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Back-propagation artificial neural networks for water supply pipeline model

机译:反向传播人工神经网络的供水管道模型

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摘要

Water supply pipelines are the lifelines of a city. When pipelines burst, the burst site is difficult to locate by traditional methods such as manual tools or only by watching. In this paper, the burst site was identified using back-propagation (BP) artificial neural networks (ANN). The study is based on an indoor urban water supply model experiment. The key to appling BP ANN is to optimize the ANN's topological structure and learning parameters. This paper presents the optimizing method for a 3-layer BP neural network's topological structure and its learning parameters-learning ratio and the momentum factor. The indoor water supply pipeline model experimental results show that BP ANNs can be used to locate the burst point in urban water supply systems. The topological structure and learning parameters were optimized using the experimental results.
机译:供水管道是城市的生命线。当管道破裂时,难以通过传统方法(例如手动工具)或仅通过观察来定位破裂的站点。在本文中,使用反向传播(BP)人工神经网络(ANN)识别了爆发部位。该研究基于室内城市供水模型实验。应用BP神经网络的关键是优化ANN的拓扑结构和学习参数。提出了一种三层BP神经网络拓扑结构及其学习参数-学习率和动量因子的优化方法。室内给水管道模型实验结果表明,BP神经网络可用于定位城市给水系统中的爆发点。利用实验结果优化了拓扑结构和学习参数。

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