Abstract

Soil moisture is a key state variable in land surface processes. Since field measurements of soil moisture are generally sparse and remote sensing is limited in terms of observation depth, land surface model simulations are usually used to continuously obtain soil moisture data in time and space. Therefore, it is crucial to evaluate the performance of models that simulate soil moisture under various land surface conditions. In this work, we evaluated and compared two land surface models, the Common Land Model version 2014 (CoLM2014) and the Community Land Model Version 5 (CLM5), using in situ soil moisture observations from the Soil Climate Analysis Network (SCAN). The meteorological and soil attribute data used to drive the models were obtained from SCAN station observations, as were the soil moisture data used to validate the simulation results. The validation results revealed that the correlation coefficients between the simulations by CLM5 (0.38) and observations are generally higher than those by CoLM2014 (0.11), especially in shallow soil (0–0.1016 m). The simulation results by CoLM2014 have smaller bias than those by CLM5 . Both models could simulate diurnal and seasonal variations of soil moisture at seven sites, but we found a large bias, which may be due to the two models’ representation of infiltration and lateral flow processes. The bias of the simulated infiltration rate can affect the soil moisture simulation, and the lack of a lateral flow scheme can affect the models’ division of saturated and unsaturated areas within the soil column. The parameterization schemes in land surface models still need to be improved, especially for soil simulations at small scales.

Highlights

  • Soil moisture is an important physical variable that expresses land surface states

  • Both Community Land Model Version 5 (CLM5) and CoLM2014 update their own default surface datasets to ated using observations from seven Soil Climate Analysis Network (SCAN) sites located in different parts of the latest version, in order to focus on the parameterization of hydrological processes, the ica

  • We describe the results of our evaluation of the soil moisture simulations of CLM5 and CoLM2014 using observations at seven stations from SCAN

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Summary

Introduction

Soil moisture is an important physical variable that expresses land surface states. It plays a crucial role in the balance of energy and water budgets at the land surface, and it is the medium used for energy and material exchange in land–atmosphere interactions [1]. The three main sources of soil moisture data are: satellite remote sensing, in situ observations, and land surface model simulations. In contrast to in situ and remote sensing observations, model simulations are based on the physical processes and dynamical mechanisms of the land surface and temporally and spatially reflect the continuous changes in state variables. 2016 as atmospheric forcing data to run CLM version 4.5 in the Tibetan Plateau region They simulated the spatial and temporal variation in soil moisture and found that, the simulations were systematically biased compared to in situ observations, the model could reasonably reproduce the spatial distribution and long-term trends of soil moisture [22].

CLM Version 5
CoLM Version 2014
Forcing Data
Validation Data
Experimental Design and Variables Evaluated
Data Processing and Evaluation Metrics
Soil Moisture Time Series Comparison
Simulated
Soil Moisture Simulation Variance Analysis
Diurnal
Anomalies
Conclusions
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