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Identification and control of nonlinear systems by a dissimilation particle swarm optimization-based Elman neural network
Authors:Hong-Wei Ge  Feng Qian  Yan-Chun Liang  Wen-li Du  Lu Wang
Institution:aAutomation Institute, State-Key Laboratory of Chemical Engineering, East China University of Science and Technology, Shanghai 200237, China;bCollege of Computer Science and Technology, Jilin University, Changchun 130012, China;cInstitute of High Performance Computing, Singapore 117528, Singapore
Abstract:In this paper, we first present a learning algorithm for dynamic recurrent Elman neural networks based on a dissimilation particle swarm optimization. The proposed algorithm computes concurrently both the evolution of network structure, weights, initial inputs of the context units, and self-feedback coefficient of the modified Elman network. Thereafter, we introduce and discuss a novel control method based on the proposed algorithm. More specifically, a dynamic identifier is constructed to perform speed identification and a controller is designed to perform speed control for Ultrasonic Motors (USM). Numerical experiments show that the novel identifier and controller based on the proposed algorithm can both achieve higher convergence precision and speed than other state-of-the-art algorithms. In particular, our experiments show that the identifier can approximate the USM's nonlinear input–output mapping accurately. The effectiveness of the controller is verified using different kinds of speeds of constant, step, and sinusoidal types. Besides, a preliminary examination on a randomly perturbation also shows the robust characteristics of the two proposed models.
Keywords:Dynamic recurrent neural network  Particle swarm optimization  Nonlinear system identification  System control  Ultrasonic motor
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