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首页> 外文期刊>Water resources research >Optimal groundwater remediation design using an Adaptive Neural Network Genetic Algorithm
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Optimal groundwater remediation design using an Adaptive Neural Network Genetic Algorithm

机译:基于自适应神经网络遗传算法的地下水优化治理设计。

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摘要

Large-scale water resources optimization often involves using time-consuming simulation models to evaluate potential water resource designs or calibrate parameter values. Approximation models have been proposed for improving computational efficiency of the optimization. In most instances, multiple simulation runs have been done prior to the optimization, which are then used to fit an approximate model that is used during the optimization. This paper demonstrates that this approach can lead to suboptimal solutions and proposes a dynamic modeling approach, called Adaptive Neural Network Genetic Algorithm (ANGA), in which artificial neural networks are adaptively and automatically trained directly within a genetic algorithm (GA) to replace the time-consuming water resource simulation models. A dynamic learning approach is proposed to periodically sample new solutions both to update the ANNs and to correct the GA's convergence. Different configurations of ANGA were tested on a hypothetical groundwater remediation design case, and then the best configuration was applied to a field-scale case. In these applications, ANGA saved 85-90% percent of the simulation model calls with no loss in accuracy of the optimal solutions. These results show that the method has substantial promise for reducing computational effort associated with large-scale water resources optimization.
机译:大规模的水资源优化通常涉及使用费时的模拟模型来评估潜在的水资源设计或校准参数值。已经提出了近似模型以提高优化的计算效率。在大多数情况下,在优化之前已经进行了多次模拟运行,然后将其用于拟合优化期间使用的近似模型。本文证明了这种方法可能会导致次优解决方案,并提出了一种动态建模方法,称为自适应神经网络遗传算法(ANGA),其中人工神经网络在遗传算法(GA)中直接自适应地进行自适应训练,以取代时间耗水量模拟模型。提出了一种动态学习方法,以定期对新解决方案进行抽样,以更新ANN并纠正GA的收敛性。在假设的地下水修复设计案例中对ANGA的不同配置进行了测试,然后将最佳配置应用于田间规模的案例。在这些应用中,ANGA节省了85-90%的仿真模型调用,而不会损失最佳解决方案的准确性。这些结果表明,该方法对于减少与大规模水资源优化相关的计算量具有很大的希望。

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