引力搜索算法在切换线性系统辨识中的应用

H. Sadeghi, N. Eghbal, R. Moghaddam
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引用次数: 2

摘要

本文的工作是关于从输入-输出数据中识别切换线性系统。这个问题的主要挑战是,数据只能作为由有限的一组不同的相互作用的线性子系统产生的观察结果的混合物,因此人们无法先验地知道哪个子系统产生了哪些数据。为了克服这一困难,我们将识别每个子模型的问题形式化地提出为一个组合l0优化问题。为了降低np困难问题的复杂性,我们使用了引力搜索算法,并给出了松弛是精确的充分条件。整个识别过程允许我们一个接一个地提取参数向量(与不同子系统相关),而无需根据各自的生成子模型对数据进行任何事先聚类。仿真结果证明了该方法的可行性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application Gravitational Search Algorithm in Identification of Switched Linear Systems
The work presented in this paper is concerned with the identification of switched linear systems from input-output data. The main challenge with this problem is that the data are available only as a mixture of observations generated by a finite set of different interacting linear subsystems so that one does not know a priori which subsystem has generated which data. To overcome this difficulty, we formally pose the problem of identifying each submodel as a combinatorial ℓ0 optimization problem. To decrease the complexity of this NP-hard problem we use a gravitational search algorithm, we present sufficient conditions for this relaxation to be exact. The whole identification procedure allows us to extract the parameter vectors (associated with the different subsystems) one after another without any prior clustering of the data according to their respective generating submodels. Some simulation results are included to support the potentialities of the proposed method.
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