Robot exploration with combinatorial auctions
M. Berhault, Huili Huang, Pınar Keskinocak, Sven Koenig, Wedad Elmaghraby, Paul M. Griffin, Anton J. Kleywegt
- 发表年份
- 2004
- 引用次数
- 182
摘要
We study how to coordinate a team of mobile robots to visit a number of given targets in a partially unknown terrain. Robotics researchers have studied single-item auctions to perform this exploration task but these do not make synergies between the targets into account. We therefore design combinatorial auctions, propose different combinatorial bidding strategies and compare their performance with each other, as well as to single item auctions and an optimal centralized mechanism. Our computational results in teambots, a multi-robot simulator, indicate that combinatorial auctions generally lead to significantly superior team performance than single-item auctions, and generate very good results compared to an optimal centralized mechanism.
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