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Robust leak localization in water distribution networks using computational intelligence

机译:使用计算智能在水分配网络中稳健泄漏定位

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摘要

The search for new strategies for leak detection, estimation and localization in Water Distributions Networks (WDNs) is a state-of-the-art research topic. In this paper, a methodology for leak detection, estimation and location that combines data-driven and model-based methods is proposed. A deep neural network is used in the leak detection task. Subsequently, the estimation of a leakage size range is accomplished by using Gaussian process regression. Then, a novel approach based on the solution of an inverse problem is developed for leak location. Knowing the range of possible values for the leak size allows to improve the location task when solved as an inverse problem. The proposed location method considers the topological configuration of the network as well as the leak size range. One of the main advantages of the proposal is that it does not depend on the labeling of the nodes. In this sense, a modified variant of the Differential Evolution algorithm, which considers the topological structure of the WDN to modify the search space and incorporates a temporal analysis, is used to find the solution of the inverse problem. Moreover, thanks to the topological evolution of the solutions a set of candidate nodes for the leakage creates a zone of reduced possible locations very useful in practical terms. The proposed approach is tested with the model of a real case study: the large-scale Modena WDN. The results demonstrate the effectiveness of the proposal with satisfactory leak detection, leak size estimation, and location performance when considering only 9 sensors installed in a network formed by 268 nodes. ? 2021 Elsevier B.V. All rights reserved.
机译:搜索水分布网络(WDNS)中的泄漏检测,估计和定位的新策略是一种最先进的研究主题。在本文中,提出了一种组合数据驱动和基于模型的方法的泄漏检测,估计和位置的方法。深度神经网络用于泄漏检测任务。随后,通过使用高斯过程回归来实现泄漏大小范围的估计。然后,为泄漏位置开发了一种基于反问题解决方案的新方法。了解泄漏大小的可能值范围允许在解决作为逆问题时改善位置任务。所提出的位置方法考虑网络的拓扑配置以及泄漏尺寸范围。提案的主要优点之一是它不依赖于节点的标签。从这个意义上讲,考虑WDN的拓扑结构来修改搜索空间并结合时间分析的差分演进算法的修改变体用于找到反问题的解决方案。此外,由于解决方案的拓扑演变,用于泄漏的一组候选节点创造了一种在实际上非常有用的可能位置的区域。建议的方法是用实际案例研究的模型进行测试:大规模的摩德纳WDN。结果表明,在考虑在由268个节点形成的网络中安装的9个传感器时,该提案具有令人满意的泄漏检测,泄漏尺寸估计和位置性能的有效性。还是2021 elestvier b.v.保留所有权利。

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