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Centroid-based sifting for empirical mode decomposition

机译:基于质心的经验模态分解

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A novel sifting method based on the concept of the ‘local centroids’ of a signal is developed for empirical mode decomposition (EMD), with the aim of reducing the mode-mixing effect and decomposing those modes whose frequencies are within an octave. Instead of directly averaging the upper and lower envelopes, as suggested by the original EMD method, the proposed technique computes the local mean curve of a signal by interpolating a set of ‘local centroids’, which are integral averages over local segments between successive extrema of the signal. With the ‘centroid’-based sifting, EMD is capable of separating intrinsic modes of oscillatory components with their frequency ratio ν even up to 0.8, thus greatly mitigating the effect of mode mixing and enhancing the frequency resolving power. Inspection is also made to show that the integral property of the ‘centroid’-based sifting can make the decomposition more stable against noise interference.
机译:基于经验模态分解(EMD),开发了一种基于信号“局部质心”概念的新颖筛选方法,目的是减少模式混合效应并分解那些频率在八度音程内的模式。代替了原始EMD方法所建议的直接对上下包络进行平均的方法,所提出的技术通过对一组“局部质心”进行插值来计算信号的局部均值曲线,这些“局部质心”是连续极值之间局部区域上的积分平均值。信号。通过基于“质心”的筛选,EMD能够以高达0.8的频率比ν分离振荡成分的固有模式,从而大大减轻了模式混合的影响并增强了频率分辨能力。检查还表明,基于“质心”的筛分的整体性质可以使分解更稳定,免受噪声干扰。

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