Evolutionary optimization of cooperative heterogeneous teams
Created by W.Langdon from
gp-bibliography.bib Revision:1.8051
- @InProceedings{Soule:2007:SPIE,
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author = "Terence Soule and Robert B. Heckendorn",
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title = "Evolutionary optimization of cooperative heterogeneous
teams",
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booktitle = "SPIE Defense and Security 2007",
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year = "2007",
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editor = "Misty Blowers and Alex F. Sisti",
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volume = "6563",
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address = "USA",
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month = "12-13 " # apr,
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organisation = "SPIE",
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keywords = "genetic algorithms, genetic programming, Evolutionary
Algorithms, Cooperation, Autonomous Vehicles, Planning,
Heterogeneous Teams",
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isbn13 = "9780819466921",
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DOI = "doi:10.1117/12.724018",
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size = "10 pages",
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abstract = "There is considerable interest in developing teams of
autonomous, unmanned vehicles that can function in
hostile environments without endangering human lives.
However, heterogeneous teams, teams of units with
specialised roles and/or specialized capabilities, have
received relatively little attention. Specialised roles
and capabilities can significantly increase team
effectiveness and efficiency. Unfortunately, developing
effective cooperation mechanisms is much more difficult
in heterogeneous teams. Units with specialised roles or
capabilities require specialised software that take
into account the role and capabilities of both itself
and its neighbours. Evolutionary algorithms, algorithms
modelled on the principles of natural selection, have a
proven track record in generating successful teams for
a wide variety of problem domains. Using classification
problems as a prototype, we have shown that typical
evolutionary algorithms either generate highly
effective teams members that cooperate poorly or poorly
performing individuals that cooperate well. To overcome
these weaknesses we have developed a novel class of
evolutionary algorithms. In this paper we apply these
algorithms to the problem of controlling simulated,
heterogeneous teams of 'scouts' and 'investigators'.
Our test problem requires producing a map of an area
and to further investigate 'areas of interest'. We
compare several evolutionary algorithms for their
ability to generate individually effective members and
high levels of cooperation.",
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notes = "Evolutionary and Bio-inspired Computation: Theory and
Applications",
- }
Genetic Programming entries for
Terence Soule
Robert B Heckendorn
Citations