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Optimization of high-reliability-based hydrological design problems by robust automatic sampling of critical model realizations

机译:通过对关键模型实现进行可靠的自动采样,优化基于高可靠性的水文设计问题

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摘要

This study demonstrates the high efficiency of the so-called stack-ordering technique for optimizing a groundwater management problem under uncertain conditions. The uncertainty is expressed by multiple equally probable model representations, such as realizations of hydraulic conductivity. During optimization of a well-layout problem for contaminant control, a ranking mechanism is applied that extracts those realizations that appear most critical for the optimization problem. It is shown that this procedure works well for evolutionary optimization algorithms, which are to some extent robust against noisy objective functions. More precisely, differential evolution (DE) and the Covariance Matrix Adaptation Evolution Strategy (CMA-ES) are applied. Stack ordering is comprehensively investigated for a plume management problem at a hypothetical template site based on parameter values measured at and on a geostatistical model developed for the Lauswiesen study site near Tubingen, Germany. The straightforward procedure yields computational savings above 90% in comparison to always evaluating the full set of realizations. This is confirmed by cross testing with four additional validation cases. The results show that both evolutionary algorithms obtain highly reliable near-optimal solutions. DE appears to be the better choice for cases with significant noise caused by small stack sizes. On the other hand, there seems to be a problem-specific threshold for the evaluation stack size above which the CMA-ES achieves solutions with both better fitness and higher reliability.
机译:这项研究表明,在不确定条件下,用于优化地下水管理问题的所谓堆栈排序技术具有很高的效率。不确定性由多个等概率模型表示来表达,例如水力传导率的实现。在优化用于污染物控制的布局问题期间,应用排名机制来提取那些对优化问题而言最关键的实现。结果表明,该程序对于进化优化算法非常有效,该算法在一定程度上对嘈杂的目标函数具有鲁棒性。更准确地说,应用了差分进化(DE)和协方差矩阵适应进化策略(CMA-ES)。基于在德国图宾根附近的洛斯维森研究现场开发的地统计学模型和基于地统计学模型测量的参数值,对假设模板站点处的羽流管理问题进行了全面研究。与始终评估整套实现相比,这种简单的过程可节省90%以上的计算量。通过交叉测试以及另外四个验证案例可以确认这一点。结果表明,两种进化算法均获得了高度可靠的近似最优解。对于因小烟囱尺寸而引起明显噪音的情况,DE似乎是更好的选择。另一方面,对于评估堆栈大小,似乎存在特定于问题的阈值,高于该阈值,CMA-ES可获得具有更好适应性和更高可靠性的解决方案。

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  • 来源
    《Water resources research》 |2010年第5期|P.W05504.1-W05504.18|共18页
  • 作者单位

    Ecological System Design, Institute for Environmental Engineering, ETH Zurich, Schafmattstr. 6, CH-8093 Zurich, Switzerland;

    rnCenter for Bioinformatics Tuebingen, University of Tuebingen, Sand 1, D-72076 Tuebingen, Germany;

    rnCenter for Applied Geosciences, University of Tuebingen, Sigwartstr.10, D-72076 Tuebingen, Germany;

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