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Bayesian Optimization Framework for Efficient Fleet Design in Autonomous Multi-Robot Exploration

Authors :
Concha, David Molina
Li, Jiping
Yin, Haoran
Park, Kyeonghyeon
Lee, Hyun-Rok
Lee, Taesik
Sirohi, Dhruv
Lee, Chi-Guhn
Publication Year :
2024

Abstract

This study addresses the challenge of fleet design optimization in the context of heterogeneous multi-robot fleets, aiming to obtain feasible designs that balance performance and costs. In the domain of autonomous multi-robot exploration, reinforcement learning agents play a central role, offering adaptability to complex terrains and facilitating collaboration among robots. However, modifying the fleet composition results in changes in the learned behavior, and training multi-robot systems using multi-agent reinforcement learning is expensive. Therefore, an exhaustive evaluation of each potential fleet design is infeasible. To tackle these hurdles, we introduce Bayesian Optimization for Fleet Design (BOFD), a framework leveraging multi-objective Bayesian Optimization to explore fleets on the Pareto front of performance and cost while accounting for uncertainty in the design space. Moreover, we establish a sub-linear bound for cumulative regret, supporting BOFD's robustness and efficacy. Extensive benchmark experiments in synthetic and simulated environments demonstrate the superiority of our framework over state-of-the-art methods, achieving efficient fleet designs with minimal fleet evaluations.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2408.11751
Document Type :
Working Paper