Artificial Neural Networks in Water Distribution Systems: A Literature Synopsis

T. Mosetlhe, Y. Hamam, Shengzhi Du, Y. Alayli
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引用次数: 8

Abstract

High computational requirements are commonly associated with the hydraulic simulation of large-scale water distribution. The convergence of the cumbersome iterative procedures involved has been a well-debated issue for the past decades. The large-scale and non-linear properties pose a great hindrance towards the development of online applications for water distribution network (WDN) analysis and pressure control thereof. Consequently, there has been a great interest in the deployment of model-free techniques to mimic the rather computationally expensive non-linear hydraulic simulations. As the hydraulic simulation based research is still being conducted, the advantages of model-free techniques make them more suitable alternatives. Artificial neural networks (ANN) is one of the most successful model-free methods for WDN analysis and management. In this paper, a literature synopsis of existing applications of model-free approaches in water distribution is presented. The technical advantages of applying such technique in a large-scale non-linear network are brought up in this paper.
配水系统中的人工神经网络:文献综述
大规模配水的水力模拟通常要求较高的计算量。在过去的几十年里,所涉及的繁琐迭代过程的收敛一直是一个备受争议的问题。配水网络的大规模和非线性特性对其在线分析和压力控制应用的发展造成了很大的阻碍。因此,人们对部署无模型技术来模拟计算成本相当高的非线性水力模拟非常感兴趣。由于基于水力仿真的研究仍在进行中,无模型技术的优点使其成为更合适的替代方案。人工神经网络(ANN)是WDN分析和管理中最成功的无模型方法之一。本文对无模型方法在水资源分配中的应用进行了文献综述。文中指出了该技术在大型非线性网络中应用的技术优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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