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首页> 外文期刊>International Journal of Wavelets, Multiresolution and Information Processing >MULTIRESOLUTION ANALYSIS FOR SEPARATING CLOSELY SPACED FREQUENCIES WITH AN APPLICATION TO INDIAN MONSOON RAINFALL DATA
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MULTIRESOLUTION ANALYSIS FOR SEPARATING CLOSELY SPACED FREQUENCIES WITH AN APPLICATION TO INDIAN MONSOON RAINFALL DATA

机译:分离紧密空间频率的多分辨率分析及其在印度季风降雨数据中的应用

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摘要

In this paper we make use of the multiresolution properties of discrete wavelets, including their ability to remove interference, to reveal closely spaced spectral peaks. We propose a procedure which we first verify on two test signals, and then apply it to the time series of homogeneous Indian monsoon rainfall annual data. We show that, compared to empirical mode decomposition, discrete wavelet analysis is more effective in identifying closely spaced frequencies if used in combination with classical power spectral analysis of wavelet-based partially reconstructed time series. An effective criterion based on better localization of specific frequency components and accurate estimation of their amplitudes is used to select an appropriate wavelet. It is shown here that the discrete Meyer wavelet has the best frequency properties among the wavelet families considered (Haar, Daubechies, Coiflet and Symlet). In rainfall data, the present analysis reveals two additional spectral peaks besides the fifteen found by classical spectral analysis. Moreover, these two new peaks have been found to be statistically significant, although a detailed discussion of testing for significance is being presented elsewhere.
机译:在本文中,我们利用离散小波的多分辨率特性(包括其消除干扰的能力)来揭示紧密分布的光谱峰。我们提出一个程序,首先对两个测试信号进行验证,然后将其应用于均匀的印度季风降雨年度数据的时间序列。我们表明,与经验模态分解相比,离散小波分析如果与基于小波的部分重构时间序列的经典功率谱分析结合使用,则在识别紧密间隔的频率方面更为有效。基于特定频率分量的更好定位和其幅度的准确估计的有效标准用于选择适当的小波。此处显示的是,离散Meyer小波在所考虑的小波族(Haar,Daubechies,Coiflet和Symlet)中具有最好的频率特性。在降雨数据中,本分析显示了除经典谱分析发现的十五个峰以外的两个谱峰。此外,尽管在别处对显着性测试进行了详细讨论,但发现这两个新峰具有统计学意义。

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