Semi-Supervised Anomaly Detection with an Application to Water Analytics

Vincent Vercruyssen, Wannes Meert, Gust Verbruggen, Koen Maes, Ruben Baumer, Jesse Davis
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引用次数: 59

Abstract

Nowadays, all aspects of a production process are continuously monitored and visualized in a dashboard. Equipment is monitored using a variety of sensors, natural resource usage is tracked, and interventions are recorded. In this context, a common task is to identify anomalous behavior from the time series data generated by sensors. As manually analyzing such data is laborious and expensive, automated approaches have the potential to be much more efficient as well as cost effective. While anomaly detection could be posed as a supervised learning problem, typically this is not possible as few or no labeled examples of anomalous behavior are available and it is oftentimes infeasible or undesirable to collect them. Therefore, unsupervised approaches are commonly employed which typically identify anomalies as deviations from normal (i.e., common or frequent) behavior. However, in many real-world settings several types of normal behavior exist that occur less frequently than some anomalous behaviors. In this paper, we propose a novel constrained-clustering-based approach for anomaly detection that works in both an unsupervised and semi-supervised setting. Starting from an unlabeled data set, the approach is able to gradually incorporate expert-provided feedback to improve its performance. We evaluated our approach on real-world water monitoring time series data from supermarkets in collaboration with Colruyt Group, one of Belgiums largest retail companies. Empirically, we found that our approach outperforms the current detection system as well as several other baselines. Our system is currently deployed and used by the company to analyze water usage for 20 stores on a daily basis.
半监督异常检测在水分析中的应用
如今,生产过程的所有方面都在仪表板上持续监控和可视化。使用各种传感器监测设备,跟踪自然资源的使用情况,并记录干预措施。在这种情况下,一个常见的任务是从传感器生成的时间序列数据中识别异常行为。由于手动分析此类数据既费力又昂贵,因此自动化方法具有更大的效率和成本效益的潜力。虽然异常检测可以作为一个监督学习问题,但通常这是不可能的,因为可用的异常行为的标记示例很少或没有,并且通常不可行或不希望收集它们。因此,通常采用无监督方法,它通常将异常识别为偏离正常(即,常见或频繁)的行为。然而,在许多现实世界的设置中,存在几种类型的正常行为,它们的发生频率低于一些异常行为。在本文中,我们提出了一种新的基于约束聚类的异常检测方法,该方法适用于无监督和半监督环境。从一个未标记的数据集开始,该方法能够逐渐纳入专家提供的反馈以提高其性能。我们与比利时最大的零售公司之一Colruyt集团合作,对来自超市的真实水监测时间序列数据进行了评估。根据经验,我们发现我们的方法优于当前的检测系统以及其他几个基线。我们的系统目前被公司部署并用于分析20家商店的日常用水量。
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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