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Adaptive control of nonlinear system using neuro-fuzzy learning by PSO algorithm

机译:基于PSO算法的神经模糊学习的非线性系统自适应控制。

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This paper proposes the optimization of parameters of neuro-fuzzy system using the particle swarm optimization. Neuro-fuzzy techniques have emerged from the fusion of neural networks and fuzzy inference systems. They could serve as a powerful tool for system modeling and control. These fuzzy systems are optimized by adapting the antecedent and consequent parameters. Among them, the ANFIS use the least square to optimize the consequent parameters and retropropagation to train the antecedent parameters. Several learning algorithms of fuzzy models have been proposed, e.g. evolutionary algorithms, such as particle swarm optimization. These different methods have been developed to learn the parameters of neuro-fuzzy system and to test them in the on-line control of nonlinear system.
机译:提出了基于粒子群算法的神经模糊系统参数优化方法。神经模糊技术已经从神经网络和模糊推理系统的融合中产生。它们可以用作系统建模和控制的强大工具。这些模糊系统通过调整先行参数和后续参数进行优化。其中,ANFIS使用最小二乘法来优化随后的参数,并进行反向传播以训练先前的参数。已经提出了几种模糊模型的学习算法,例如。进化算法,例如粒子群优化。已经开发出这些不同的方法来学习神经模糊系统的参数并在非线性系统的在线控制中对其进行测试。

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