Meta Reinforcement Learning-Based Lane Change Strategy for Autonomous Vehicles
Fei Ye, Pin Wang, Ching-Yao Chan, Jiucai Zhang

TL;DR
This paper introduces a meta reinforcement learning approach for autonomous vehicle lane changing that generalizes well across different traffic densities, significantly improving success and safety rates in new environments.
Contribution
The paper proposes a novel meta reinforcement learning method that enhances generalization for lane change maneuvers across varying traffic conditions, outperforming traditional models.
Findings
Success rate increased by up to 20% in heavy traffic environments.
Collision rate reduced by up to 18% compared to benchmark models.
Achieves 100% success and 0% collision with minimal gradient updates.
Abstract
Recent advances in supervised learning and reinforcement learning have provided new opportunities to apply related methodologies to automated driving. However, there are still challenges to achieve automated driving maneuvers in dynamically changing environments. Supervised learning algorithms such as imitation learning can generalize to new environments by training on a large amount of labeled data, however, it can be often impractical or cost-prohibitive to obtain sufficient data for each new environment. Although reinforcement learning methods can mitigate this data-dependency issue by training the agent in a trial-and-error way, they still need to re-train policies from scratch when adapting to new environments. In this paper, we thus propose a meta reinforcement learning (MRL) method to improve the agent's generalization capabilities to make automated lane-changing maneuvers at…
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