Learning to Centralize Dual-Arm Assembly
Marvin Alles, Elie Aljalbout

TL;DR
This paper introduces a modular, model-free reinforcement learning framework for dual-arm robotic assembly that minimizes modeling efforts, enables successful transfer from simulation to real-world, and demonstrates robustness and efficiency.
Contribution
It proposes a decentralized control architecture with a centralized learned policy for dual-arm manipulation, reducing modeling complexity and facilitating transfer to real robots.
Findings
Successful dual-arm peg-in-hole assembly in simulation and real world
Effective transfer of policies from simulation to real environment
Robustness to position uncertainties and disturbances
Abstract
Robotic manipulators are widely used in modern manufacturing processes. However, their deployment in unstructured environments remains an open problem. To deal with the variety, complexity, and uncertainty of real-world manipulation tasks, it is essential to develop a flexible framework with reduced assumptions on the environment characteristics. In recent years, reinforcement learning (RL) has shown great results for single-arm robotic manipulation. However, research focusing on dual-arm manipulation is still rare. From a classical control perspective, solving such tasks often involves complex modeling of interactions between two manipulators and the objects encountered in the tasks, as well as the two robots coupling at a control level. Instead, in this work, we explore the applicability of model-free RL to dual-arm assembly. As we aim to contribute towards an approach that is not…
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