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Multivariate recursive Bayesian linear regression and its applications to output-only identification of time-varying mechanical systems

机译:多变量递归贝叶斯线性回归及其应用于仅输出时断机械系统的识别

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摘要

This article focuses on the output-only recursive identification of time-varying systems by using parametric time-domain methods. A novel multivariate recursive Bayesian linear regression method is proposed based on the vector time-dependent autoregressive moving average model. The standard setup of univariate batch Bayesian linear regression is first extended to the multivariate case for multiple response signal modeling and further extended to the recursive case to meet the output-only recursive identification requirement of practical systems. A sliding window mechanism is finally applied to deemphasize data from the remote past and fix the computational complexity for each consecutive update, allowing the proposed method to be capable of tracking the time-varying dynamics online. The proposed multivariate recursive Bayesian linear regression method is first validated by a simple numerical system and subsequently applied to identify two mechanical systems with typical time-varying dynamics. Comparative identification results via Monte Carlo tests numerically and experimentally demonstrate the superior achievable accuracy and time-varying tracking capability of the proposed method.
机译:本文主要研究时变系统的参数时域递推辨识问题。基于向量时变自回归滑动平均模型,提出了一种新的多元递归贝叶斯线性回归方法。首先将单变量批量贝叶斯线性回归的标准设置扩展到多响应信号建模的多变量情况,并进一步扩展到递归情况,以满足实际系统仅输出递归辨识的要求。最后采用滑动窗口机制来消除来自遥远过去的数据,并固定每次连续更新的计算复杂性,从而使所提出的方法能够在线跟踪时变动态。提出的多元递归贝叶斯线性回归方法首先通过一个简单的数值系统进行验证,然后应用于识别两个具有典型时变动力学的机械系统。通过montecarlo实验和数值模拟的比较识别结果表明,该方法具有较高的识别精度和时变跟踪能力。

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