Deep Learning Based Anomaly Detection in Water Distribution Systems

Kai Qian, Jie Jiang, Yulong Ding, Shuanghua Yang
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引用次数: 10

Abstract

Water distribution system (WDS) is one of the most essential infrastructures all over the world. However, incidents such as natural disasters, accidents and intentional damages are endangering the safety of drinking water. With the advance of sensor technologies, different kinds of sensors are being deployed to monitor operative and quality indicators such as flow rate, pH, turbidity, the amount of chlorine dioxide etc. This brings the possibility to detect anomalies in real time based on the data collected from the sensors and different kinds of methods have been applied to tackle this task such as the traditional machine learning methods (e.g. logistic regression, support vector machine, random forest). Recently, researchers tried to apply the deep learning methods (e.g. RNN, CNN) for WDS anomaly detection but the results are worse than that of the traditional machine learning methods. In this paper, by taking into account the characteristics of the WDS monitoring data, we integrate sequence-to-point learning and data balancing with the deep learning model Long Short-term Memory (LSTM) for the task of anomaly detection in WDSs. With a public data set, we show that by choosing an appropriate input length and balance the training data our approach achieves better F1 score than the state-of-the-art method in the literature.
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基于深度学习的配水系统异常检测
配水系统是世界各国最重要的基础设施之一。然而,自然灾害、事故和故意破坏等事件正在危及饮用水安全。随着传感器技术的进步,不同类型的传感器被用于监测操作和质量指标,如流量、pH值、浊度、二氧化氯量等。这带来了基于从传感器收集的数据实时检测异常的可能性,并且已经应用了不同类型的方法来解决此任务,例如传统的机器学习方法(例如逻辑回归,支持向量机,随机森林)。近年来,研究人员尝试将深度学习方法(如RNN、CNN)应用于WDS异常检测,但效果不如传统的机器学习方法。本文结合WDS监测数据的特点,将序列到点学习和数据平衡与深度学习模型长短期记忆(LSTM)相结合,用于WDS异常检测任务。对于公共数据集,我们表明,通过选择适当的输入长度和平衡训练数据,我们的方法比文献中最先进的方法获得了更好的F1分数。
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