Adaptive Trajectory Tracking Control of a Quadrotor Based on Iterative Learning Algorithm

Autor: Alireza Tavakolpour-Saleh, Mohammad Mehdi Farzaneh
Rok vydání: 2020
Předmět:
Zdroj: Volume: 5, Issue: 1 1-12
Journal of Engineering Technology and Applied Sciences
ISSN: 2548-0391
DOI: 10.30931/jetas.629403
Popis: This paper presents a new adaptive and optimal algorithm for the trajectory tracking control of a quadrotor using iterative learning algorithm (ILA) and enumerative learning method. Ordinarily the ILA, as an adaptive method, can perform well with PID control to improve the controller’s performance for a nonlinear system. Quadrotors are considered as nonlinear and unstable systems in which the use of an adaptive and optimal controller can increase its stability and decrease error level. In this method, a PID controller is proposed for the inner and outer control loops of a quadrotor and the ILA is used to adapt PID control gains. Subsequently, an enumerative learning algorithm is used to optimize the learning rates of the ILA. For this purpose, at first, the dynamic model of the quadrotor is acquired. After that, the structure of the control system and the inner and outer control loops are defined. In the end, the simulation results for the trajectory tracking control are demonstrated. Through simulation, it is concluded that as time increases, the performance of the suggested control method in trajectory tracking control becomes better and better and error signals convergence to zero.
Databáze: OpenAIRE