Automated Lane Change Strategy using Proximal Policy Optimization-based Deep Reinforcement Learning

02/07/2020
by   Fei Ye, et al.
0

Lane-change maneuvers are commonly executed by drivers to follow a certain routing plan, overtake a slower vehicle, adapt to a merging lane ahead, etc. However, improper lane change behaviors can be a major cause of traffic flow disruptions and even crashes. While many rule-based methods have been proposed to solve lane change problems for autonomous driving, they tend to exhibit limited performance due to the uncertainty and complexity of the driving environment. Machine learning-based methods offer an alternative approach, as Deep reinforcement learning (DRL) has shown promising success in many application domains including robotic manipulation, navigation, and playing video games. However, applying DRL for autonomous driving still faces many practical challenges in terms of slow learning rates, sample inefficiency, and non-stationary trajectories. In this study, we propose an automated lane change strategy using proximal policy optimization-based deep reinforcement learning, which shows great advantage in learning efficiency while maintaining stable performance. The trained agent is able to learn a smooth, safe, and efficient driving policy to determine lane-change decisions (i.e. when and how) even in dense traffic scenarios. The effectiveness of the proposed policy is validated using task success rate and collision rate, which demonstrates the lane change maneuvers can be efficiently learned and executed in a safe, smooth and efficient manner.

READ FULL TEXT

page 1

page 5

research
03/30/2019

Lane Change Decision-making through Deep Reinforcement Learning with Rule-based Constraints

Autonomous driving decision-making is a great challenge due to the compl...
research
04/21/2018

A Reinforcement Learning Based Approach for Automated Lane Change Maneuvers

Lane change is a crucial vehicle maneuver which needs coordination with ...
research
09/18/2019

Automated Lane Change Decision Making using Deep Reinforcement Learning in Dynamic and Uncertain Highway Environment

Autonomous lane changing is a critical feature for advanced autonomous d...
research
06/20/2023

Safe, Efficient, Comfort, and Energy-saving Automated Driving through Roundabout Based on Deep Reinforcement Learning

Traffic scenarios in roundabouts pose substantial complexity for automat...
research
06/05/2019

Continuous Control for Automated Lane Change Behavior Based on Deep Deterministic Policy Gradient Algorithm

Lane change is a challenging task which requires delicate actions to ens...
research
03/09/2020

Behavior Planning For Connected Autonomous Vehicles Using Feedback Deep Reinforcement Learning

With the development of communication technologies, connected autonomous...
research
09/07/2017

Formulation of Deep Reinforcement Learning Architecture Toward Autonomous Driving for On-Ramp Merge

Multiple automakers have in development or in production automated drivi...

Please sign up or login with your details

Forgot password? Click here to reset