IEEE Access (Jan 2024)

Multiagent Hierarchical Reinforcement Learning With Asynchronous Termination Applied to Robotic Pick and Place

  • Xi Lan,
  • Yuansong Qiao,
  • Brian Lee

DOI
https://doi.org/10.1109/ACCESS.2024.3409076
Journal volume & issue
Vol. 12
pp. 78988 – 79002

Abstract

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Recent breakthroughs in hierarchical multi-agent deep reinforcement learning (HMADRL) are propelling the development of sophisticated multi-robot systems, particularly in the realm of complex coordination tasks. These advancements hold significant potential for addressing the intricate challenges inherent in fast-evolving sectors such as intelligent manufacturing. In this study, we introduce an innovative simulator tailored for a multi-robot pick-and-place (PnP) operation, built upon the OpenAI Gym framework. Our aim is to demonstrate the efficacy of HMADRL algorithms for multi robot coordination in a manufacturing setting, concentrating on their influence on the gripping rate, a crucial indicator for gauging system performance and operational efficiency.

Keywords