature probe are set at 20 m and relative
307
humidity probe is set at 7 m. The OF site is equipped with 4.8 m walkup towers and the eddy
308
covariance flux observation system is set at 2.8m. The meteorological data including
309
precipitation, atmospheric pressure, air temperature, relative humidity, wind speed, and
310
incoming solar radiation at 30 min time step are used to drive the coupled model to simulate
311
the water, energy and carbon fluxes. Other meteorological data, such as the net radiation,
312
sensible heat, latent heat, and evapotranspiration and biological data, such as gross primary
313
productivity are used to validate the model.
314
The “goodness” of energy balance closure (i.e. net radiation equals the sum of the sensible
15
315
heat, latent heat and ground heat flux) is an indicator of observed data quality. Because the
316
ground heat flux was not available, therefore, the observed net radiation is compared to the
317
sum of the sensible heat and latent heat, as shown in Fig.2. The correlation coefficients are
318
0.76 and 0.91 for the LP site and OF site, respectively. The average relative error of energy
319
ARE 6.2Wm-2 and 15.2Wm-2 for the two sites.
320
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321
Place Fig.2 here
322
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323
3.2 Model initialization
324
In order to get more accurate water, energy and carbon fluxes at higher time resolution,
325
the simulation is conducted at a time step of 30 minutes using half-hourly measured
326
meteorological data including air pressure, temperature, vapor pressure, wind speed,
327
precipitation, and downward short and long wave radiation to drive the coupled model. The
328
CO2 concentration is dynamically set during the simulation periods using the measured
329
ambient CO2 concentration above the vegetation. The average ambient CO2 concentration is
330
about 375 ppmv.
331
The main parameterization of the model consists of soil physical parameters, runoff
332
parameters, eco-physiological and biogeochemical parameters. The key parameters for the
333
simulation are listed in Table 2. The soil physical parameters are based on the United States
334
Department of Agriculture (USDA) classification system. The soil moisture and temperature
335
are calculated for 50 layers from the ground surface to a depth of 2 m. Most of the
336
eco-physiological and biogeochemical parameters are according to the previous studies. In
16
337
this study, we mainly calibrate the runoff, photosynthetic and stomatal conductance
338
parameters manually.
339
To evaluate the model performance, the total root mean square error (RMSE), mean bias
340
error (MBE), and coefficient of determination (r2) are used. The lower of the values of MBE
341
and RMSE, and the higher of the values of r2 near 1.0, the better the model performs.
342
-------------------------------------------------------------------------
343
Place Table 2 here
344
-------------------------------------------------------------------------
345
4. Results
346
4.1 Diurnal cycle of energy fluxes
347
Ten-day time series of the diurnal cycle of simulated and observed net radiation (Rn),
348
latent heat (LE) and sensible heat (H) in the two ecosystems are shown in Fig.3. Results show
349
that the energy is mostly used in the form of evaporative flux and the LE is much greater than
350
H for the two sites. The coupled model simulates the magnitude and pattern of diurnal cycle
351
for Rn, LE and H relatively well for both the two sites, and extremely well for Rn. The
352
simulated Rn captures the diurnal variation quite well agree with the observation, while Rn is
353
overestimated at noon in some days with the maximum error of 61.82 Wm-2. The LE is also
354
simulated quite well except for some errors at noon and overestimation after 6:00 pm. The H
355
is not modeled as satisfactorily as LE. In some of the days, the H is overestimated or
356
underestimated at noon and the maximum bias is around 50%. The simulation error of H
357
may be related to the estimation of canopy and ground surface temperature for the reason that
358
H is determined by the difference of air temperature and canopy or ground surface
17
359
temperature. Besides, the energy imbalance of flux measurements may also contribute to
360
some bias in the simulation. Mo et al. (2012) indicate that the possible reason is that the
361
sensible heat is usually fluctuates irregularly over canopy and less efficient to capture its
362
variation. The simulated Rn is not imbalance with the combination of simulated LE and H. The
363
possible reason is that the residual energy is partitioned into soil heat flux which increases the
364
soil temperature and the overestimated Rn due to low albedo.
365
-------------------------------------------------------------------------
366
Place Fig.3 here
367
-------------------------------------------------------------------------
368
The half-hourly values of observed energy fluxes are compared with the simulated
369
values by the coupled model in the LP and OF sites shown in Fig.4. In the LP site, results show
370
that net radiation is predicted quite satisfactorily. Comparing to the observed Rn, the MBE is
371
10.15 Wm-2. The r2 between the observed and simulated series is quite high with the value of
372
0.99 and the RMSE value is 56.08 Wm-2. For the heat components, the MBE is -0.34 Wm-2 for
373
the simulated mean LE with the RMSE value 40.18 Wm-2, while the r2 value is a little lower
374
than that of Rn with the value about 0.93. The sensible heat H is modeled not as well as the
375
LE. The MBE is about 1.78 Wm-2 and the r2 and RMSE values are 0.90 and 45.47 Wm-2,
376
respectively.
377
In the OF site, the coupled model performs quite well in simulating Rn and LE, while H is
378
not simulated as well as the other two fluxes. The MBE of Rn is 8.86 Wm-2 comparing to the
379
observed value. The r2 value is 0.99 and the RMSE value is 34.52 Wm-2. For the heat
380
components, the simulated LE is also generally consistent with the observation with a low
18
381
MBE value of -13.85 Wm-2, the r2 value is 0.92 and the RMSE value is 40.26 Wm-2.
382
Comparing to the observation, the MBE of the simulated H is higher with a value of 30.35
383
Wm-2, while the r2 value is 0.94 and the RMSE value is 43.43 Wm-2.
384
-------------------------------------------------------------------------
385
Place Fig.4 here
386
-------------------------------------------------------------------------
387
4.2 Diurnal cycle of net ecosystem exchange
388
The coupled model simulates the carbon fluxes of photosynthesis, plants including leaf,
389
wood and root respiration and litter and soil respiration. For the lack of the detail observation,
390
The half-hourly values of observed gross primary production (GPP) and net ecosystem
391
exchange (NEE) are compared with the simulated values by the coupled model in the LP and
392
OF sites shown in Fig.5.
393
In the LP site, the MBE value between simulated and observed NEE is -0.43 mol C
394
m-2s-1, the r2 and RMSE are 0.76 and 5.54 mol C m-2s-1, respectively. The MBE for the
395
simulated GPP is 2.90 mol C m-2s-1, and the r2 and RMSE are 0.83 and 6.25 mol C m-2s-1,
396
respectively. In the OF site, the MBE is higher than that of LP site, and the value is -1.47
397
mol C m-2s-1, the r2 and RMSE are 0.88 and 2.68 mol C m-2s-1, respectively. For GPP, the
398
MBE is lower than that of LP site with the value of 1.74 mol C m-2s-1, the r2 value is 0.89
399
and the RMSE value is 3.57 mol C m-2s-1.
400
As shown in Fig.5, the agreement between the simulation and observation of NEE and
401
GPP is generally satisfactory. From the results of NEE, we can see it is underestimated in the
402
night which is due to the bias of the simulation of respiration, which was reported in numbers
19
403
of studies (Baldocchi, 1997, Baldocchi, 2003). For GPP, it is overestimated in the daytime,
404
especially at noon in the OF site. This may be due to the overestimation of observed solar
405
radiation for photosynthesis.
406
-------------------------------------------------------------------------
407
Place Fig.5 here
408
-------------------------------------------------------------------------
409
4.3 Diurnal cycle of evapotranspiration
410
Evapotranspiration (ET) including transpiration, soil evaporation and canopy interception
411
evaporation are simulated and the comparisons of the results to observed evapotranspiration
412
are shown in Fig.6. In the LP site, the MBE is 0.01mm, the r2 and RMSE between predicted
413
and observed ET series are 0.95 and 0.02 mm, respectively. In the OF site, the MBE value is
414
-0.01mm. The r2 and RMSE comparing the simuated and observed ET series are 0.92 and
415
0.03mm, respectively. The results indicate that the model could capture the ET diurnal
416
variation quite well.
417
Fig.6 also shows that the coupled model overestimates ET at noon in some days, which
418
maybe relating to a higher absorption simulation of solar radiation or lower canopy resistance
419
for water flux.
420
-------------------------------------------------------------------------
421
Place Fig.6 here
422
-------------------------------------------------------------------------
423
-------------------------------------------------------------------------
424
Place Table 3 here
20
425
-------------------------------------------------------------------------
426
4.4 Seasonal cycle of energy fluxes
427
Fig.7 shows the seasonal cycle of daily averaged energy fluxes in the LP site. The
428
agreement between predicted and observed Rn is quite good with a small RMSE value of
429
17.01 Wm-2, MBE value of 2.36 Wm-2 and a high r2 value of 0.97. The simulated Rn is lightly
430
overestimated with a 2.31% bias. The seasonal variation in Rn throughout the whole year
431
indicates that the variations of observed and simulated values are quite consistent. The
432
performances of LE and H are not as good as Rn , while LE is simulated better than H. The
433
MBE between the simulation and observation of LE and H are -1.75 Wm-2 and 11.52 Wm-2,
434
respectively. The RMSE values for the two energy components are 15.02Wm-2 and
435
25.07Wm-2 respectively and the r2 values are 0.94 and 0.70 respectively. Fig.7 also shows that
436
LE is generally overestimated in nongrowing season, while it underestimated in the growing
437
season. As less energy is allocated to LE in the simulation, H is overestimated particularly
438
from August to October.
439
-------------------------------------------------------------------------
440
Place Fig.7 here
441
-------------------------------------------------------------------------
442
Fig.8 shows the seasonal cycle of daily averaged energy fluxes in the OF site. The
443
seasonal simulated Rn is also quite consistent with the observation with a small RMSE value
444
of 11.80 Wm-2, a high r2 of 0.98 and MBE value of 5.30 Wm-2. The simulation of LE and H is
445
also relatively well during the period. Comparing to the observed LE, the MBE is -5.51 Wm-2,
446
the r2 is 0.84 and RMSE value is 19.18 Wm-2. For the sensible heat H, the MBE is 15.77
21
447
Wm-2, the r2 is 0.75 and RMSE value is 21.65 Wm-2. Fig.8 also shows LE is generally
448
underestimated in non-growing season but overestimated during August to October, while H
449
is generally overestimated during the simulation period.
450
-------------------------------------------------------------------------
451
Place Fig.8 here
452
-------------------------------------------------------------------------
453
4.5 Seasonal cycle of net ecosystem exchange
454
Fig.9(a) and Fig.9(b) presents the comparison of daily observed and simulated GPP and
455
NEE in the LP site. The MBE is -0.03mol C m-2s-1 comparing to the observed GPP values.
456
The r2 and RMSE are 0.86 and 1.68 mol C m-2s-1, respectively. The MBE value is -1.56mol
457
C m-2s-1 between simulated and observed NEE. The r2 and RMSE are 0.62 and 1.81 mol C
458
m-2s-1, respectively.
459
The comparison of daily observed and simulated GPP and NEE in the OF site are shown
460
in Fig.9(c) and Fig.9(d). The MBE of simulated and observed GPP is -0.31mol C m-2s-1. The
461
r2 is relatively lower than that of LP site with the value of 0.83, while the RMSE value is 1.23
462
mol C m-2s-1. Compare of the simulated and observed mean NEE, the MBE is -0.15mol C
463
m-2s-1, the r2 value is 0.64 and the RMSE value is 1.27 mol C m-2s-1, respectively.
464
From the results, the model could capture the transition between the carbon source and
465
carbon sink quite well with a good agreement with the observation except for some large
466
errors in certain month. In January and March, NEE at the LP site is underestimated which
467
may relate to the underestimation of soil temperature and soil moisture that stressed NEE,
468
which has been well known in forest ecosystem (Ohta et al., 2008), while in October,
22
469
November and December, the NEE is overestimated is also related to the overestimation of
470
soil moisture that reduce the stress on NEE. In addition, uncertainties in the plant physiology
471
and soil carbon parameters would also bring errors in the simulated NEE. Generally, NEE in
472
the OF site is underestimated in nongrowing season and overestimated in the growing season.
473
-------------------------------------------------------------------------
474
Place Fig.9 here
475
-------------------------------------------------------------------------
476
4.6 Seasonal cycle of evapotranspiration
477
The variations of daily simulated and observed evapotranspiration in the two sites are
478
shown in Fig.10. In the LP site, the MBE between the simulated and observed ET is 0.11mm
479
and the r2 and RMSE values are 0.94 and 0.48 mm, respectively. The comparison between
480
observed and simulated ET series show overestimation in non-growing season and
481
underestimation in growing season. In the OF site, the MBE for ET is -0.02mm, the r2 and
482
RMSE values are 0.90 and 0.51 mm, respectively. Different from the LP site, the seasonal
483
changes show the ET is underestimated in nongrowing season and overestimated in growing
484
season. The bias of the simulation of ET may be attributed to the estimation stomatal
485
conductance, LAI and soil resistance.
486
-------------------------------------------------------------------------
487
Place Fig.10 here
488
-------------------------------------------------------------------------
489
4.7 Soil moisture and soil temperature
490
The simulation of soil moisture and soil temperature is important for determining the
23
491
water and carbon budgets such as evapotranspiration and soil respiration. The simulated soil
492
moisture and temperature at different soil depths in the two sites are shown in Fig.11. From
493
the results, the most sensitive soil layers are in the upper 0.3 m. The soil moisture and
494
temperature changes exhibit a time lag as the soil depth increases.
495
The seasonal changes of soil moisture 30cm and soil temperature Ts,30cm in 30cm depth at
496
daily time step for the two sites are shown in Fig. 12. The results show that the simulation for
497
soil moisture and temperature are quite effective for the two sites. In the LP site, the MBE
498
values are about -0.01 m3 m-3 and -0.39 C, the RMSE values are also small at 0.03 m3 m-3 and
499
1.91 C, and the r2 values are 0.90 and 0.99, respectively. In the OF site, the MBE values are
500
about -0.03 m3 m-3 and -0.47 C, the r2 values are 0.92 and 0.99, the RMSE values are also
501
small at 0.08 m3 m-3 and 2.02C, respectively.
502
In the two sites, 30cm is underestimated during January, February and March, which is
503
related to the bias of simulation of evapotranspiration and runoff in these months from the
504
perspective of water balance. In addition, the heterogeneity in the soil structure and physical
505
properties also result in complex distributions of soil water (Cuenca et al., 1997) which
506
increase the uncertainties of soil moisture simulation. There is a satisfactory agreement
507
between the observed and simulated Ts,30cm from March to October. In other months, Ts,30cm is
508
underestimated especially in January and February. The maximum error is -6.1C, which
509
result in less soil respiration and may be the reason for the underestimation of NEE. Overall,
510
the model reasonably captures the variations in soil moisture and temperature.
511
-------------------------------------------------------------------------
512
Place Fig.11 here
24
513
-------------------------------------------------------------------------
514
-------------------------------------------------------------------------
515
Place Fig.12 here
516
-------------------------------------------------------------------------
517
-------------------------------------------------------------------------
518
Place Table 4 here
519
-------------------------------------------------------------------------
520
5. Discussion
521
5.1 Sensitivities to parameters
522
In general, the coupled model could simulate the water, energy and carbon fluxes well over
523
the period in this study. However, previous study (Baldocchi and Wilson, 2001; Kothavala et
524
al., 2005) argues that despite close agreement between simulated and measured data, one
525
cannot claim complete success of the model for the reason that there may be numerous
526
sources of errors including errors in the model parameters, the forcing variable, inadequate
527
representation of physical processes and the flux underestimation problem. Therefore, the
528
coupled model needs to be investigated to further analyze the applicability. In this section, the
529
model sensitivities to the parameters due to parameterization are analyzed.
530
The mono-factor analysis is used to analyze the sensitivities of ET, GPP and net
531
ecosystem production (NEP, NEP=-NEE) to certain parameters, i.e. the analyzed parameter is
532
selected in a reasonable range from the lower value to upper value while other parameters are
533
fixed. The analyzed parameters are shown in Table 1. The sensitivities of ET, GPP and NEP
534
to the main runoff, photosynthetic and stomatal conductance parameters including g1, g2,
25
535
Vcmax, Jmax, and a1 are shown in Fig.13. The results shown that while g1 varies from 0 and 1,
536
the total ET and GPP changes about 1.3% and 4.6%, while the total NEP shows a big change.
537
The runoff parameter g2 varies from 0 to 1, the total ET, GPP and NEP all show small
538
changes lower than 5%. The photosynthetic parameter Vcmax varies between 50 and 150, all
539
the three elements show small changes, however, the photosynthetic parameter Jmax varies
540
from 50 to 100 could result in large changes for ET about 17.4% and GPP about 37.3%,
541
especially for NEP nearly six times higher. The stomatal conductance parameter changes
542
from 0.05 to 0.2 could also result in large changes approximately 131%, 287% and 126% for
543
ET, GPP and NEP, respectively. The parameter a1 ranges between 15 to 18 could result in
544
6.8%, -2.0% and 6.9% changes for ET, GPP and NEP, respectively. The results above show
545
that the water and carbon fluxes are quite sensitive to plant physiological controls such as the
546
maximum electron transport rate, quantum efficiency of electron transport and runoff
547
parameter.
548
-------------------------------------------------------------------------
549
Place Fig.13 here
550
-------------------------------------------------------------------------
551
5.2
Anaysis of water use efficiency (WUE)
552
Water use efficiency (WUE), the ratio of water loss to carbon gain, is a key characteristic
553
of ecosystem function that is central to the water, energy and carbon cycles (Beer et al. 2009).
554
WUE is defined as the ratio of photosynthesis and transpiration rates. The relationships
555
between photosynthesis and transpiration are investigated firstly. Fig.14 shows the
556
relationship between photosynthesis and transpiration in the LP and OF sites. The results
26
557
show a close relationship between the two elements with high correlation coefficients of
558
0.9742 and 0.9259, respectively. The photosynthesis increases and reaches a convergence as
559
the increase of transpiration at both sites.
560
-------------------------------------------------------------------------
561
Place Fig.14 here
562
-------------------------------------------------------------------------
563
Fig.15 shows the WUE in diurnal and seasonal changes for the two sites. The diurnal variation
564
of the WUE at half-hourly time step shows a U-bend curve in Fig.15(a). In the night time,
565
WUE is zero without carbon assimilation. It reaches a peak value after the sunrise and then
566
reduces to a valley value at noon; after that it increases and reaches another peak value which
567
is mostly lower than the peak value in the morning. This is due to the reason that changing
568
rate of transpiration is faster than that of photosynthesis. Fig.15(b) shows that seasonal
569
variation of the daily WUE with the values mostly between 5~10 mmol C/mol H2O. The results
570
show that the WUE reduces firstly and then increases around July, indicating a high value in
571
winter and a low value in summer, showing an opposite changing trends of temperature,
572
evapotranspiration and net radiation. Comparing of the two sites in Fig.16, generally, the
573
WUE is higher in the Loblolly Pine site than that of the Open Field site, which indicates a
574
higher water use efficiency of forest ecosystem than grass ecosystem.
575
-------------------------------------------------------------------------
576
Place Fig.15 here
577
-------------------------------------------------------------------------
578
-------------------------------------------------------------------------
27
579
Place Fig.16 here
580
-------------------------------------------------------------------------
581
5.3 Comparisons of water, energy and carbon fluxes over the two sites
582
Comparisons of water, energy and carbon fluxes over the LP site and OF site are shown
583
in Fig.17. The hydrological components in the LP site and OF site including transpiration
584
(Tr), evaporation from canopy intercepted water (Ec), soil evaporation (Es) and surface runoff
585
(Rs) are shown in Fig.17(a) and Fig.17(b), respectively. Total surface runoff and soil
586
evaporation in the OF site are much higher than those in the LP site, while transpiration and
587
the total ET in the LP site is much higher than that in the OF site.
588
Fig.17(c) and Fig.17(d) are the energy components including sensible (H) and latent heat
589
(LE) fluxes, soil heat flux (G) in the LP site and OF site, respectively. The LE in the LP site is
590
higher than that in the OF site, which is caused by the higher evapotranspiration absorbing
591
more heat in the LP site. Correspondingly, the H is higher in the OF site from the perspective
592
of energy balance. Th soil heat fluxes have small differences in the two sites are. The monthly
593
variances of soil heat fluxes show that during September to January, the soil heat flux are
594
negative which indicating a output heat to the air.
595
Fig.17(e) and Fig.17(f) are the carbon fluxes including ecosystem respiration (RE) and
596
net ecosystem production (NEP, NEP=-NEE, GPP=NEP+RE) in the LP site and OF site,
597
respectively. Positive value of NEP indicates carbon sink and the negative value indicates
598
carbon source. From the results, we can find that the total GPP and RE are higher in the LP
599
site than those in the OF site. The LP site ecosystem are almost carbon sink during the whole
600
year, while in the OF site, it shows a carbon source during May to September.
28
601
-------------------------------------------------------------------------
602
Place Fig.17 here
603
-------------------------------------------------------------------------
604
5.4 Comparisons between coupled model with single models
605
In order to validate the importance of the coupling of hydrological processes and
606
biogeochemical processes, comparisons of the simulation of water, energy and carbon fluxes
607
by coupled model and single model are conducted to analyze the improvement of the coupled
608
model. The Loblolly Pine site is taken as the example in this section. Results of the single
609
model simulation (SIM-S) and the coupled model simulation (SIM-C) are compared and
610
analyzed. The comparisons of simulated evapotranspiration (ET), soil moisture and GPP,
611
which are three main elements of water carbon cycles, are conducted by the SIM-S and
612
SIM-C.
613
Fig.18 shows the comparisons of simulated ET, soil moisture and GPP by SIM-S and
614
SIM-C via observed values. The results show that the simulated ET and GPP are
615
overestimated about 35.7% and 29.6%, while soil moisture is underestimated about 10.3% by
616
SIM-S. And the relative error reduce to 5.6%, 0.6% and 2.7% for ET, GPP and soil moisture
617
by SIM-C. The r2 between simulated and observed values of ET, GPP and soil moisture by
618
SIM-S are 0.83, 0.75 and 0.82, respectively. And the r2 values increase to 0.94, 0.86 and 0.90
619
by SIM-C. The RMSE between simulated and observed values of ET, GPP and soil moisture
620
by SIM-S are 1.2mm, 2.9 mol C m-2s-1 and 0.06 m3 m-3, respectively. And the RMSE values
621
reduce to 0.48mm, 1.68 mol C m-2s-1 and 0.03 m3 m-3 by SIM-C. The MBE between
622
simulated and observed values of total ET, GPP and soil moisture by SIM-S are 0.72mm, 1.7
29
623
mol C m-2s-1 and 0.04 m3 m-3, respectively. And the MBE values reduce to 0.11mm, -0.03
624
mol C m-2s-1 and -0.01m3 m-3 by SIM-C. From the results above, we find that the coupled
625
model could improve the performances in simulating water and carbon fluxes obviously than
626
the single models. The main reason is that the coupled model could characterize the
627
relationship of transpiration and photosynthesis. The single model could not capture the
628
effects of stomatal behavior on evapotranspiration and evapotranspiration is mainly estimated
629
via climate conditions and soil moisture without considering the vegetation effects.
630
Meanwhile, the effects of land surface hydrological processes on carbon assimilation could
631
also not be considered in the single model, which would also bring systematic error in
632
simulating the carbon flux.
633
-------------------------------------------------------------------------
634
Place Fig.18 here
635
-------------------------------------------------------------------------
636
6. Conclusions
637
The hydrological cycle and vegetation dynamics/carbon cycle interact strongly with
638
each other. We developed a physical process-based model by coupling a hydrological model
639
(DTVGM) and a biogeochemical model (CASACNP) to simulate the water, energy and
640
carbon fluxes and analyze their relationships over two different ecosystems. The coupled
641
model DTVGM-CASACNP is tested well at both sites. The results show that the coupled
642
model could simulate net radiation, latent and sensible heat fluxes, evapotranspiration, GPP,
643
NEE, soil moisture and soil temperature quite well at both the diurnal and seasonal scales by
644
comparing the measured and simulated water, energy and carbon fluxes. Sensitivity analysis
30
645
illustrates that evapotranspiration, GPP, net ecosystem production are quite sensitive to plant
646
physiological controls such as the maximum electron transport rate, quantum efficiency of
647
electron transport and runoff parameter. The coupling characteristics of water and carbon
648
cycles are also investigated by analyzing the water use efficiency (WUE) at different time
649
scales and the water, energy and carbon fluxes are compared over the two ecosystems.
650
Since the complexity of the hydrological and ecological processes, the coupled model
651
still needs to be further improved by including the phenology and dynamic root growth at
652
different soil depths etc. Parameterization is still need to be further investigated for the
653
applications of the coupled model. In addition, the coupled model is only tested at two sites,
654
the results obtained in this study may not represent sites with different environment
655
conditions. At other sites and regional verification is still need to be conducted over different
656
ecosystems in further studies.
657
Acknowledgements
658
This study was supported by National Natural Science Foundation of China (No. 51809008),
659
the Fundamental Research Funds for the Central Universities, South-Centtral University for
660
Nationalities(CZY18042), Hubei Provincial Natural Science Foundation of China
661
( 2018CFB123), Geology and Mineral Resources Survey Project: Ecological Configuration
662
and Global Strategy of China Water Resources (DD20190652). We acknowledge the Duke
663
Forest-Loblolly Pine and Duke Forest-Open Field sites of AmeriFlux for the data to test the
664
coupled model.
665
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812
Abstract: Understanding the mechanism of the interactions between vegetation dynamics and the
813
water cycle is rather important for determining global and regional water and carbon budgets. In
814
this paper, a physically-based model integrating land-surface hydrological and biogeochemical
815
processes by coupling a hydrological model and a biogeochemical model is developed to simulate
816
the water, energy and carbon fluxes. The model is validated against observed biometric,
817
eddy-covariance flux, soil moisture and temperature data over two different ecosystems. Results
818
show that the model could simulate the vegetation physiological and hydrological processes
819
satisfactorily including net radiation, latent heat, gross primary production (GPP), net ecosystem
820
exchange
and
soil
moisture
and
temperature.
38
Sensitivity
analysis
illustrates
that
821
evapotranspiration, GPP, net ecosystem production are quite sensitive to plant physiological
822
controls such as the maximum electron transport rate, quantum efficiency of electron transport and
823
runoff parameter. Moreover, results show that a close relationship between photosynthesis and
824
transpiration. Water use efficiency shows a U-bend curve at different time steps and it also
825
indicates a higher value in forest ecosystem than that of grass ecosystem. In the forest ecosystem,
826
evapotranspiration is higher and the surface runoff is lower. Meanwhile it is almost carbon sink
827
during the whole year, while in the grass ecosystem, it shows a carbon source during May to
828
September. This study could provide an effective model for the simulation of water-carbon cycles.
829 830 831
Declaration of interests
832 833 834
☒ The authors declare that they have no known competing financial interests or personal relationships that could have appeared to influence the work reported in this paper.
835 836 837
☐The authors declare the following financial interests/personal relationships which may be considered as potential competing interests:
838 839 840 841 842 843
Figure captions
844
Fig.1 Schematic of the coupled DTVGM-CASACNP model
39
845
Fig.2 Comparisons of observed net radiation and the sum of latent heat and sensible heat in the LP
846
(a) and OF (b) sites
847
Fig. 3 Time series of simulated net radiation, Rn (black line), latent heat LE (dash line), sensible
848
heat H (dot line) and observed Rn (diamonds), LE (squares) and H (circles) in the LP and OF sites
849
Fig. 4 Simulated vs. observed net radiation , latent heat, sensible heat in the LP and OF sites
850
Fig. 5 Time series of simulated and observed GPP and NEE in the LP and OF sites
851
Fig. 6 Time series of simulated ET (black line) and observed ET (circles) in the LP and OF sites
852
Fig. 7 Time series of simulated and observed daily net radiation, Rn (a), latent heat LE (b),
853
sensible heat H (c) in the LP site
854
Fig. 8 Time series of simulated and observed daily net radiation, Rn (a), latent heat LE (b),
855
sensible heat H (c) in the OF site
856
Fig. 9 Time series of simulated and observed daily GPP and NEE in the LP and OF sites
857
Fig. 10 Time series of simulated and observed daily ET in the LP and OF sites
858
Fig. 11 Simulated soil moisture and temperature at different soil depth in the LP and OF sites
859
Fig. 12 Time series of simulated and observed soil moisture and temperature in the LP and OF
860
sites
861
Fig. 13 Sensitivities of total accumulated ET, GPP and NEP to model key parameters
862
Fig.14 Relationships between transpiration (Tr) and photosynthesis (An) in the LP (a )and OF (b)
863
Fig.15 Diurnal and seasonal changes of WUE in the LP and OF sites
864
Fig.16 Comparison of the WUE in the LP and OF sites
865
Fig.17 Comparisons of water, energy and carbon fluxes in the LP and OF sites
866
Fig.18 Comparisons of ET, Soil moisture and GPP by SIM-S and SIM-C
40
867 868
Highlights:
869
developed
870 871
Water, energy and carbon fluxes are simulated satisfactorily by the coupled model
872 873
A coupled hydrological and biogeochemical model (DTVGM-CASACNP) is
Water and carbon fluxes are sensitive to maximum electron transport rate, quantum efficiency of electron transport and runoff parameter
874 875
Water use efficiency of forest ecosystem is higher than that of grass ecosystem
876
Coupled model could improve the performances of the simulation of water and
877
carbon fluxes than single models
878 879
Table 1 Descriptions of the two types of ecosystem sites Description
Loblolly Pine site
Open Field site
Latitude, Longitude
35.9782, -79.0942
35.9712, -79.0934
Elevation (m)
163
168
Vegetation IGBP
ENF (Evergreen Needleleaf Forests)
GRA (Grasslands)
Dominant stand
loblolly pine forest
Festuca arundinacea shreb
photosynthesis
C3
C3, a few C4
Canopy height
19.0
0.1~1.0
Leaf Area Index
2.0~5.0
1.0~3.0
880
41
881 882
Table 2 The key parameters in the coupled DTVGM-CASACNP model Description
LP site
OF site
runoff parameter, g1
0.2
0.5
runoff parameter, g2
0.95
0.5
Photosynthetic Rubisco capacity, Vcmax (mol m-2s-1)
81
65
maximum electron transport rate, Jmax (mol m-2s-1)
75
50
quantum efficiency of electron transport, (mol electrons mol-1)
0.20
0.20
Parameter related to the intercellular CO2 concentration, a1
18
16
Parameter for stomatal sensitivity to vapor pressure, D0 (Pa)
1250
1250
Plant respiration, Rm (gC gN-1 day-1)
0.066
0.04
the fraction of NPP allocated to leaf, ac,leaf
0.42
0.30
the fraction of NPP allocated to wood, ac,wood
0.33
0.0
the fraction of NPP allocated to root, ac,root
0.25
0.70
turnover rate of leaf, 1/ leaf (year)
2.0
1.0
turnover rate of wood, 1/ wood (year)
70
1.0
turnover rate of root, 1/ root (year)
18
3.0
saturated volumetric water content (s)
0.45, 0.46
0.54, 0.46
residual volumetric water content (r)
0.07, 0.10
0.07, 0.10
Saturated hydraulic conductivity (mm/day) (Ks)
9.60, 6.15
9.60, 6.15
maximum canopy interception parameter (Kcmax)
1.6
0.0
soil resistance parameter a
3.5
3.5
42
soil resistance parameter b
2.3
2.3
soil resistance parameter c
400
1000
883 884 885
Table 3 The performances of the model
886
in simulating diurnal cycle of water, energy and
carbon fluxes over the two ecosystems LP site
OF site
r2
RMSE
MBE
r2
RMSE
MBE
Rn
0.99
56.08
10.15
0.99
34.52
8.86
H
0.90
45.47
1.78
0.94
43.43
30.35
LE
0.93
40.18
-0.34
0.92
40.26
-13.85
GPP
0.83
6.25
2.90
0.89
3.57
1.74
NEE
0.76
5.54
-0.43
0.88
2.68
-1.47
ET
0.95
0.02
0.01
0.92
0.03
-0.01
887 888 889
Table 4 The performances of the model
890
in simulating seasonal cycle of water, energy and
carbon fluxes over the two ecosystems LP site
OF site
r2
RMSE
MBE
r2
RMSE
MBE
Rn
0.97
17.01
2.36
0.98
11.80
5.30
H
0.70
25.07
11.52
0.75
21.65
15.77
43
LE
0.94
15.02
-1.75
0.84
19.18
-5.51
GPP
0.86
1.68
-0.03
0.83
1.23
-0.31
NEE
0.62
1.81
-1.56
0.64
1.27
-0.15
ET
0.94
0.48
0.11
0.90
0.51
-0.02
Soil moisture
0.90
0.03
-0.01
0.92
0.08
-0.03
Soil temperature
0.99
1.91
-0.39
0.99
2.02
-0.47
891 892
893
44
894
895
45
896
897
898 46
899
900
47
901
902
48
903
904
49
905
906
50
907
908
51
909
910
52