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First Results in Leak Localization in Water Distribution Networks using Graph-Based Clustering and Deep Learning ?

机译:首先使用基于图形的聚类和深度学习的水分配网络泄漏定位

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This paper presents a methodology for the localization of leaks in water distribution networks (WDNs) by means of the combination of a deep learning (DL) approach and a graph-based clustering technique. A data set for all possible leak locations is generated from pressure measurements and utilized to feed an image encoding process based on the Gramian Angular Field (GAF) technique, hence producing an equivalent data set of images. The pressure measurements are generated through the WDN simulation engine EPANET. To accomplish the training stage, the network is iteratively segmented into clusters using the Graph Agglomerative Clustering (GAC) method, and a deep learning neural network (DLNN) is trained to correctly indicate the leak location at one of the created clusters. The achieved neural networks tree can be traversed through its different branches depending on each classification result, until the final cluster is reached. Consequently, leaks can be located with a success rate that grows inversely to the size of the clusters. Due to the dependency of the latter on the number of clusters, which can be settled, the presented method is adaptable to the considered network features ( as e.g. dimensions, sensors placement and accuracy) and requisites (as e.g. localization area size).
机译:本文通过深度学习(DL)方法和基于图形的聚类技术的组合来介绍分配网络(WDNS)中泄漏的方法。从压力测量产生所有可能的泄漏位置的数据集,并利用基于克朗尼亚角场(GAF)技术来馈送图像编码过程,因此产生等效的数据集。通过WDN仿真引擎EPANET产生压力测量。为了完成训练阶段,网络使用曲线图附聚类聚类(GAC)方法迭代地分割成簇,并且训练了深度学习神经网络(DLNN)以正确地指示其中一个创建的集群中的泄漏位置。达到的神经网络树可以根据每个分类结果遍历其不同的分支,直到达到最终集群。因此,泄漏可以具有成功率,其成功地增长到群集的大小。由于后者对可以解决的集群数量的依赖性,所提出的方法适用于所考虑的网络特征(如例如,尺寸,传感器放置和精度)和必需(如例如,本地化区域大小)。

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