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Simultaneous identification of groundwater contaminant sources and simulation of model parameters based on an improved single-component adaptive Metropolis algorithm

机译:基于改进的单组分自适应大都会算法的地下水污染源和模型参数仿真同时识别

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摘要

The Bayesian approach is attractive because it can consider various uncertainties in the inverse process. Although the Bayesian algorithm has strong random ergodicity, it still lacks the ability to perform local optimization. Therefore, an improved single-component adaptive Metropolis (SCAM) algorithm based on Bayesian theory was developed to solve this problem and it was applied to the simultaneous identification of groundwater contaminant sources and simulation model parameters. The nondeterministic simulation model parameters have been introduced into the prior distribution as random variables. However, this will increase the number of random variables in the inverse problem, besides making the solution difficult. To alleviate this difficulty, the SCAM algorithm was applied to groundwater contaminant source identification. The acceptance probability formula was adjusted to enhance the local optimization ability of the SCAM algorithm. This improves the searching efficiency of the algorithm in the second stage, without losing the ergodicity in the first stage. In the inverse process, the simulation model is used multiple times to evaluate the likelihood function. To reduce the computational burden, the likelihood function is calculated by the surrogate model of the simulation model instead of by the simulation model itself, which greatly accelerates the process of Bayesian inversion. The effectiveness of this approach has been demonstrated by a hypothetical case study. Finally, the results of previous and improved algorithms have been compared. The results indicate that the improved SCAM algorithm can identify groundwater contaminant sources and simulation model parameters, simultaneously, with high accuracy and efficiency.
机译:贝叶斯方法是有吸引力的,因为它可以考虑各种不确定性的逆过程。虽然贝叶斯算法具有很强的随机遍历性,但它仍然缺乏进行局部优化的能力。为此,提出了一种基于贝叶斯理论的改进单分量自适应大都会(SCAM)算法,并将其应用于地下水污染源和模拟模型参数的同时识别。将不确定性仿真模型参数作为随机变量引入先验分布。然而,这将增加反问题中随机变量的数量,并且使求解变得困难。为了缓解这一困难,SCAM算法被应用于地下水污染源识别。调整了接受概率公式,增强了SCAM算法的局部优化能力。这提高了算法在第二阶段的搜索效率,而不会丢失第一阶段的遍历性。在逆过程中,多次使用仿真模型来评估似然函数。为了减少计算负担,通过仿真模型的替代模型而不是仿真模型本身来计算似然函数,这大大加快了贝叶斯反演的过程。这一方法的有效性已通过一个假设的案例研究得到证明。最后,对已有算法和改进算法的结果进行了比较。结果表明,改进的SCAM算法能够同时识别地下水污染源和模拟模型参数,具有较高的精度和效率。

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