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Period analysis based on SVM and wavelet variance for time series

机译:基于SVM和小波差的时间序列的周期分析

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In the time series period analysis, the period obtained by the maximal wavelet variance has serious errors. In this paper, we present a method of LS-SVM to approximate the wavelet variance or power spectrum at different scales, and then obtain the period of sequence by estimating the maximum value. The experiment indicates that LS-SVM method can approximate wavelet variance effectively, and can estimate the period of the time series accurately. It is an effective method for time series period analysis and power spectral analysis.
机译:在时间序列周期分析中,通过最大小波差异获得的时段具有严重的误差。在本文中,我们介绍了一种LS-SVM的方法,以近似不同刻度的小波差异或功率谱,然后通过估计最大值来获得序列周期。实验表明LS-SVM方法可以有效地近似小波差异,并且可以精确估计时间序列的时期。它是时间序列周期分析和功率谱分析的有效方法。

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