Static and Dynamic Multi-Robot Coverage with Grammatical Evolution Guided by Reinforcement and Semantic Rules
Created by W.Langdon from
gp-bibliography.bib Revision:1.8010
- @InCollection{Mingo:2012:idarla,
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author = "Jack Mario Mingo and Ricardo Aler and
Dario Maravall and Javier {de Lope}",
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title = "Static and Dynamic Multi-Robot Coverage with
Grammatical Evolution Guided by Reinforcement and
Semantic Rules",
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booktitle = "Intelligent Data Analysis for Real-Life Applications:
Theory and Practice",
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publisher = "IGI Global",
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year = "2012",
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editor = "Rafael Magdalena-Benedito and
Marcelino Martinez-Sober and Jose Maria Martinez-Martinez and
Joan Vila-Frances and Pablo Escandell-Montero",
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chapter = "17",
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pages = "336--365",
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address = "Hershey",
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month = jun,
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keywords = "genetic algorithms, genetic programming, grammatical
evolution",
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issn13 = "9781466618060",
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URL = "http://www.igi-global.com/book/intelligent-data-analysis-real-life/62622",
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DOI = "doi:10.4018/978-1-4666-1806-0.ch017",
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abstract = "In recent years there has been an increasing interest
in the application of robot teams to solve some kind of
problems. Although there are several environments and
tasks where a team of robots can deliver better results
than a single robot, one of the most active attention
focus is concerned with solving coverage problems,
either static or dynamic, mainly in unknown
environments. The authors propose a method in this work
to solve these problems in simulation by means of
grammatical evolution of high-level controllers.
Evolutionary algorithms have been successfully applied
in many applications, but better results can be
achieved when evolution and learning are combined in
some way. This work uses one of this hybrid algorithms
called Grammatical Evolution guided by Reinforcement
but the authors enhance it by adding semantic rules in
the grammatical production rules. This way, they can
build automatic high-level controllers in fewer
generations and the solutions found are more readable
as well. Additionally, a study about the influence of
the number of members implied in the evolutionary
process is addressed.",
- }
Genetic Programming entries for
Jack Mario Mingo
Ricardo Aler Mur
Dario Maravall Gomez-Allende
Javier de Lope
Citations