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Wavelet neural network-based narma-l2 internal model control utilizing micro-artificial immune techniques to control nonlinear systems

机译:基于小波神经网络的narma-l2内部模型控制,利用微人工免疫技术控制非线性系统

摘要

This paper presents an intelligent control strategy based on internal model control (IMC) to control nonlinear systems. In particular, a wavelet neural network (WNN)-based nonlinear autoregressive moving average (NARMA-L2) network is used to acquire the forward dynamics of the controlled system. Subsequently, the control law can be directly derived. In this approach, a single NARMA-L2 with only one training phase is required. Hence, unlike other related works, this design approach does not require an additional training phase to find the model inversion. In the literature, gradient descent methods are the most widely applied training techniques for the neural network-based IMC. However, these methods are characterized by the slow convergence speed and the tendency to get trapped at local minima. To avoid these limitations, the newly developed modified micro-artificial immune system (modified Micro-AIS) is employed in this work to train the NARMA-L2. The simulation results have demonstrated the effectiveness of the proposed approach in terms of accurate control and robustness against external disturbances. In addition, a comparative study has shown the superiority of the WNN over the multilayer perceptron and the radial basis function based IMC. Moreover, compared with the genetic algorithm, the modified Micro-AIS has achieved better results as the training method in the IMC structure.
机译:本文提出了一种基于内部模型控制(IMC)的智能控制策略来控制非线性系统。特别是,基于小波神经网络(WNN)的非线性自回归移动平均值(NARMA-L2)网络用于获取受控系统的前向动力学。随后,可以直接得出控制律。在这种方法中,只需要一个训练阶段的单个NARMA-L2。因此,与其他相关工作不同,该设计方法不需要额外的训练阶段即可找到模型反演。在文献中,梯度下降法是基于神经网络的IMC的最广泛应用的训练技术。但是,这些方法的特点是收敛速度慢,容易陷入局部极小值。为了避免这些限制,这项工作中采用了新开发的改良的微人工免疫系统(改良的Micro-AIS)来训练NARMA-L2。仿真结果证明了该方法在精确控制和抵抗外部干扰的鲁棒性方面的有效性。此外,一项比较研究表明,WNN优于多层感知器和基于径向基函数的IMC。而且,与遗传算法相比,改进的Micro-AIS作为IMC结构中的训练方法取得了较好的效果。

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