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首页> 外文期刊>Water Resources Management >Selecting Model Parameter Sets from a Trade-off Surface Generated from the Non-Dominated Sorting Genetic Algorithm-Ⅱ
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Selecting Model Parameter Sets from a Trade-off Surface Generated from the Non-Dominated Sorting Genetic Algorithm-Ⅱ

机译:从非支配排序遗传算法Ⅱ产生的权衡曲面选择模型参数集

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摘要

There is increasing trend in the use of multi-objective genetic algorithms (GAs) to estimate parameter sets in the calibration of hydrological models. Multi-objective GAs facilitate the evaluation of several model evaluation objectives, and the examination of massive combinations of parameter sets. Typically, the outcome is a set of several equally-accurate parameter sets which make-up a trade-off surface between the objective functions, usually referred to as Pareto set. The Pareto set is a set of incomparable parameter sets as each solution has unique parameter values in parameter space with competing accuracy in the objective function space. As would be required for decision making purposes, a single parameter set is usually chosen to represent the model calibration procedure. An automated framework for choosing a single solution from such a trade-off surface has not been thoroughly investigated in the model calibration literature. As a result, this study has outlined an automated framework using the distribution of solutions in objective space and parameter space to select solutions with unique properties from an incomparable set of solutions. Our Pareto set was generated from the application of Non-dominated Sorting Genetic Algorithm-II (NSGA-II) to calibrate the Soil and Water Assessment Tool (SWAT) for simulations of streamflow in the Fairchild Creek watershed inrnsouthern Ontario. Using cluster analysis to evaluate the distribution of solutions in both objective space and parameter space, we developed four auto-selection methods for choosing parameter sets from the trade-off surface to support decision making. Our method generates solutions with unique properties including a representative pathway in parameter space, a basin of attraction (or the center of mass) in objective space, a proximity to the origin in objective space, and a balanced compromise between objective space and parameter space (denoted BCOP). The BCOP method is appealing as it is an equally-weighted compromise for the distribution of solutions in objective space and parameter space. That is, the BCOP solution emphasizes stability in model parameter values and in objective function values-in a way that similarity in parameter space implies similarity in objective space.
机译:在水文模型的校准中,使用多目标遗传算法(GA)来估计参数集的趋势正在增加。多目标GA有助于评估几个模型评估目标,以及检查大量参数集组合。通常,结果是一组几个相等精度的参数集,这些参数集构成目标函数之间的权衡面,通常称为帕累托集。帕累托集是一组无可比拟的参数集,因为每个解决方案在参数空间中都有唯一的参数值,而目标函数空间中的精度却极高。如决策所需,通常选择一个参数集来表示模型校准过程。在模型校准文献中尚未对用于从这种权衡面中选择单个解决方案的自动化框架进行彻底研究。因此,本研究概述了一个自动框架,该框架使用目标空间和参数空间中解决方案的分布来从无可比拟的解决方案集中选择具有独特属性的解决方案。我们的帕累托集是通过应用非支配排序遗传算法II(NSGA-II)校准土壤和水评估工具(SWAT)来模拟安大略省南部Fairchild Creek流域的水流的结果。使用聚类分析来评估目标空间和参数空间中解的分布,我们开发了四种自动选择方法来从权衡面中选择参数集以支持决策。我们的方法产生具有独特性质的解决方案,包括参数空间中的代表性路径,目标空间中的吸引盆(或质心),目标空间中的原点附近以及目标空间和参数空间之间的平衡折衷(表示为BCOP)。 BCOP方法之所以吸引人,是因为它是在目标空间和参数空间中分配解决方案的一种平均加权折衷方法。也就是说,BCOP解决方案强调模型参数值和目标函数值的稳定性,即参数空间的相似性暗示目标空间的相似性。

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