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An adaptive fuzzy predictive control of nonlinear processes based on Multi-Kernel least squares support vector regression

机译:基于多核最小二乘支持向量回归的非线性过程的自适应模糊预测控制

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In this paper, an adaptive fuzzy Generalized Predictive Control (GPC) is proposed for discrete-time nonlinear systems via Takagi-Sugeno system based Multi-Kernel Least Squares Support Vector Regression (TS-LSSVR). The proposed adaptive TS-LSSVR strategy is constructed using a multi-kernel least squares support vector regression where the learning procedure of the proposed TS-LSSVR is achieved in three steps: In the first step, which is an offline step, the antecedent parameters of the TS-LSSVR are initialized using a fuzzy c-means clustering algorithm. The second step, which is an online step, deals with the adaptation of the antecedent parameters which can be implemented using a back-propagation algorithm. Finally, the last online step is to use the Fixed-Budget Kernel Recursive Least Squares algorithm to obtain the consequent parameters. Furthermore, an adaptive generalized predictive control for nonlinear systems is introduced by integrating the proposed adaptive TS-LSSVR into the generalized predictive controller (GPC). The reliability of the proposed adaptive TS-LSSVR GPC controller is investigated by controlling two nonlinear systems: A surge tank and continuous stirred tank reactor (CSTR) systems. The proposed TS-LSSVR GPC controller has demonstrated good results and efficiently controlled the nonlinear plants. Furthermore, the adaptive TS-LSSVR GPC has the ability to deal with disturbances and variations in the nonlinear systems. (C) 2018 Elsevier B.V. All rights reserved.
机译:在本文中,提出了一种通过基于Takagi-Sugeno系统的多核最小二乘支持向量回归(TS-LSSVR)的离散时间非线性系统的自适应模糊广义预测控制(GPC)。所提出的自适应TS-LSSVR策略是使用多核最小二乘支持的支持向量回归,其中三个步骤实现了所提出的TS-LSSVR的学习过程:在第一步中,这是离线步骤的前进参数使用模糊C均值聚类算法初始化TS-LSSVR。作为在线步骤的第二步,处理可以使用反向传播算法实现的前进参数的适应。最后,上次在线步骤是使用固定预算内核递归最小二乘算法来获得改变的参数。此外,通过将所提出的自适应TS-LSSVR集成到广义预测控制器(GPC)中来引入非线性系统的自适应广义预测控制。通过控制两个非线性系统来研究所提出的自适应TS-LSSVR GPC控制器的可靠性:浪涌罐和连续搅拌罐式反应器(CSTR)系统。所提出的TS-LSSVR GPC控制器已经证明了良好的结果,有效地控制了非线性植物。此外,Adaptive TS-LSSVR GPC能够处理非线性系统中的扰动和变化。 (c)2018 Elsevier B.v.保留所有权利。

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