Lin Chih-Min, Hsu C F
Dept. of Electr. Eng., Yuan Ze Univ., Chung-li, Taiwan.
IEEE Trans Neural Netw. 2003;14(2):351-9. doi: 10.1109/TNN.2002.806950.
The antilock braking systems are designed to maximize wheel traction by preventing the wheels from locking during braking, while also maintaining adequate vehicle steerability; however, the performance is often degraded under harsh road conditions. In this paper, a hybrid control system with a recurrent neural network (RNN) observer is developed for antilock braking systems. This hybrid control system is comprised of an ideal controller and a compensation controller. The ideal controller, containing an RNN uncertainty observer, is the principal controller; and the compensation controller is a compensator for the difference between the system uncertainty and the estimated uncertainty. Since for dynamic response the RNN has capabilities superior to the feedforward NN, it is utilized for the uncertainty observer. The Taylor linearization technique is employed to increase the learning ability of the RNN. In addition, the on-line parameter adaptation laws are derived based on a Lyapunov function, so the stability of the system can be guaranteed. Simulations are performed to demonstrate the effectiveness of the proposed NN hybrid control system for antilock braking control under various road conditions.
防抱死制动系统旨在通过防止车轮在制动过程中锁死来最大化车轮牵引力,同时保持车辆足够的可操纵性;然而,在恶劣路况下其性能往往会下降。本文针对防抱死制动系统开发了一种带有递归神经网络(RNN)观测器的混合控制系统。该混合控制系统由一个理想控制器和一个补偿控制器组成。理想控制器包含一个RNN不确定性观测器,是主控制器;补偿控制器则是用于补偿系统不确定性与估计不确定性之间差异的补偿器。由于RNN在动态响应方面具有优于前馈神经网络的能力,因此将其用于不确定性观测器。采用泰勒线性化技术来提高RNN的学习能力。此外,基于李雅普诺夫函数推导了在线参数自适应律,从而可以保证系统的稳定性。进行了仿真以证明所提出的神经网络混合控制系统在各种路况下用于防抱死制动控制的有效性。