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Safe-state enhancement method for autonomous driving via direct hierarchical reinforcement learning - 2023

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Research Paper On Safe-state enhancement method for autonomous driving via direct hierarchical reinforcement learning

Research Area:  Machine Learning

Abstract:

Reinforcement learning (RL) has shown excellent performance in the sequential decision-making problem, where safety in the form of state constraints is of great significance in the design and application of RL. Simple constrained end-to-end RL methods might lead to significant failure in a complex system like autonomous vehicles. In contrast, some hierarchical RL (HRL) methods generate driving goals directly, which could be closely combined with motion planning. With safety requirements, some safe-enhanced RL methods add post-processing modules to avoid unsafe goals or achieve expectation-based safety, which accepts the existence of unsafe states and allows some violations of safe constraints. However, ensuring state safety is vital for autonomous vehicles. Therefore, this paper proposes a state-based safety enhancement method for autonomous driving via direct hierarchical reinforcement learning. Finally, we design a constrained reinforcement learner based on the State-based Constrained Markov Decision Process (SCMDP), where a learnable safety module could adjust the constraint strength adaptively. We integrate a dynamic module in the policy training and generate future goals considering safety, temporal-spatial continuity, and dynamic feasibility, which could eliminate dependence on the prior model. Simulations in the typical highway scenes with uncertainties show that the proposed method has better training performance, higher driving safety in interactive scenes, more decision intelligence in traffic congestions, and better economic driving ability on roads with changing slopes.

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Author(s) Name:  Ziqing Gu, Lingping Gao, Haitong Ma, Shengbo Eben Li, Sifa Zheng, Wei Jing, Junbo Chen

Journal name:  IEEE Transactions on Intelligent Transportation Systems

Conferrence name:  

Publisher name:  IEEE

DOI:  10.1109/TITS.2023.3271642

Volume Information:  Volume 24, Pages 9966-9983, (2023)