Shen Dong, Qu Ganggui
IEEE Trans Neural Netw Learn Syst. 2020 Apr;31(4):1196-1210. doi: 10.1109/TNNLS.2019.2919510. Epub 2019 Jun 21.
This paper applies learning control to repetitive systems over fading channels at both output and input sides to improve tracking performance without applying restrictive fading conditions. Both multiplicative and additive randomness of the fading channel are addressed, and the effects of fading communication on the data are carefully analyzed. A decreasing gain sequence and a moving-average operator are introduced to modify the generic learning control algorithm to reduce the fading effect and improve control system performance. Results reveal that the tracking error converges to zero in the mean-square sense as the iteration number increases. Illustrative simulations are presented to verify the theoretical results.
本文将学习控制应用于衰落信道上输出端和输入端的重复系统,以在不施加严格衰落条件的情况下提高跟踪性能。研究了衰落信道的乘性和加性随机性,并仔细分析了衰落通信对数据的影响。引入递减增益序列和移动平均算子来修改通用学习控制算法,以减少衰落影响并提高控制系统性能。结果表明,随着迭代次数的增加,跟踪误差在均方意义下收敛到零。给出了说明性仿真以验证理论结果。