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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Pattern identification in dynamical systems via symbolic time series analysis
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Pattern identification in dynamical systems via symbolic time series analysis

机译:通过符号时间序列分析在动力系统中进行模式识别

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摘要

This paper presents symbolic time series analysis (STSA) of multi-dimensional measurement data for pattern identification in dynamical systems. The proposed methodology is built upon concepts derived from Information Theory and Automata Theory. The objective is not merely to classify the time series patterns but also to identify the variations therein. To achieve this goal, a symbol alphabet is constructed from raw data through partitioning of the data space. The maximum entropy method of partitioning is extended to multi-dimensional space. The resulting symbol sequences, generated from time series data, are used to model the dynamical information as finite state automata and the patterns are represented by the stationary state probability distributions. A novel procedure for determining the structure of the finite state automata, based on entropy rate, is introduced. The diversity among the observed patterns is quantified by a suitable measure. The efficacy of the STSA technique for pattern identification is demonstrated via laboratory experimentation on nonlinear systems. (c) 2007 Pattern Recognition Society. Published by Elsevier Ltd. All rights reserved.
机译:本文提出了多维测量数据的符号时间序列分析(STSA),用于动态系统中的模式识别。所提出的方法是建立在从信息理论和自动机理论衍生的概念上的。目的不仅是对时间序列模式进行分类,而且要识别其中的变化。为了实现此目标,通过对数据空间进行分区来从原始数据构建符号字母。最大熵划分方法扩展到多维空间。从时间序列数据生成的结果符号序列用于将动态信息建模为有限状态自动机,并且模式由稳态概率分布表示。介绍了一种基于熵率确定有限状态自动机结构的新方法。观察到的模式之间的多样性通过合适的方法进行量化。 STSA技术用于模式识别的功效已通过非线性系统的实验室实验得以证明。 (c)2007模式识别学会。由Elsevier Ltd.出版。保留所有权利。

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