Learning to reduce communication cost on task negotiation among multiple autonomous mobile robots

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Abstract

This paper describes LEMMING, a learning system for task negotiation in multi-robot environments. LEMMING focuses on the problem of communication costs on Contract Net Protocol. Contract Net Protocol has been recognized as an attractive way for task negotiation. However, it is difficult for multi-robot systems to use wide-band communication lines enough to utilize standard Contract Net Protocol. It has been observed that the main communication cost on Contract Net Protocol is caused by broadcasting task announcements. In order to reduce this cost LEMMING uses Case-Based Reasoning(CBR). By using CBR, LEMMING can derive useful knowledge from messages in Contract Net Protocol and can find a suitable robot that should receive task announcements. We evaluate the idea of LEMMING in a simulated multirobot environment. The result shows the advantage f LEMMING over standard contract net systems.

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APA

Ohko, T., Anzai, Y., & Hiraki, K. (1996). Learning to reduce communication cost on task negotiation among multiple autonomous mobile robots. In Lecture Notes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics) (Vol. 1042, pp. 177–190). Springer Verlag. https://doi.org/10.1007/3-540-60923-7_27

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