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Resilient Supervisory Multiagent Systems | IEEE Journals & Magazine | IEEE Xplore

Resilient Supervisory Multiagent Systems


Abstract:

Accidental or deliberate disruption of the coordination function in a multiagent system has been discussed and referred to in the social sciences literature as leader dec...Show More

Abstract:

Accidental or deliberate disruption of the coordination function in a multiagent system has been discussed and referred to in the social sciences literature as leader decapitation; this article outlines a methodology for making multiagent networks resilient to this type of failure, enabling a timely restoration of operation normalcy by leveraging machine learning techniques. The approach involves endowing the agents with a cascade of independent learning modules that enable them to discover over time their role in the overall system coordinating strategy, so that they are able to autonomously implement it when central coordination seizes to function. Through these machine learning algorithms, the agents incrementally identify the overall system’s task specification and simultaneously optimize their strategy to serve the common goal.
Published in: IEEE Transactions on Robotics ( Volume: 38, Issue: 1, February 2022)
Page(s): 229 - 243
Date of Publication: 28 September 2021

ISSN Information:

PubMed ID: 38751944

Funding Agency:


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