Publications• Sorted by Date • Classified by Publication Type • Classified by Research Category • Effective Approximations for Multi-Robot Coordination in Spatially Distributed TasksDaniel Claes, Philipp Robbel, Frans A. Oliehoek, Daniel Hennes, Karl Tuyls, and Wiebe Van der Hoek. Effective Approximations for Multi-Robot Coordination in Spatially Distributed Tasks. In Proceedings of the Tenth AAMAS Workshop on Multi-Agent Sequential Decision Making in Uncertain Domains (MSDM), May 2015. DownloadAbstractAlthough multi-robot systems have received substantial research attention in recent years, multi-robot coordination still remains a difficult task. Especially, when dealing with spatially distributed tasks and many robots, central control quickly becomes infeasible due to the exponential explosion in the number of joint actions and states. We propose a general algorithm that allows for distributed control, that overcomes the exponential growth in the number of joint actions by aggregating the effect of other agents in the system into a probabilistic model, called subjective approximations, and then choosing the best response. We show for a multi-robot grid-world how the algorithm can be implemented in the well studied Multiagent Markov Decision Process framework, as a sub-class called spatial task allocation problems (SPATAPs). In this framework, we show how to tackle SPATAPs using online, distributed planning by combining subjective agent approximations with restriction of attention to current tasks in the world. An empirical evaluation shows that the combination of both strategies allows to scale to very large problems, while providing near-optimal solutions. BibTeX Entry@inproceedings{Claes15MSDM,
author = {Daniel Claes and Philipp Robbel and Frans A. Oliehoek and
Daniel Hennes and Karl Tuyls and Van der Hoek, Wiebe},
title = {Effective Approximations for Multi-Robot Coordination in Spatially Distributed Tasks},
booktitle = MSDM15,
year = {2015},
month = may,
keywords = {workshop},
abstract = {
Although multi-robot systems have received substantial research attention
in recent years, multi-robot coordination still remains a difficult
task. Especially, when dealing with spatially distributed tasks and
many robots, central control quickly becomes infeasible due to the
exponential explosion in the number of joint actions and states. We
propose a general algorithm that allows for distributed control, that
overcomes the exponential growth in the number of joint actions by
aggregating the effect of other agents in the system into a
probabilistic model, called subjective approximations, and then
choosing the best response. We show for a multi-robot grid-world how
the algorithm can be implemented in the well studied Multiagent Markov
Decision Process framework, as a sub-class called spatial task
allocation problems (SPATAPs). In this framework, we show how to
tackle SPATAPs using online, distributed planning by combining
subjective agent approximations with restriction of attention to
current tasks in the world. An empirical evaluation shows that the
combination of both strategies allows to scale to very large problems,
while providing near-optimal solutions.
}
}
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