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Identification of Dynamical Systems Under Multiple Operating Conditions via Functionally Pooled ARMAX Models

机译:通过功能汇集的ARMAX模型在多个操作条件下识别动态系统

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In a companion paper [1], a novel framework for the identification of stochastic dynamical systems under multiple operating conditions, with each condition characterized by a measurable variable, is introduced and used for the identification of postulated Functionally Pooled AutoRegressive with eXogenous input (FP-ARX) models. The present paper focuses on the use of this framework for the identification of FP-ARMAX models, which additionally incorporate Moving Average (MA) part. FP-ARMAX models are conceptual extensions of their conventional ARMAX counterparts, with the important difference that their parameters and innovations variance are functions of the measurable variable and that they account for cross-correlations among the operating conditions. Yet, FP-ARMAX model identification is more complicated, and is presently achieved via Prediction Error and Maximum Likelihood type methods. The asymptotic properties of the Prediction Error estimator are established, and the estimators' performance characteristics are assessed via a Monte Carlo study.
机译:在伴随纸张[1]中,引入了一种用于识别多个操作条件下的随机动力系统的新框架,其特征在于可测量变量的每个条件,并用于识别出在外源输入(FP-)的功能上汇集过源极ARX)模型。本文侧重于使用该框架来识别FP-ARMAX模型,该模型还包含移动平均(MA)部分。 FP-ARMAX模型是传统ARMAX对应物的概念扩展,其参数和创新方差是可测量变量的功能,并且它们在操作条件之间呈现交叉相关性。然而,FP-ARMAX模型识别更加复杂,并且通过预测误差和最大似然类型方法目前地实现。建立预测误差估计器的渐近特性,通过蒙特卡罗研究评估估计器的性能特征。

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