Cache Consensus: Rapid Object Sorting by a Robotic Swarm
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- @Article{Vardy:2014:SwarmIntl,
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author = "Andrew Vardy and Gregory Vorobyev and
Wolfgang Banzhaf",
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title = "Cache Consensus: Rapid Object Sorting by a Robotic
Swarm",
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journal = "Swarm Intelligence",
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year = "2014",
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volume = "8",
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number = "1",
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pages = "61--87",
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month = mar,
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keywords = "genetic algorithms, genetic programming, swarm
intelligence, Swarm robotics, Patch sorting,
Clustering, Localisation",
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DOI = "doi:10.1007/s11721-014-0091-5",
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abstract = "We present a new method which allows a swarm of robots
to sort arbitrarily arranged objects into homogeneous
clusters. In the ideal case, a distributed robotic
sorting method should establish a single homogeneous
cluster for each object type. This can be achieved with
existing methods, but the rate of convergence is
considered too slow for real-world application.
Previous research on distributed robotic sorting is
typified by randomised movement with a pick-up/deposit
behaviour that is a probabilistic function of local
object density. We investigate whether the ability of
each robot to localise and return to remembered places
can improve distributed sorting performance. In our
method, each robot maintains a cache point for each
object type. Upon collecting an object, it returns to
add this object to the cluster surrounding the cache
point. Similar to previous biologically inspired work
on distributed sorting, no explicit communication
between robots is implemented. However, the robots can
still come to a consensus on the best cache for each
object type by observing clusters and comparing their
sizes with remembered cache sizes. We refer to this
method as cache consensus. Our results indicate that
incorporating this localisation capability enables a
significant improvement in the rate of convergence. We
present experimental results using a realistic
simulation of our targeted robotic platform. A subset
of these experiments is also validated on physical
robots.",
- }
Genetic Programming entries for
Andrew Vardy
Gregory Vorobyev
Wolfgang Banzhaf
Citations