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Learning Task Requirements and Agent Capabilities for Multi-agent Task Allocation

Authors :
Fu, Bo
Smith, William
Rizzo, Denise
Castanier, Matthew
Ghaffari, Maani
Barton, Kira
Publication Year :
2022

Abstract

This paper presents a learning framework to estimate an agent capability and task requirement model for multi-agent task allocation. With a set of team configurations and the corresponding task performances as the training data, linear task constraints can be learned to be embedded in many existing optimization-based task allocation frameworks. Comprehensive computational evaluations are conducted to test the scalability and prediction accuracy of the learning framework with a limited number of team configurations and performance pairs. A ROS and Gazebo-based simulation environment is developed to validate the proposed requirements learning and task allocation framework in practical multi-agent exploration and manipulation tasks. Results show that the learning process for scenarios with 40 tasks and 6 types of agents uses around 12 seconds, ending up with prediction errors in the range of 0.5-2%.<br />Comment: The video and open-source code are at https://brg.engin.umich.edu/publications/learn-multiagent-taskreq/

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2211.03286
Document Type :
Working Paper