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Barrier Function-Based Neural Adaptive Control With Locally Weighted Learning and Finite Neuron Self-Growing Strategy

机译:具有局部加权学习和有限神经元自增长策略的基于障碍函数的神经自适应控制

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摘要

This paper presents a new approach to construct neural adaptive control for uncertain nonaffine systems. By integrating locally weighted learning with barrier Lyapunov function (BLF), a novel control design method is presented to systematically address the two critical issues in neural network (NN) control field: one is how to fulfill the compact set precondition for NN approximation, and the other is how to use varying rather than a fixed NN structure to improve the functionality of NN control. A BLF is exploited to ensure the NN inputs to remain bounded during the entire system operation. To account for system nonlinearities, a neuron self-growing strategy is proposed to guide the process for adding new neurons to the system, resulting in a self-adjustable NN structure for better learning capabilities. It is shown that the number of neurons needed to accomplish the control task is finite, and better performance can be obtained with less number of neurons as compared with traditional methods. The salient feature of the proposed method also lies in the continuity of the control action everywhere. Furthermore, the resulting control action is smooth almost everywhere except for a few time instants at which new neurons are added. Numerical example illustrates the effectiveness of the proposed approach.
机译:本文提出了一种构造不确定非仿射系统神经自适应控制的新方法。通过将局部加权学习与障碍Lyapunov函数(BLF)集成在一起,提出了一种新颖的控制设计方法,以系统地解决神经网络(NN)控制领域中的两个关键问题:一个是如何满足紧凑的神经网络逼近前提条件;另一个是如何使用变化的而不是固定的NN结构来改善NN控制的功能。利用BLF来确保NN输入在整个系统操作期间保持有界。为了解决系统非线性问题,提出了一种神经元自增长策略,以指导向系统中添加新神经元的过程,从而形成可自我调整的NN结构,以提高学习能力。结果表明,完成控制任务所需的神经元数量是有限的,与传统方法相比,较少的神经元可以获得更好的性能。所提出的方法的显着特征还在于控制动作在任何地方都是连续的。此外,除了添加新神经元的几个瞬间外,几乎所有地方都产生了平滑的控制动作。数值算例说明了该方法的有效性。

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