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首页> 外文期刊>Systems, Man, and Cybernetics, Part C: Applications and Reviews, IEEE Transactions on >Nonlinear System Control Using Adaptive Neural Fuzzy Networks Based on a Modified Differential Evolution
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Nonlinear System Control Using Adaptive Neural Fuzzy Networks Based on a Modified Differential Evolution

机译:基于修正差分进化的自适应神经模糊网络非线性系统控制

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摘要

This study presents an adaptive neural fuzzy network (ANFN) controller based on a modified differential evolution (MODE) for solving control problems. The proposed ANFN controller adopts a functional link neural network as the consequent part of the fuzzy rules. Thus, the consequent part of the ANFN controller is a nonlinear combination of input variables. The proposed MODE learning algorithm adopts an evolutionary learning method to optimize the controller parameters. For design optimization, a new criterion is introduced. A hardware-in-the loop control technique is developed and applied to the designed ANFN controller using the MODE learning algorithm. The proposed ANFN controller with the MODE learning algorithm (ANFN-MODE) is used in two practical applications-the planetary-train-type inverted pendulum system and the magnetic levitation system. The experiment is developed in a real-time visual simulation environment. Experimental results of this study have demonstrated the robustness and effectiveness of the proposed ANFN-MODE controller.
机译:这项研究提出了一种基于改进的差分进化(MODE)的自适应神经模糊网络(ANFN)控制器,用于解决控制问题。所提出的ANFN控制器采用功能链接神经网络作为模糊规则的后续部分。因此,ANFN控制器的结果部分是输入变量的非线性组合。提出的MODE学习算法采用进化学习的方法来优化控制器参数。为了优化设计,引入了新的标准。开发了一种硬件在环控制技术,并使用MODE学习算法将其应用于设计的ANFN控制器。所提出的具有MODE学习算法的ANFN控制器(ANFN-MODE)被用于两个实际应用中:行星轮式倒立摆系统和磁悬浮系统。该实验是在实时视觉模拟环境中开发的。这项研究的实验结果证明了所提出的ANFN-MODE控制器的鲁棒性和有效性。

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