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A novel dynamic multi-criteria ensemble selection mechanism applied to drinking water quality anomaly detection

机译:一种新型动态多标准集合选择机制,适用于饮用水质量异常检测

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The provision of clean and safe drinking water is a crucial task for water supply companies from all over the world. To this end, automatic anomaly detection plays a critical role in drinking water quality monitoring. Recent anomaly detection studies use techniques that focus on a single global objective. Yet, companies need solutions that better balance the trade-off between false positives (FPs), which lead to financial losses to water companies, and false negatives (FNs), which severely impact public health and damage the environment. This work proposes a novel dynamic multi-criteria ensemble selection mechanism to cope with both problems simultaneously: the non-dominated local class-specific accuracy (NLCA). Moreover, experiments rely on recent time series related classification metrics to assess the predictive performance. Results on data from a real-world water distribution system show that NLCA outperforms other ensemble learning and dynamic ensemble selection techniques by more than 15% in terms of time series related F_1 scores. As a conclusion, NLCA enables the development of stronger anomaly detection systems for drinking water quality monitoring. The proposed technique also offers a new perspective on dynamic ensemble selection, which can be applied to different classification tasks to balance conflicting criteria.
机译:提供清洁和安全的水资源饮用水是来自世界各地供水公司的关键任务。为此,自动异常检测在饮用水质量监测方面发挥着关键作用。最近的异常检测研究使用专注于单一全球目标的技术。然而,公司需要解决方案,更好地平衡误报(FPS)之间的权衡,这导致水资源公司的财务损失,以及严重影响公共卫生和损害环境的错误否定(FNS)。这项工作提出了一种新的动态多标准集合选择机制,同时应对这两个问题:非主导的本地类别专用精度(NLCA)。此外,实验依赖于最近的时间序列相关的分类指标来评估预测性能。结果来自现实世界排水系统的数据表明,在时间序列相关的F_1分数方面,NLCA优于其他合并学习和动态集合选择技术超过15%。作为结论,NLCA能够开发更强大的异常检测系统,用于饮用水质量监测。该提出的技术还提供了一种关于动态集合选择的新视角,可以应用于不同的分类任务以平衡冲突标准。

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