Developing Fast Techniques for Periodicity Analysis of Time Series

Muneera Yousif Yaqoob MOHAMMED, Mete Celik
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引用次数: 2

Abstract

The periodicity analysis of time series is the analysis of a set of measurements recorded for one or more variables arranged over time. Periodicity mining can be used in many application domains such as meteorology, astronomy, and econometrics. The techniques developed to find the periodicity are based on Fourier transform (FT), wavelet transform (WT), and dynamic time warping (DTW). Although the DTW performs well for periodicity analysis of time series, it is computationally complex. This study proposes two new algorithms which are formed by combining fast Fourier transform (FFT) with dynamic time warping (FFT-DTW) and wavelet transform with dynamic time warping (WT-DTW). The performances of the proposed algorithms were evaluated on real and synthetic datasets and the results are promising.
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时间序列周期分析快速技术的发展
时间序列的周期性分析是对随时间排列的一个或多个变量记录的一组测量结果的分析。周期性挖掘可用于许多应用领域,如气象学、天文学和计量经济学。基于傅里叶变换(FT)、小波变换(WT)和动态时间规整(DTW)的周期性发现技术已经发展起来。虽然DTW对时间序列的周期性分析有很好的效果,但计算上比较复杂。本文提出了将快速傅里叶变换(FFT)与动态时间规整(FFT- dtw)和小波变换与动态时间规整(WT-DTW)相结合形成的两种新算法。在真实数据集和合成数据集上对所提算法的性能进行了评价,结果令人满意。
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