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首页> 外文期刊>Journal of Scientific Computing >Iterative Filtering Decomposition Based on Local Spectral Evolution Kernel
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Iterative Filtering Decomposition Based on Local Spectral Evolution Kernel

机译:基于局部谱演化核的迭代滤波分解

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摘要

The synthesizing information, achieving understanding, and deriving insight from increasingly massive, time-varying, noisy and possibly conflicting data sets are some of most challenging tasks in the present information age. Traditional technologies, such as Fourier transform and wavelet multi-resolution analysis, are inadequate to handle all of the above-mentioned tasks. The empirical model decomposition (EMD) has emerged as a new powerful tool for resolving many challenging problems in data processing and analysis. Recently, an iterative filtering decomposition (IFD) has been introduced to address the stability and efficiency problems of the EMD. Another data analysis technique is the local spectral evolution kernel (LSEK), which provides a near prefect low pass filter with desirable time-frequency localizations. The present work utilizes the LSEK to further stabilize the IFD, and offers an efficient, flexible and robust scheme for information extraction, complexity reduction, and signal and image understanding. The performance of the present LSEK based IFD is intensively validated over a wide range of data processing tasks, including mode decomposition, analysis of time-varying data, information extraction from nonlinear dynamic systems, etc. The utility, robustness and usefulness of the proposed LESK based IFD are demonstrated via a large number of applications, such as the analysis of stock market data, the decomposition of ocean wave magnitudes, the understanding of physiologic signals and information recovery from noisy images. The performance of the proposed method is compared with that of existing methods in the literature. Our results indicate that the LSEK based IFD improves both the efficiency and the stability of conventional EMD algorithms.
机译:从日益庞大的,随时间变化的,嘈杂的和可能相互冲突的数据集中来合成信息,获得理解并从中获得见识是当前信息时代最具挑战性的任务。传统技术,例如傅立叶变换和小波多分辨率分析,不足以处理所有上述任务。经验模型分解(EMD)已成为解决数据处理和分析中许多挑战性问题的强大工具。最近,迭代滤波分解(IFD)已被引入以解决EMD的稳定性和效率问题。另一种数据分析技术是局部频谱演化内核(LSEK),它提供具有理想时频定位的近乎完美的低通滤波器。本工作利用LSEK进一步稳定了IFD,并为信息提取,降低复杂度以及信号和图像理解提供了一种高效,灵活和健壮的方案。目前,基于LSEK的IFD的性能已在各种数据处理任务中得到了充分验证,包括模式分解,时变数据分析,从非线性动态系统中提取信息等。所提出的LESK的实用性,鲁棒性和实用性基于IFD的IFD在大量应用中得到了证明,例如股票市场数据分析,海浪强度分解,对生理信号的理解以及从嘈杂图像中恢复信息等。将该方法的性能与文献中现有方法的性能进行比较。我们的结果表明,基于LSEK的IFD可以提高传统EMD算法的效率和稳定性。

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