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Identification Of High Pressure Critical Links In Water Distribution Systems

机译:水分配系统中高压关键环节的识别

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Control system is the core of the water distribution system (WDS). WDS system has information in the form of data feeds. By analyzing these data feeds, we can provide enough information about the leakage area in the system to take control manually over the system. In this paper, leakage areas are isolated using various Machine Learning (ML) techniques. EPANET (Environmental Protection Agency Networks) is used to model the hydraulic behavior of WDS. In WDS, leakage scenarios are created through EPANET by varying the input parameters (such as roughness, tank level, base demand). This data is then analyzed using different supervised machine learning techniques to determine the high-pressure links to identify the critical areas. We also compare the accuracy of different supervised machine learning algorithm which involves the importance of feature engineering term used in Machine learning.
机译:控制系统是水分配系统(WDS)的核心。 WDS系统具有数据馈送形式的信息。通过分析这些数据馈送,我们可以提供有关系统中泄漏区域的足够信息,以通过系统手动控制。在本文中,使用各种机器学习(ML)技术隔离泄漏区域。 EPANET(环境保护局网络)用于模拟WDS的液压行为。在WDS中,通过改变输入参数(例如粗糙度,罐级,基本需求)来通过EPANET创建泄漏方案。然后使用不同的监督机器学习技术进行分析该数据以确定高压链路以识别关键区域。我们还比较不同监督机器学习算法的准确性,这涉及机器学习中使用的特征工程术语的重要性。

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