Leakage Detection via Edge Processing in LoRaWAN-based Smart Water Distribution Networks

D. Garlisi, Gabriele Restuccia, I. Tinnirello, F. Cuomo, I. Chatzigiannakis
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引用次数: 1

Abstract

The optimization and digitalization of Water Distribution Networks (WDNs) are becoming key objectives in our modern society. Indeed, WDNs are typically old, worn and obsolete. These inadequate conditions of the infrastructures lead to significant water loss due to leakages inside pipes, junctions and nodes. It has been measured that in Europe the average value of lost water is about 26 %. Leakage control in current WDNs is typically passive, repairing leaks only when they are visible. Emerging Low Power Wide Area Network (LPWAN) technologies, and especially IoT ones, can help monitor water consumption and automatically detect leakages. In this context, LoRaWAN can be the right way to deploy a smart monitoring system for WDNs. Moreover, most of the current smart WDNs solutions just collect measurements from the smart metres and send the data to the cloud servers, in order to execute the intended analyses, in centralised way. In this paper, we propose new solutions to improve monitoring, leak management and prediction by exploiting edge processing capabilities inside LoRaWAN networks. Our approach is based on an IoT system of water sensors that are placed at junctions of the WDN to have measurements in correspondence to various smart metres in the network and Machine Learning (ML) algorithms to process the data directly at the edge in order to visualise and predict leakages. We present a numerical simulation tool useful to evaluate the suggested monitoring method. Based on our results, we examine whether it is possible to identify network leaks using the edges without having a complete or accurate overview of the collected measurements of the full WDN. System performance is shown separately at gateways network.
基于lorawan的智能配水网络边缘处理的泄漏检测
配水网络的优化和数字化已成为现代社会的主要目标。事实上,wdn通常是旧的、磨损的和过时的。这些基础设施条件的不足导致管道、连接处和节点内的泄漏导致大量的水损失。据测量,在欧洲,平均损失的水量约为26%。目前wdn的泄漏控制通常是被动的,只有当泄漏可见时才进行修复。新兴的低功耗广域网(LPWAN)技术,特别是物联网技术,可以帮助监控用水量并自动检测泄漏。在这种情况下,LoRaWAN可能是部署wdn智能监控系统的正确方式。此外,目前大多数智能wdn解决方案只是从智能电表收集测量数据,并将数据发送到云服务器,以便以集中的方式执行预期的分析。在本文中,我们提出了新的解决方案,通过利用LoRaWAN网络内部的边缘处理能力来改进监测、泄漏管理和预测。我们的方法基于水传感器的物联网系统,该系统放置在WDN的交界处,与网络中的各种智能电表进行对应的测量,并使用机器学习(ML)算法直接在边缘处理数据,以便可视化和预测泄漏。我们提出了一个有用的数值模拟工具来评估建议的监测方法。根据我们的结果,我们检查是否有可能使用边缘来识别网络泄漏,而没有完整或准确地概述整个WDN收集的测量值。系统性能在网关网络中单独显示。
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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