Unification of Consensus-Based Multi-Objective Optimization and Multi-Robot Path Planning
By: Michael P. Wozniak
Potential Business Impact:
Robots agree on best path to explore more.
Multi-agent systems seeking consensus may also have other objective functions to optimize, requiring the research of multi-objective optimization in consensus. Several recent publications have explored this domain using various methods such as weighted-sum optimization and penalization methods. This paper reviews the state of the art for consensus-based multi-objective optimization, poses a multi-agent lunar rover exploration problem seeking consensus and maximization of explored area, and achieves optimal edge weights and steering angles by applying SQP algorithms.
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