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Stochastic Model Reduction by Maximizing Independence

机译:通过最大化独立性来减少随机模型

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摘要

By analysing information descriptions in state space models of linear stochastic systems, this paper proposes two model reduction methods via principles of maximizing independence and conditional independence among the reduced state vector, respectively. These methods are based on state aggregation. The independence and conditional independence are measured by the Kullback-Leibler information distance. It is demonstrated that the maximum conditional independence method is not only applicable to stable systems, but also applicable to unstable systems. Simulation results illustrate the efficiency of the present methods.
机译:通过分析线性随机系统状态空间模型中的信息描述,本文提出了两种模型简化方法,分别基于最大化状态向量与条件状态向量之间的条件独立性。这些方法基于状态聚合。独立性和条件独立性由Kullback-Leibler信息距离度量。证明了最大条件独立性方法不仅适用于稳定系统,而且适用于不稳定系统。仿真结果说明了本方法的有效性。

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