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Parameter calibration in global soil carbon models using surrogate-based optimization

机译:基于代理的优化的全球土壤碳模型参数校准

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Soil organic carbon (SOC) has a significant effect on carbon emissions and climate change. However, the current SOC prediction accuracy of most models is very low. Most evaluation studies indicate that the prediction error mainly comes from parameter uncertainties, which can be improved by parameter calibration. Data assimilation techniques have been successfully employed for the parameter calibration of SOC models. However, data assimilation algorithms, such as the sampling-based Bayesian Markov chain Monte Carlo (MCMC), generally have high computation costs and are not appropriate for complex global land models. This study proposes a new parameter calibration method based on surrogate optimization techniques to improve the prediction accuracy of SOC. Experiments on three types of soil carbon cycle models, including the Community Land Model with the Carnegie–Ames–Stanford Approach biogeochemistry submodel (CLM-CASA') and two microbial models show that the surrogate-based optimization method is effective and efficient in terms of both accuracy and cost. Compared to predictions using the tuned parameter values through Bayesian MCMC, the root mean squared errors (RMSEs) between the predictions using the calibrated parameter values with surrogate-base optimization and the observations could be reduced by up to 12% for different SOC models. Meanwhile, the corresponding computational cost is lower than other global optimization algorithms.
机译:土壤有机碳(SoC)对碳排放和气候变化具有显着影响。然而,大多数模型的当前SOC预测精度非常低。大多数评估研究表明预测误差主要来自参数不确定性,可以通过参数校准来改善。已经成功用于SoC模型的参数校准的数据同化技术。然而,数据同化算法,例如基于采样的贝叶斯马尔可夫链蒙特卡罗(MCMC),通常具有高计算成本,并且不适合复杂的全球陆地模型。本研究提出了一种基于代理优化技术的新参数校准方法,提高SOC的预测精度。关于三种土壤碳循环模型的实验,包括Carnegie-Ames-Stanford的社区土地模型生物地球化学子模型(CLM-CASA')和两个微生物模型表明,基于代理的优化方法是有效和高效的两种准确性和成本。与通过贝叶斯MCMC使用调谐参数值的预测相比,使用校准参数值与代理基本优化的预测之间的根均方误差(RMSE)可以减少到不同SOC模型的最高可达12%。同时,相应的计算成本低于其他全局优化算法。

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