Research on Leak Location Method of Water Supply Network based on Deep Neural Network Model

Xiaoxuan Wu, Chen Zhang
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Abstract

The water supply network is one of the important infrastructure in urban construction. It has strong theoretical and practical significance to realize the real-time monitoring and leak location of the water supply network. In this paper, based on the similarity of water supply network node pressure, fuzzy C-means clustering algorithm is used to realize the selection of finite monitoring points. On this basis, a depth neural network model is constructed according to the pressure changes of the monitoring points before and after the leakage of the water supply network, so as to locate the leakage points. In the experimental part, hydraulics simulation was conducted by using EPANETH pipe network adjustment software according to the layout structure of water supply network, and the pressure of all nodes was obtained. A deep neural network model was established by Keras in Tensorflow framework. After model training and testing, the training error was controlled within the effective range of 5 %. Finally, the model is applied to the actual leakage problem of underground water supply network in Langxi County of Xuancheng City, and the accurate location of the leakage point is realized. The experiment proves the feasibility and accuracy of the method proposed in this paper.
基于深度神经网络模型的供水管网泄漏定位方法研究
供水管网是城市建设的重要基础设施之一。实现供水管网的实时监测和泄漏定位具有很强的理论和现实意义。本文基于供水管网节点压力的相似性,采用模糊c均值聚类算法实现有限个监测点的选择。在此基础上,根据供水管网泄漏前后监测点的压力变化,构建深度神经网络模型,对泄漏点进行定位。实验部分根据供水管网布置结构,利用EPANETH管网调整软件进行水力学仿真,得到各节点压力。在Tensorflow框架下,利用Keras建立深度神经网络模型。经过模型训练和测试,训练误差控制在5%的有效范围内。最后,将该模型应用于宣城市朗溪县地下供水管网的实际渗漏问题,实现了渗漏点的准确定位。实验证明了该方法的可行性和准确性。
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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