对社区供水网络故障本地化的综合方法

Qing Han, Phu Nguyen, R. Eguchi, K. Hsu, N. Venkatasubramanian
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引用次数: 12

摘要

我们提出了一个网络-物理-人类分布式计算框架,AquaSCALE,用于收集,分析和定位越来越容易发生故障的社区供水服务的异常操作。如今,检测管网管道破裂/泄漏需要数小时到数天的时间。AquaSCALE利用来自多个信息源的动态数据,包括物联网(IoT)传感数据、地球物理数据、人工输入和仿真/建模引擎,创建了一个传感器-仿真-数据集成平台,可以准确、快速地识别易受攻击的地方。我们提出了一个两阶段的工作流程,首先使用商业级液压模拟器EPANET进行强大的仿真方法,并通过支持物联网传感器和管道故障建模进行增强。它使用各种即插即用的机器学习技术生成异常事件的概况。然后,该概况与外部观测(NOAA天气报告和twitter消息)相结合,以快速可靠地隔离破裂的水管。我们评估了典型和现实水网络在不同失效情况下的两相机制。我们的研究结果表明,采用离线学习和在线推理的方法可以在细粒度级别(单个管道级别)定位多个同时发生的管道故障,具有很高的精度,检测时间减少了几个数量级(从小时/天到分钟)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Toward An Integrated Approach to Localizing Failures in Community Water Networks
We present a cyber-physical-human distributed computing framework, AquaSCALE, for gathering, analyzing and localizing anomalous operations of increasingly failure-prone community water services. Today, detection of pipe breaks/leaks in water networks takes hours to days. AquaSCALE leverages dynamic data from multiple information sources including IoT (Internet of Things) sensing data, geophysical data, human input, and simulation/modeling engines to create a sensor-simulation-data integration platform that can accurately and quickly identify vul-nerable spots. We propose a two-phase workflow that begins with robust simulation methods using a commercial grade hydraulic simulator - EPANET, enhanced with the support for IoT sensor and pipe failure modelings. It generates a profile of anomalous events using diverse plug-and-play machine learning techniques. The profile then incorporates with external observations (NOAA weather reports and twitter feeds) to rapidly and reliably isolate broken water pipes. We evaluate the two-phase mechanism in canonical and real-world water networks under different failure scenarios. Our results indicate that the proposed approach with offline learning and online inference can locate multiple simultaneous pipe failures at fine level of granularity (individual pipeline level) with high level of accuracy with detection time reduced by orders of magnitude (from hours/days to minutes).
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