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Recognizing groundwater DNAPL contaminant source and aquifer parameters using parallel heuristic search strategy based on Bayesian approach

机译:使用基于贝叶斯方法的并行启发式搜索策略识别地下水DNAPL污染源和含水层参数

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In this paper, a parallel heuristic search strategy based on Bayesian approach was first proposed for recognizing groundwater DNAPL contaminant source and aquifer parameters (unknown variables). Frequent calls to numerical simulation model effectuated large computational burden during likelihood calculation. Single surrogate system was established to reduce the burden, but it had unavoidable limitations. Thus, we first presented the particle swarm optimization-tabu search hybrid algorithm to construct an optimal combined surrogate system for the simulation model, which assembled Gaussian process, kernel extreme learning machine, support vector regression, and also improved the accuracy of the surrogate system to simulation model. Thereafter, a parallel heuristic search iterative process was first implemented for simultaneous recognition of unknown variables. Each round of iteration involved determination of candidate points and state transitions. The Monte Carlo approach was used widely for selecting candidate point, but it did not readily converge to posterior distribution when the probability density functions were complex. And the search ergodicity was weak. In order to improve the search ergodicity, a DE algorithm with variable mutation rate based on rand-to-best, 1, and bin strategy was first proposed in this paper to determine multiple candidate points. The recognition results were obtained when the iteration process terminated. The accuracy and efficiency of our approaches were demonstrated through a hypothetical case in DNAPLs-contaminated aquifer, and the recognizing accuracy was high. More importantly, the new simulation model based on the recognition results is helpful in calculating future contaminant plume in the aquifer, which can provide credible basis for groundwater contaminant remediation plan design and risk assessment.
机译:在本文中,基于贝叶斯方法并行启发式搜索战略首次提出识别地下水DNAPL污染源和含水层参数(未知变量)。以数值模拟模型调用频繁可能性计算期间effectuated大的计算负担。单代理系统的建立是为了减轻负担,但它有局限性不可避免。因此,我们首先提出的粒子群优化,禁忌混合算法来构造最优的仿真模型,其组装高斯过程,内核极端学习机,支持向量回归组合替代系统,并且还改善了所述替代系统的准确性模拟模型。此后,并行启发式搜索迭代过程最初是为未知变量的同时识别实现。每一轮的迭代参与确定候选点和状态转换。蒙特卡洛方法被广泛地用于选择候选点,但它并不能容易地收敛到后验分布时的概率密度函数是复杂的。而搜索遍历性较弱。为了提高搜索遍历,一个DE算法具有可变的突变率基于兰特到最佳,1,和仓策略本文首次提出以确定多个候选点。当迭代过程终止,获得识别结果。的准确性和我们的方法的效率是通过在DNAPLs污染含水层的假设情况下表现出来,并承认精度高。更重要的是,根据识别结果,新的仿真模型是在含水层,它可以提供地下水污染整治方案设计和风险评估可靠的依据计算未来的污染羽很有帮助。

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