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Improved real-time data anomaly detection using context classification

机译:使用上下文分类改进了实时数据异常检测

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The number of automated measuring and reporting systems used in water distribution and sewer systems is dramatically increasing and, as a consequence, so is the volume of data acquired. Since real-time data is likely to contain a certain amount of anomalous values and data acquisition equipment is not perfect, it is essential to equip the SCADA (Supervisory Control and Data Acquisition) system with automatic procedures that can detect the related problems and assist the user in monitoring and managing the incoming data. A number of different anomaly detection techniques and methods exist and can be used with varying success. To improve the performance, these methods must be fine tuned according to crucial aspects of the process monitored and the contexts in which the data are classified. The aim of this paper is to explore if the data context classification and pre-processing techniques can be used to improve the anomaly detection methods, especially in fully automated systems. The methodology developed is tested on sets of real-life data, using different standard and experimental anomaly detection procedures including statistical, model-based and data-mining approaches. The results obtained clearly demonstrate the effectiveness of the suggested anomaly detection methodology.
机译:供水和下水道系统中使用的自动测量和报告系统的数量正在急剧增加,因此,所获取的数据量也在增加。由于实时数据很可能包含一定数量的异常值,并且数据采集设备并不完美,因此必须为SCADA(监控和数据采集)系统配备能够检测相关问题并协助解决问题的自动程序。用户监视和管理传入数据。存在许多不同的异常检测技术和方法,可以成功地使用它们。为了提高性能,必须根据所监视过程的关键方面以及对数据进行分类的上下文来对这些方法进行微调。本文的目的是探讨数据上下文分类和预处理技术是否可用于改进异常检测方法,尤其是在全自动系统中。使用不同的标准和实验异常检测程序(包括统计方法,基于模型的方法和数据挖掘方法),对所开发的方法论在一组实际数据上进行了测试。获得的结果清楚地表明了建议的异常检测方法的有效性。

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