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Classification of periodic, chaotic and random sequences using approximate entropy and Lempela€“Ziv complexity measures

机译:使用近似熵和Lempela“ Ziv复杂性”量度对周期,混沌和随机序列进行分类

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a€?Complexitya€? has several definitions in diverse fields. These measures are indicators of some aspects of the nature of the signal. Such measures are used to analyse and classify signals and as a signal diagnostics tool to distinguish between periodic, quasiperiodic, chaotic and random signals. Lempela€“Ziv (LZ) complexity and approximate entropy (ApEn) are such popular complexity measures that are widely used for characterizing biological signals also. In this paper, we compare the utility of ApEn, LZ complexities and Shannona€?s entropy in characterizing data from a nonlinear chaotic map (logistic map). In this work, we show that LZ and ApEn complexity measures can characterize the data complexities correctly for data sequences as short as 20 in length while Shannona€?s entropy fails for length less than 50. In the case of noisy sequences with 10% uniform noise, Shannona€?s entropy works only for lengths greater than 200 while LZ and ApEn are successful with sequences of lengths greater than 30 and 20, respectively.
机译:复杂性在不同领域有几个定义。这些措施是信号性质某些方面的指标。此类措施用于分析和分类信号,并用作信号诊断工具,以区分周期性,准周期性,混沌和随机信号。 Lempela“ Ziv(LZ)复杂度和近似熵(ApEn)”是这样流行的复杂度度量,也广泛用于表征生物信号。在本文中,我们比较了ApEn,LZ复杂度和Shannona熵在表征非线性混沌图(逻辑图)中的数据时的效用。在这项工作中,我们表明LZ和ApEn复杂度度量可以正确描述长度小于20的数据序列的数据复杂性,而Shannona的熵的长度小于50则失败。在噪声序列为10%均匀的情况下噪声,香农纳熵仅适用于长度大于200的序列,而LZ和ApEn分别对长度大于30和20的序列成功。

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