Pretraining in Actor-Critic Reinforcement Learning for Robot Motion Control
By: Jiale Fan , Andrei Cramariuc , Tifanny Portela and more
Potential Business Impact:
Teaches robots new skills faster and better.
The pretraining-finetuning paradigm has facilitated numerous transformative advancements in artificial intelligence research in recent years. However, in the domain of reinforcement learning (RL) for robot motion control, individual skills are often learned from scratch despite the high likelihood that some generalizable knowledge is shared across all task-specific policies belonging to a single robot embodiment. This work aims to define a paradigm for pretraining neural network models that encapsulate such knowledge and can subsequently serve as a basis for warm-starting the RL process in classic actor-critic algorithms, such as Proximal Policy Optimization (PPO). We begin with a task-agnostic exploration-based data collection algorithm to gather diverse, dynamic transition data, which is then used to train a Proprioceptive Inverse Dynamics Model (PIDM) through supervised learning. The pretrained weights are loaded into both the actor and critic networks to warm-start the policy optimization of actual tasks. We systematically validated our proposed method on seven distinct robot motion control tasks, showing significant benefits to this initialization strategy. Our proposed approach on average improves sample efficiency by 40.1% and task performance by 7.5%, compared to random initialization. We further present key ablation studies and empirical analyses that shed light on the mechanisms behind the effectiveness of our method.
Similar Papers
PTRL: Prior Transfer Deep Reinforcement Learning for Legged Robots Locomotion
Robotics
Teaches robots to walk faster, with less training.
Experience-Efficient Model-Free Deep Reinforcement Learning Using Pre-Training
Machine Learning (CS)
Teaches robots faster with less practice.
Transferable Latent-to-Latent Locomotion Policy for Efficient and Versatile Motion Control of Diverse Legged Robots
Robotics
Robots learn new tricks faster from past experience.