Delay-Aware Model-Based Reinforcement Learning for Continuous Control
Chen, Baiming, Xu, Mengdi, Li, Liang, Zhao, Ding
–arXiv.org Artificial Intelligence
Action delays degrade the performance of reinforcement learning in many real-world systems. This paper proposes a formal definition of delay-aware Markov Decision Process and proves it can be transformed into standard MDP with augmented states using the Markov reward process. We develop a delay-aware model-based reinforcement learning framework that can incorporate the multi-step delay into the learned system models without learning effort. Experiments with the Gym and MuJoCo platforms show that the proposed delay-aware model-based algorithm is more efficient in training and transferable between systems with various durations of delay compared with off-policy model-free reinforcement learning methods. Codes available at: https://github.com/baimingc/dambrl.
arXiv.org Artificial Intelligence
May-11-2020
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