Application of Multi Agent Reinforcement Learning to Robotic Pick and Place System

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    1 Citation (Scopus)

    Abstract

    Recent advances in deep reinforcement learning are enabling the creation and use of powerful multi-agent systems in complex areas such as multi-robot coordination. These show great promise to help solve many of the difficult challenges of rapidly growing domains such as smart manufacturing. In this paper we present a novel simulator for a multi-robot pick and place system, leveraging the OpenGym framework. We further evaluate the performance of three distinct reinforcement learning algorithms, name as Qmix, VDN, and IQL, employing the Epymarl framework with our simulator. Our primary objective is to show the effectiveness of these algorithms within a manufacturing context, with a specific focus on their impact on the gripping rate-a vital metric for assessing performance and efficiency.

    Original languageEnglish
    Title of host publication2024 10th International Conference on Automation, Robotics, and Applications, ICARA 2024
    PublisherInstitute of Electrical and Electronics Engineers Inc.
    Pages1-6
    Number of pages6
    ISBN (Electronic)9798350394245
    DOIs
    Publication statusPublished - 2024
    Event10th International Conference on Automation, Robotics, and Applications, ICARA 2024 - Athens, Greece
    Duration: 22 Feb 202424 Feb 2024

    Publication series

    Name2024 10th International Conference on Automation, Robotics, and Applications, ICARA 2024

    Conference

    Conference10th International Conference on Automation, Robotics, and Applications, ICARA 2024
    Country/TerritoryGreece
    CityAthens
    Period22/02/2424/02/24

    Keywords

    • Dec-POMDP
    • deep rein-forcement learning
    • multi-agent system
    • multi-robot system
    • pick and place

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