Functional Link NN based Adaptive Fuzzy Control for Nonlinear Dynamic Systems

Muhammad Tahir Abbas, R. Badar
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Abstract

Since their inception, fuzzy logic and its variants involving neural networks have witnessed tremendous applications in the area of identification and control of nonlinear dynamic plants. Fuzzy logic being the universal approximator becomes more powerful when combined with inherent learning capability of Neural Networks (NNs). This research presents a novel adaptive fuzzy control based on Functional Link NNs (FLNNs). The Laguerre orthogonal polynomials have been used for functional expansion of FLNNs. The parameter adaptation and thus the shape of the membership functions and weights of the polynomials of FLNNs are adapted online based on gradient descent optimization technique. Finally, the proposed control scheme has been checked for its performance using comparative evaluation with conventional control schemes applied to different nonlinear plants. The nonlinear time domain simulation results and their quantitative analysis validate the superior performance of the proposed adaptive fuzzy FLNN control.
基于函数链神经网络的非线性动态系统自适应模糊控制
自模糊逻辑及其变体神经网络出现以来,模糊逻辑及其变体神经网络在非线性动态对象的识别和控制领域得到了广泛的应用。模糊逻辑作为一种通用逼近器,与神经网络的固有学习能力相结合,使其变得更加强大。提出了一种基于功能链路神经网络(flnn)的自适应模糊控制方法。将拉盖尔正交多项式用于flnn的泛函展开。基于梯度下降优化技术,在线自适应flnn的参数,从而自适应隶属函数的形状和多项式的权值。最后,通过与传统控制方案在不同非线性对象上的对比评价,验证了所提控制方案的性能。非线性时域仿真结果及其定量分析验证了所提出的自适应模糊FLNN控制的优越性能。
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