IEEE Trans Cybern. 2019 Mar;49(3):1047-1057. doi: 10.1109/TCYB.2018.2794972. Epub 2018 Feb 19.
This paper investigates a fault-tolerant control of the hypersonic flight vehicle using back-stepping and composite learning. With consideration of angle of attack (AOA) constraint caused by scramjet, the control laws are designed based on barrier Lyapunov function. To deal with the unknown actuator faults, a robust adaptive allocation law is proposed to provide the compensation. Meanwhile, to obtain good system uncertainty approximation, the composite learning is proposed for the update of neural weights by constructing the serial-parallel estimation model to obtain the prediction error which can dynamically indicate how the intelligent approximation is working. Simulation results show that the controller obtains good system tracking performance in the presence of AOA constraint and actuator faults.
本文研究了使用反推和复合学习的高超音速飞行器容错控制。考虑到超燃冲压发动机引起的攻角(AOA)约束,基于障碍李雅普诺夫函数设计了控制律。为了处理未知的执行器故障,提出了一种鲁棒自适应分配律来提供补偿。同时,为了获得良好的系统不确定性逼近,提出了复合学习来通过构建串联-并联估计模型更新神经网络权重,以获得能够动态指示智能逼近工作情况的预测误差。仿真结果表明,在存在 AOA 约束和执行器故障的情况下,控制器获得了良好的系统跟踪性能。