Affiliation:
1. The School of Electrical and Control Engineering, The North China University of Technology, Beijing, China
Abstract
A robust model-free adaptive iterative learning control (R-MFAILC) algorithm is proposed in this work to address the issue of laterally controlling an autonomous bus. First, according to the periodic repetitive working characteristics of autonomous buses, a novel dynamic linearized method used in the iterative domain is utilized, and a time-varying data model with a pseudo gradient (PG) is given. Then, the R-MFAILC controller is designed with a proposed adaptive attenuation factor. The proposed algorithm's advantage lies in the R-MFAILC controller, which solely utilizes the input and output data of the regulated entity. Moreover, the R-MFAILC controller has strong robustness and can handle the nonlinear measurement disturbances of the system. In simulations based on the Truck-Sim simulation platform, the effectiveness of the proposed algorithm is verified. A rigorous mathematical analysis is employed to demonstrate the stability and convergence of the proposed algorithm.
Funder
Beijing Municipal Natural Science Foundation under Grants
NorthChina University of Technology YuYou Talent Training Program
National Natural Science Foundation (NNSF) of China under Grants
R&D Program of Beijing Municipal Education Commission
Beijing Science and Technology New Star project under Grant