Zhao Kai, Song Yongduan, Ma Tiedong, He Liu
IEEE Trans Neural Netw Learn Syst. 2018 Aug;29(8):3478-3489. doi: 10.1109/TNNLS.2017.2727223. Epub 2017 Aug 11.
This paper studies the zero-error tracking control problem of Euler-Lagrange systems subject to full-state constraints and nonparametric uncertainties. By blending an error transformation with barrier Lyapunov function, a neural adaptive tracking control scheme is developed, resulting in a solution with several salient features: 1) the control action is continuous and smooth; 2) the full-state tracking error converges to a prescribed compact set around origin within a given finite time at a controllable rate of convergence that can be uniformly prespecified; 3) with Nussbaum gain in the loop, the tracking error further shrinks to zero as ; and 4) the neural network (NN) unit can be safely included in the loop during the entire system operational envelope without the danger of violating the compact set precondition imposed on the NN training inputs. Furthermore, by using the Lyapunov analysis, it is proven that all the signals of the closed-loop systems are semiglobally uniformly ultimately bounded. The effectiveness and benefits of the proposed control method are validated via computer simulation.
本文研究了受全状态约束和非参数不确定性影响的欧拉-拉格朗日系统的零误差跟踪控制问题。通过将误差变换与障碍李雅普诺夫函数相结合,开发了一种神经自适应跟踪控制方案,得到了具有几个显著特征的解决方案:1)控制作用连续且平滑;2)全状态跟踪误差在给定的有限时间内以可统一预先指定的可控收敛速率收敛到原点周围的规定紧致集;3)通过在回路中引入努斯鲍姆增益,跟踪误差随着时间进一步缩小到零;4)在整个系统运行范围内,神经网络(NN)单元可以安全地包含在回路中,而不会有违反施加在NN训练输入上的紧致集前提条件的危险。此外,通过李雅普诺夫分析,证明了闭环系统的所有信号都是半全局一致最终有界的。通过计算机仿真验证了所提出控制方法的有效性和优势。