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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Automatic decomposition of time series into step, ramp, and impulse primitives
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Automatic decomposition of time series into step, ramp, and impulse primitives

机译:将时间序列自动分解为阶跃,斜坡和脉冲原语

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摘要

Time series data that can be modeled as linear combinations of weighted and shifted primitive functions such as ramps, steps and impulses are representative of many industrial, manufacturing, and business processes. Data of this type also are found in statistical process control, structural health monitoring, and other system diagnosis applications. Often, the existence of one or more of these primitive functions may be indicative of the occurrence of a specific process event, making their detection and interpretation of great interest. The human eye is an exceptional tool at this kind of pattern recognition. However, for processes that generate large amounts of data the human eye encounters difficulties related to speed and consistency necessitating an automated approach. In this paper, we consider the problem of decomposing a time series into its steps, ramps, and impulses constituents and expressing it as a linear combination of weighted and shifted versions of these primitives. We express the problem as a least squares error minimization coupled with a combinatorial search to arrive at an acceptable decomposition. We show that under certain conditions, such decomposition is possible and can be obtained efficiently using a sliding window approach. We illustrate the results with several examples. (c) 2005 Pattern Recognition Society. Published by Elsevier Ltd. All rights reserved.
机译:可以建模为加权和移位原始函数(如斜坡,阶跃和脉冲)的线性组合的时间序列数据代表了许多工业,制造和业务流程。在统计过程控制,结构健康监视和其他系统诊断应用程序中也可以找到此类数据。通常,这些原始功能中的一个或多个功能的存在可能表示特定过程事件的发生,这使它们的检测和解释引起极大兴趣。在这种模式识别中,人眼是一种出色的工具。但是,对于生成大量数据的过程,人眼会遇到与速度和一致性相关的困难,因此需要一种自动方法。在本文中,我们考虑将时间序列分解为其阶跃,斜率和脉冲成分并将其表示为这些图元的加权版本和移位版本的线性组合的问题。我们将问题表示为最小二乘误差最小化与组合搜索以得出可接受的分解。我们表明,在某些条件下,这种分解是可能的,并且可以使用滑动窗口方法有效地获得。我们用几个例子来说明结果。 (c)2005模式识别学会。由Elsevier Ltd.出版。保留所有权利。

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