论文标题
使用滑动模式和人工神经网络对单链柔性操纵器的智能控制
Intelligent control of a single-link flexible manipulator using sliding modes and artificial neural networks
论文作者
论文摘要
这封信提供了一种新的智能控制方案,用于对灵活链路操纵器的准确跟踪。所提出的方法主要基于带有嵌入式人工神经网络的不足系统的滑动模式控制器,以处理建模不准确。所采用的神经网络只需要一个输入和一个隐藏层,这大大降低了控制法的计算复杂性,并允许其在低功率微控制器中实现。选择在线学习而不是监督离线培训,以允许在跟踪过程中实时调整神经网络的权重。因此,最终的控制器能够应对不足的问题,并通过从经验中学习来适应自己,从而使能力适当地处理植物动态。跟踪误差的界限和收敛性通过在Lyapunov样稳定性分析中引起Barbalat的引理证明。用小的单连接柔性操纵器获得的实验结果即使在存在高水平的不确定性和嘈杂信号的情况下,也显示出了所提出的控制方案的功效。
This letter presents a new intelligent control scheme for the accurate trajectory tracking of flexible link manipulators. The proposed approach is mainly based on a sliding mode controller for underactuated systems with an embedded artificial neural network to deal with modeling inaccuracies. The adopted neural network only needs a single input and one hidden layer, which drastically reduces the computational complexity of the control law and allows its implementation in low-power microcontrollers. Online learning, rather than supervised offline training, is chosen to allow the weights of the neural network to be adjusted in real time during the tracking. Therefore, the resulting controller is able to cope with the underactuating issues and to adapt itself by learning from experience, which grants the capacity to deal with plant dynamics properly. The boundedness and convergence properties of the tracking error are proved by evoking Barbalat's lemma in a Lyapunov-like stability analysis. Experimental results obtained with a small single-link flexible manipulator show the efficacy of the proposed control scheme, even in the presence of a high level of uncertainty and noisy signals.