Author:
Xu Fengrui,Liang Xuelin,Chen Mengqiao,Liu Wensheng
Abstract
In order to deal with strong nonlinearity and external interference in the braking process, this paper proposes a robust self-learning PID algorithm based on particle swarm optimization, which does not depend on a precise mathematical model of the controlled object. The self-learning function is used to adapt to the diversity of the runway road surface friction, the particle swarm algorithm is used to optimize the rate of self-learning, and robust control is used to deal with the modeling uncertainty and external disturbance of the system. The convergence of the control strategy is proved by theoretical analysis and simulation experiments. The superiority and accuracy of the method are verified by NASA ground test results. The simulation results shows that the adverse effect of the external disturbance is suppressed, and the ideal trajectory is tracked.
Funder
Chang Jiang Scholars Program of Ministry of Education of China
Subject
General Mathematics,Engineering (miscellaneous),Computer Science (miscellaneous)
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