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Burst Detection by Analyzing Shape Similarity of Time Series Subsequences in District Metering Areas

机译:通过分析区域计量区域中时间序列子序列的形状相似性进行突发检测

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The paper proposes a burst detection method that relies on shape similarity analysis of time series subsequences (i.e., slices of time series). Subsequence libraries are constructed using flow (or water demand) data. Increase-rate distance is used to evaluate the shape similarity between subsequences, and abnormal subsequences are those that have low shape similarity with others. An abnormal subsequence searching algorithm first is used to remove abnormal subsequences, and the remaining subsequences are used to form reference libraries. Then the shape similarity between newly collected subsequences and reference libraries is evaluated to detect bursts. In the detection, a modified version of the abnormal subsequence searching algorithm can reduce the number of false alarms by finding the don't-care segment in subsequences and improve the method's detection ability by crossover between night subsequences. The method was applied to a network's hydraulic model and three real-life district metering areas. Results show that the method's detection performance is only slightly affected by seasonal changes of data and is insensitive to data sets from different networks.
机译:该论文提出了一种突发检测方法,该方法依赖于时间序列子序列(即时间序列的切片)的形状相似性分析。子序列库是使用流量(或水需求)数据构建的。增加速率距离用于评估子序列之间的形状相似性,而异常子序列是与其他子序列之间的形状相似性较低的子序列。首先使用异常子序列搜索算法删除异常子序列,然后使用其余子序列形成参考库。然后,评估新收集的子序列与参考库之间的形状相似度,以检测突发。在检测中,异常子序列搜索算法的改进版本可以通过找到子序列中的无关片段来减少误报的数量,并通过夜间子序列之间的交叉来提高方法的检测能力。该方法已应用于网络的水力模型和三个实际的区域计量区域。结果表明,该方法的检测性能仅受数据季节性变化的影响很小,并且对来自不同网络的数据集不敏感。

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