Data Informed Residual Reinforcement Learning for High-Dimensional Robotic Tracking Control
Cong Li, Fangzhou Liu, Yongchao Wang, Martin Buss

TL;DR
This paper introduces a data-informed residual reinforcement learning approach for high-dimensional robotic tracking control, improving sample efficiency, scalability, and adaptability through subsystem decoupling and parallel learning.
Contribution
It proposes a novel DR-RL framework that leverages incremental subsystems and parallel learning to enhance robotic tracking control in high-dimensional systems.
Findings
Outperforms standard RL in sample efficiency and scalability.
Successfully applied to a 7-DoF KUKA robot and a 3-DoF robot.
Demonstrates stability and convergence through theoretical analysis.
Abstract
The learning inefficiency of reinforcement learning (RL) from scratch hinders its practical application towards continuous robotic tracking control, especially for high-dimensional robots. This work proposes a data-informed residual reinforcement learning (DR-RL) based robotic tracking control scheme applicable to robots with high dimensionality. The proposed DR-RL methodology outperforms common RL methods regarding sample efficiency and scalability. Specifically, we first decouple the original robot into low-dimensional robotic subsystems; and further utilize one-step backward (OSBK) data to construct incremental subsystems that are equivalent model-free representations of the above decoupled robotic subsystems. The formulated incremental subsystems allow for parallel learning to relieve computation load and offer us mathematical descriptions of robotic movements for conducting…
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Taxonomy
TopicsReinforcement Learning in Robotics · Real-time simulation and control systems · Viral Infectious Diseases and Gene Expression in Insects
