Back to Search Start Over

A Learning-Based Tune-Free Control Framework for Large Scale Autonomous Driving System Deployment

Authors :
Wang, Yu
Jiang, Shu
Lin, Weiman
Cao, Yu
Lin, Longtao
Hu, Jiangtao
Miao, Jinghao
Luo, Qi
Publication Year :
2020

Abstract

This paper presents the design of a tune-free (human-out-of-the-loop parameter tuning) control framework, aiming at accelerating large scale autonomous driving system deployed on various vehicles and driving environments. The framework consists of three machine-learning-based procedures, which jointly automate the control parameter tuning for autonomous driving, including: a learning-based dynamic modeling procedure, to enable the control-in-the-loop simulation with highly accurate vehicle dynamics for parameter tuning; a learning-based open-loop mapping procedure, to solve the feedforward control parameters tuning; and more significantly, a Bayesian-optimization-based closed-loop parameter tuning procedure, to automatically tune feedback control (PID, LQR, MRAC, MPC, etc.) parameters in simulation environment. The paper shows an improvement in control performance with a significant increase in parameter tuning efficiency, in both simulation and road tests. This framework has been validated on different vehicles in US and China.<br />Comment: 8 pages, 12 figures

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2011.04250
Document Type :
Working Paper