Morphological Similarity Clustering and Its Applications in Anomaly Detection of Time Series

Shaolin Hu, Xiaomin Huang, Naiqian Su, Shihua Wang
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引用次数: 1

Abstract

Time series data clustering is an important branch and difficult topic in the field of data clustering. In this paper, the definition of temporal data morphological similarity is proposed, a set of affine invariant morphological similarity measurement methods of time series data is established, and a morphological clustering algorithm based on morphological similarity measurement is developed. Using morphological similarity measurement of time series data, two groups of abnormal change detection algorithms for time series data are established, which can be used to detect the morphological consistency of different periodical sampling series in the same time series and the morphological consistency among several time series in the same period. Based on these algorithms stated above, the multiple monitoring algorithms are proposed, which can be used to monitor states of many kinds of industry process. The effectiveness of the methods and algorithms is verified with theoretical deduction and simulation results. Simulation results show that these algorithms are very valuable for mining, clustering, modeling, statistical learning of multi-source time series data, as well as the detection and diagnosis of abnormal process changes.
形态相似聚类及其在时间序列异常检测中的应用
时间序列数据聚类是数据聚类领域的一个重要分支和难点。本文提出了时间数据形态相似度的定义,建立了一套仿射不变的时间序列数据形态相似度度量方法,并开发了基于形态相似度度量的形态聚类算法。利用时间序列数据的形态相似性度量,建立了两组时间序列数据的异常变化检测算法,可用于检测同一时间序列中不同周期采样序列的形态一致性和同一时间段内多个时间序列之间的形态一致性。在上述算法的基础上,提出了多种监控算法,可用于多种工业过程的状态监控。理论推导和仿真结果验证了方法和算法的有效性。仿真结果表明,这些算法对于多源时间序列数据的挖掘、聚类、建模、统计学习以及异常过程变化的检测和诊断具有重要的应用价值。
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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