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Process refinement contributed more than parameter optimization to improve the CoLM's performance in simulating the carbon and water fluxes in a grassland

机译:过程细化贡献了超过参数优化,以改善COLM在草地上碳和水通量的性能

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The Common Land Model (CoLM) has been widely used to estimate carbon and water fluxes at site or regional scales, but the model is still underperforming in dryland ecosystems. Our research focuses on the joint analysis of both modifying the model process and using parameter optimization techniques to improve the models performance in a semi-arid grassland ecosystem in Xinjiang, China. The study presents a comparison of the simulated carbon and water fluxes by replacing the root water uptake function (RWUF) of the CoLM and by using particle swarm optimization (PSO) algorithm to optimize the most sensitive parameters. Prior to PSO, the method of Morris one-factor-at-a-time (MOAT) is utilized to screen out parameters that have strong effects on gross primary production (GPP) and latent heat flux (LE) in CoLM. Either modifying the root water uptake process in the CoLM or optimizing model parameters can significantly reduce the biases of the simulated GPP, LE, and water use efficiency (WUE). The coefficient of determination (R-2) with the modified RWUF in the CoLM increases from 0.85 to 0.92 for GPP and from 0.76 to 0.81 for LE. Meanwhile, the root mean square error (RMSE) decreases from 3.57 mu mol m(-2) S-1 to 2.78 mu mol m(-2) S-1 for GPP and from 50.75 W m(-2) to 46.85 W m(-2) for LE. Using the PSO approach, the R-2 increases to 0.89 and RMSE decreases to 2.92 mu mol m(-2) S-1 for GPP, while, the R-2 increases to 0.79 and RMSE decreases to 46.16 W m(-2) for LE. Therefore, modifying the model process contributed more to improve the model simulations than using parameter estimation techniques. Our study recommends that a justified refinement in model structure plays vital role in quantifying the carbon and water fluxes in dryland ecosystems or other ecosystems.
机译:共同的土地模型(COLM)已被广泛用于估算现场或区域尺度的碳和水量,但该模型在Dryland Ecosystems中仍处于表现不佳。我们的研究侧重于改变模型过程和使用参数优化技术的联合分析,以改善新疆新疆半干旱草原生态系统的模型性能。该研究通过替换COLM的根水吸收功能(RWUF)和使用粒子群优化(PSO)算法来优化最敏感参数来呈现模拟碳和水通量的比较。在PSO之前,利用莫里斯单因素 - AT-Time(MoAT)的方法筛选出对COLM中总初级生产(GPP)和潜热通量(LE)具有强烈影响的参数。修改COLM中的根水吸收过程或优化模型参数可以显着降低模拟GPP,LE和水使用效率(WUE)的偏差。 COLM中改性RWUF的测定系数(R-2)增加到GPP的0.85至0.92,并且对于LE为0.76至0.81。同时,根均方误差(RMSE)从3.57μmMolm(-2)S-1降至2.78μmolm(-2)S-1,用于GPP,50.75 W m(-2)至46.85WM (-2)对于le。使用PSO方法,R-2增加到0.89,RMSE减少至2.92μmMolM(-2)S-1,而R-2增加到0.79,RMSE降至46.16WM(-2)对于le。因此,修改模型过程更多地贡献以改善模型模拟而不是使用参数估计技术。我们的研究建议模型结构的正常改进在量化Dryland生态系统或其他生态系统中的碳和水通量方面发挥着至关重要的作用。

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