生物信号建模的自适应非线性自回归方法

U. C. Eid, F. Karameh
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引用次数: 0

摘要

许多生物信号如脑电图(EEG)具有噪声和复杂性,长期以来对单因素和多因素问题的分析和预测构成了重大挑战。尽管非线性信号建模具有广泛的适用性,但当信号被噪声污染或具有时变性质时,非线性信号建模的效果往往有限。本文介绍了一种对时间序列数据(如脑电图记录)进行联合建模和去噪的新方法。该方法将最近引入的混合自回归核模型扩展到噪声时不变信号,采用平方根立方卡尔曼滤波自适应跟踪(非线性)模型回归参数并预测时间序列。该方法被证明在均方误差方面优于Yule-Walker方法,并考虑到加性高斯白噪声的存在。仿真包括一个非线性基准例子,混沌Mackey Glass时间序列,和真实的脑电图记录。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An adaptive nonlinear autoregressive approach for modeling biological signals
The noisy and complex nature of many biological signals such as the electroencephalogram (EEG) has long constituted a major challenge in terms of analysis and prediction for single and multivariate problems. Nonlinear signal modeling, despite its widespread applicability, often shows limited success whenever the signal is contaminated with noise or is time varying in nature. We herein introduce a novel approach for joint modeling and de-noising of time series data such as EEG recordings. The approach extends a recently introduced hybrid autoregressive kernel model to noisy time-invariant signals by employing Square-Root Cubature Kalman Filtering for adaptively tracking the (nonlinear) model regression parameters and predicting the time series. The approach is demonstrated to outperform the Yule-Walker method previously used in terms of mean square error, and to account for the presence of additive white Gaussian noise. Simulations include a nonlinear benchmark example, the chaotic Mackey Glass time series, and real EEG recordings.
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