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Optimal Sampling Design Methodologies for Water Distribution Model Calibration

机译:配水模型校准的最佳采样设计方法

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摘要

Sampling design (SD) for water distribution systems (WDS) is an important issue, previously addressed by various researchers and practitioners. Generally, SD has one of several purposes. The aim of the methodologies developed and presented here is to find the optimal set of network locations for pressure loggers, which will be used to collect data for the calibration of a WDS model. First, existing SD approaches for WDS are reviewed. Then SD is formulated as a multiobjective optimization problem. Two SD models are developed to solve this problem, both using genetic algorithms (GA) as search engines. The first model is based on a single-objective GA (SOGA) approach in which two objectives are combined into one using appropriate weights. The second model uses a multiobjective GA (MOGA) approach based on Pareto ranking. Both SD models are applied to two case studies (literature and real-life problems). The results show several advantages and one disadvantage of the MOGA model when compared to SOGA. A comparison of the MOGA SD model solution to the results of several published SD models shows that the Pareto optimal front obtained using MOGA acts as an envelope to the Pareto fronts obtained using previously published SD models.
机译:供水系统(WDS)的采样设计(SD)是一个重要的问题,以前各个研究人员和从业人员都曾讨论过。通常,SD具有以下几种目的之一。此处开发和介绍的方法的目的是为压力记录仪找到最佳的网络位置集,该位置将用于收集数据以校准WDS模型。首先,回顾了现有的WDS SD方法。然后将SD公式化为一个多目标优化问题。开发了两个SD模型来解决此问题,都使用遗传算法(GA)作为搜索引擎。第一个模型基于单目标GA(SOGA)方法,其中使用适当的权重将两个目标合并为一个。第二个模型使用基于Pareto排名的多目标GA(MOGA)方法。两种SD模型均应用于两个案例研究(文学和现实问题)。结果表明,与SOGA相比,MOGA模型具有许多优点和缺点。将MOGA SD模型解决方案与几个已发布的SD模型的结果进行比较,结果表明,使用MOGA获得的帕累托最优前沿是对使用先前发布的SD模型获得的帕累托前沿的包络。

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