多工况随机系统辨识:向量相关FP-ARX参数化

F. Kopsaftopoulos, S. Fassois
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引用次数: 11

摘要

研究了在多种工况下随机系统的识别问题,利用从每种工况中获得的激励响应信号进行识别。每个工作条件的特征是由几个可测量的变量组成一个矢量工作参数。该问题是在一个新的框架内解决的,该框架由假设的向量相关功能池ARX (VFP-ARX)模型、适当的数据池技术和统计参数估计组成。提出了最小二乘和最大似然估计方法。建立了它们的强一致性,并通过蒙特卡罗研究评估了它们的性能特征
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Identification of Stochastic Systems Under Multiple Operating Conditions: The Vector Dependent FP-ARX Parametrization
The problem of identifying stochastic systems under multiple operating conditions, by using excitation-response signals obtained from each condition, is addressed. Each operating condition is characterized by several measurable variables forming a vector operating parameter. The problem is tackled within a novel framework consisting of postulated vector dependent functionally pooled ARX (VFP-ARX) models, proper data pooling techniques, and statistical parameter estimation. Least squares (LS) and maximum likelihood (ML) estimation methods are developed. Their strong consistency is established and their performance characteristics are assessed via a Monte Carlo study
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