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Optimal Selection and Monitoring of Nodes Aimed at Supporting Leakages Identification in WDS

机译:最佳选择和监控旨在支持WDS中泄漏识别的节点

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摘要

Many efforts have been made in recent decades to formulate strategies for improving the efficiency of water distribution systems (WDS), led by the socio-demographic evolution of modern society and the climate change scenario. The improvement of WDS management is a complex task that can be addressed by providing services to maximize revenues while ensuring that the quality standards required by national and international regulations are upheld. These two objectives can be fulfilled by utilizing optimized techniques for the operational and maintenance strategies of WDS. This paper proposes a methodology for assisting engineers in identifying water leakages in WDS, thus providing an effective procedure for ensuring high level hydraulic network functionality. The proposed approach is based on an inverse analysis of measured flow rates and pressure data, and consists of three steps: The analysis of measurements to select the most suitable period for leakage identification, the localization of the best measurement points based on a correlation analysis, and leakage identification with a hybrid optimization that combines the exploration capability of the differential evolution algorithm with the rapid convergence of particle swarm optimization. The proposed procedure is validated on a reference hydraulic network, known as the Apulian network.
机译:近几十年来制定了许多努力,制定改善水分配系统(WDS)效率的战略,由现代社会的社会人口展现和气候变化情景领导。 WDS管理的改进是一个复杂的任务,可以通过提供服务来最大限度地提高收入,同时确保维持国家和国际法规所需的质量标准。通过利用WDS的运营和维护策略的优化技术,可以实现这两个目标。本文提出了一种辅助工程师在WD中识别漏水的方法,从而提供了确保高水平液压网络功能的有效过程。所提出的方法基于测量的流速和压力数据的逆分析,并由三个步骤组成:测量分析以选择最合适的泄漏识别时期,基于相关分析,最佳测量点的定位,泄漏识别具有杂交优化,将差分演化算法的勘探能力与粒子群优化的快速收敛相结合。所提出的程序在参考液压网络上验证,称为Apulian网络。

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