Multivariate adaptive regression splines-assisted approximate Bayesian computation for calibration of complex hydrological models

Jinfeng Ma, Ruonan Li, Hua Zheng, Weifeng Li, Kai-Xia Rao, Yanzheng Yang, Bo Wu
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Abstract

Approximate Bayesian computation (ABC) relaxes the need to derive explicit likelihood functions required by formal Bayesian analysis. However, the high computational cost of evaluating models limits the application of Bayesian inference in hydrological modeling. In this paper, multivariate adaptive regression splines (MARS) are used to expedite the ABC calibration process. The MARS model is trained using 6,561 runoff simulations generated by the SWAT model and subsequently replaces the SWAT model to calculate the objective functions in ABC and multi-objective evolutionary algorithm (MOEA). In experiments, MARS can successfully reproduce the runoff time series simulations of the SWAT model at a low time cost, with a runoff variance determination coefficient of 0.90 as compared to the Monte Carlo method. MARS-assisted ABC can quickly and accurately estimate the parameter distributions of the SWAT model. The comparison of ABC with non-Bayesian MOEAs helps in the selection of an appropriate calibration approach.
多变量自适应回归样条辅助近似贝叶斯计算校准复杂水文模型
近似贝叶斯计算(ABC)放宽了推导正式贝叶斯分析所需的明确似然函数的要求。然而,评估模型的高计算成本限制了贝叶斯推理在水文建模中的应用。本文采用多元自适应回归样条(MARS)来加快 ABC 校准过程。使用 SWAT 模型生成的 6,561 次径流模拟对 MARS 模型进行了训练,随后取代 SWAT 模型计算 ABC 和多目标进化算法(MOEA)中的目标函数。在实验中,MARS 能以较低的时间成本成功再现 SWAT 模型的径流时间序列模拟,与蒙特卡罗方法相比,径流方差确定系数为 0.90。MARS 辅助 ABC 可以快速准确地估计 SWAT 模型的参数分布。ABC 与非贝叶斯 MOEAs 的比较有助于选择适当的校准方法。
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