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A hybrid symplectic principal component analysis and central tendency measure method for detection of determinism in noisy time series with application to mechanomyography

机译:一种混合杂交主成分分析和中央趋势测量方法,用于检测嘈杂时间序列中的确定性与力学术

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摘要

We present a hybrid symplectic geometry and central tendency measure (CTM) method for detection of determinism in noisy time series. CTM is effective for detecting determinism in short time series and has been applied in many areas of nonlinear analysis. However, its performance significantly degrades in the presence of strong noise. In order to circumvent this difficulty, we propose to use symplectic principal component analysis (SPCA), a new chaotic signal de-noising method, as the first step to recover the system dynamics. CTM is then applied to determine whether the time series arises from a stochastic process or has a deterministic component. Results from numerical experiments, ranging from six benchmark deterministic models to 1/f noise, suggest that the hybrid method can significantly improve detection of determinism in noisy time series by about 20 dB when the data are contaminated by Gaussian noise. Furthermore, we apply our algorithm to study the mechanomyographic (MMG) signals arising from contraction of human skeletal muscle. Results obtained from the hybrid symplectic principal component analysis and central tendency measure demonstrate that the skeletal muscle motor unit dynamics can indeed be deterministic, in agreement with previous studies. However, the conventional CTM method was not able to definitely detect the underlying deterministic dynamics. This result on MMG signal analysis is helpful in understanding neuromuscular control mechanisms and developing MMG-based engineering control applications.
机译:我们介绍了一种混合杂交几何和中央趋势措施(CTM)方法,用于检测嘈杂的时间序列中的确定性。 CTM对于在短时间序列中检测确定性,并且已应用于许多非线性分析领域。然而,其性能在存在强烈噪音的情况下显着降低。为了规避这种困难,我们建议使用辛主成分分析(SPCA),一种新的混沌信号去噪方法,作为恢复系统动态的第一步。然后应用CTM以确定时间序列是否由随机过程中出现或具有确定性组件。来自数值实验的结果,从六个基准确定性模型到1 / f噪声,表明混合方法可以显着改善噪声时间序列中的确定性检测到大声噪声污染时约20dB。此外,我们应用我们的算法来研究由人骨骼肌收缩产生的机制(MMG)信号。从杂交杂交主成分分析和中央趋势措施获得的结果表明,骨骼肌机组动态确实可以决定,同时与之前的研究一致。然而,传统的CTM方法无法肯定地检测潜在的确定性动态。 MMG信号分析的这一结果有助于了解神经肌肉控制机制和开发基于MMG的工程控制应用。

著录项

  • 来源
    《Chaos》 |2013年第2期|共8页
  • 作者

    Xie H.; Dokos S.;

  • 作者单位

    Graduate School of Biomedical Engineering The University of New South Wales Sydney 2052 Australia;

    Graduate School of Biomedical Engineering The University of New South Wales Sydney 2052 Australia;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 自然科学总论;
  • 关键词

    component analysis; measure method; mechanomyography;

    机译:组分分析;测量方法;力学术;

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