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On the influence of time-series length in EMD to extract frequency content: simulations and models in biomedical signals.

机译:关于EMD中时间序列长度对提取频率内容的影响:生物医学信号中的仿真和模型。

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In this paper, fractional Gaussian noise (fGn) was used to simulate a homogeneously spreading broadband signal without any dominant frequency band, and to perform a simulation study about the influence of time-series length in the number of intrinsic mode functions (IMFs) obtained after empirical mode decomposition (EMD). In this context three models are presented. The first two models depend on the Hurst exponent H, and the last one is designed for small data lengths, in which the number of IMFs after EMD is obtained based on the regularity of the signal, and depends on an index measure of regularity. These models contribute to a better understanding of the EMD decomposition through the evaluation of its performance in fGn signals. Since an analytical formulation to evaluate the EMD performance is not available, using well-known signals allows for a better insight into the process. The last model presented is meant for application to real data. Its purpose is to predict, in function of the regularity signal, the time-series length that should be used when one wants to divide the spectrum into a pre-determined number of modes, corresponding to different frequency bands, using EMD. This is the case, e.g., in heart rate and blood pressure signals, used to assess sympathovagal balance in the central nervous system.
机译:本文使用分数高斯噪声(fGn)模拟没有任何主频带的均匀扩展的宽带信号,并对时间序列长度对获得的本征模式函数(IMF)的影响进行仿真研究在经验模式分解(EMD)之后。在这种情况下,提出了三种模型。前两个模型依赖于Hurst指数H,后一个模型则设计用于较小的数据长度,其中,根据信号的规律性获得EMD之后的IMF数量,并取决于规律性的指标度量。这些模型通过评估eG在fGn信号中的性能,有助于更好地理解EMD分解。由于没有评估EMD性能的分析公式,因此使用众所周知的信号可以更好地了解过程。提出的最后一个模型旨在应用于实际数据。其目的是根据规律性信号,预测要使用EMD将频谱划分为预定数量的模式(对应于不同的频段)时应使用的时间序列长度。例如,心率和血压信号就是这种情况,用于评估中枢神经系统的交感神经平衡。

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