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Empirical mode decomposition revisited by multicomponent non-smooth convex optimization

机译:多分量非光滑凸优化再探经验模式分解

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摘要

This work deals with the decomposition of a signal into a collection of intrinsic mode functions. More specifically, we aim to revisit Empirical Mode Decomposition (EMD) based on a sifting process step, which highly depends on the choice of an interpolation method, the number of inner iterations, and that does not have any convergence guarantees. The proposed alternative to the sifting process is based on non-smooth convex optimization allowing to integrate flexibility in the criterion we aim to minimize. We discuss the choice of the criterion, we describe the proposed algorithm and its convergence guarantees, we propose an extension to deal with multivariate signals, and we figure out the effectiveness of the proposed method compared to the state-of-the-art.
机译:这项工作涉及将信号分解为固有模式函数的集合。更具体地说,我们旨在基于筛选过程步骤重新审视经验模式分解(EMD),该过程很大程度上取决于插值方法的选择,内部迭代的次数,并且没有任何收敛保证。筛选过程的替代方案基于非光滑凸优化,可将灵活性集成到我们旨在最小化的标准中。我们讨论了准则的选择,描述了所提出的算法及其收敛性保证,我们提出了一种扩展以处理多元信号,并且与最新技术相比,我们发现了所提出方法的有效性。

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