AutoSW:一种新的基于自动滑动窗口的传感器数据变化点检测方法

E. B. Nejad, Carla Silva, A. Rodrigues, A. Jorge, I. Dutra
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引用次数: 0

摘要

变化点检测方法试图在给定时间序列的模式和特征中发现任何突然变化。本文提出了一种自动计算窗宽的变化点检测方法。提出的算法AutoSW基于Python破裂包的滑动窗口搜索方法,并使用统计概念的子集来计算可能的最佳窗口宽度。采用不同的真实时间序列和合成时间序列,将该算法与PELT等常用方法进行了比较。结果表明,在测试的时间序列中,AutoSW可以比PELT产生更好的变化点集。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
AutoSW: a new automated sliding window-based change point detection method for sensor data
Change point detection methods try to find any sudden changes in the patterns and features of a given time series. In this paper a new change point detection method is presented, where the window width is automatically calculated. The proposed algorithm, AutoSW, is based on a Sliding Window search method of the Python ruptures package and uses a subset of statistical concepts to compute a possibly optimal window width. The proposed algorithm is compared with some other popular methods such as PELT using different real-world and synthetic time series. Results show that AutoSW can perform better than PELT producing a better set of change points in the time series tested.
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