Identification of multiple-mode linear models based on particle swarm optimizer with cyclic network mechanism (Q1992739)
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scientific article; zbMATH DE number 6972096
| Language | Label | Description | Also known as |
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| English | Identification of multiple-mode linear models based on particle swarm optimizer with cyclic network mechanism |
scientific article; zbMATH DE number 6972096 |
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Identification of multiple-mode linear models based on particle swarm optimizer with cyclic network mechanism (English)
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5 November 2018
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Summary: This paper studies the metaheuristic optimizer-based direct identification of a multiple-mode system consisting of a finite set of linear regression representations of subsystems. To this end, the concept of a multiple-mode linear regression model is first introduced, and its identification issues are established. A method for reducing the identification problem for multiple-mode models to an optimization problem is also described in detail. Then, to overcome the difficulties that arise because the formulated optimization problem is inherently ill-conditioned and nonconvex, the cyclic-network-topology-based constrained particle swarm optimizer (CNT-CPSO) is introduced, and a concrete procedure for the CNT-CPSO-based identification methodology is developed. This scheme requires no prior knowledge of the mode transitions between subsystems and, unlike some conventional methods, can handle a large amount of data without difficulty during the identification process. This is one of the distinguishing features of the proposed method. The paper also considers an extension of the CNT-CPSO-based identification scheme that makes it possible to simultaneously obtain both the optimal parameters of the multiple submodels and a certain decision parameter involved in the mode transition criteria. Finally, an experimental setup using a DC motor system is established to demonstrate the practical usability of the proposed metaheuristic optimizer-based identification scheme for developing a multiple-mode linear regression model.
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0.8179567456245422
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