一种基于极限学习机和镜像扩展相结合的改进经验模态分解来抑制末端效应

Weibo Zhang, Jianzhong Zhou
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引用次数: 4

摘要

在经验模态分解的研究过程中,有一个悬而未决的问题叫做末端效应。为了解决这一问题,本文提出了一种基于极值学习机和镜像扩展相结合的极值扩展方法。极值扩展工作包括两个步骤:首先,利用极值学习机方法分别预测原始数据序列两端的几个极值点,形成初步展开信号;然后用极值镜像展开法对初始信号进行进一步扩展。从最终得到的信号中可以得到相对真实的信号包络,有效地解决了终端效应。将该方法应用于仿真和空化信号的处理。通过与传统方法的比较,表明了该方法在抑制端效应方面的有效性和优越性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An improved empirical mode decomposition based on the combination of extreme learning machine and mirror extension for restraining the end effects
In the progress of empirical mode decomposition, there is an open problem called end effects. To solve this problem, an extrema extension method based on the combination of extreme learning machine and mirror extension is proposed in this paper. The extrema extension work includes two steps: firstly, the extreme learning machine method is utilized to predict several extreme points separately at both ends of the original data series to form the preliminary expansion signal; then the preliminary signal is further expanded by the method of extrema mirror expansion. From the final resulting signal the relatively true envelopes of the signal can be obtained and the end effects will be effectively resolved. The proposed method is applied in the processing of simulation and the cavitation signals. Compared with the traditional methods, the result of the proposed method shows its effectiveness and superiority in restraining the end effects.
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