Back to Search Start Over

An Independent Study of Reinforcement Learning and Autonomous Driving

Authors :
Yang, Hanzhi
Publication Year :
2021

Abstract

Reinforcement learning has become one of the most trending subjects in the recent decade. It has seen applications in various fields such as robot manipulations, autonomous driving, path planning, computer gaming, etc. We accomplished three tasks during the course of this project. Firstly, we studied the Q-learning algorithm for tabular environments and applied it successfully to an OpenAi Gym environment, Taxi. Secondly, we gained an understanding of and implemented the deep Q-network algorithm for Cart-Pole environment. Thirdly, we also studied the application of reinforcement learning in autonomous driving and its combination with safety check constraints (safety controllers). We trained a rough autonomous driving agent using highway-gym environment and explored the effects of various environment configurations like reward functions on the agent training performance.<br />Comment: 32 pages in total, 7 figures, 3 appendices, 5 tables

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2110.07729
Document Type :
Working Paper