Increasing crossover operator efficiency in multiobjective nonlinear systems identification
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- @InProceedings{Patelli:2010:IS,
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author = "Alina Patelli and Lavinia Ferariu",
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title = "Increasing crossover operator efficiency in
multiobjective nonlinear systems identification",
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booktitle = "5th IEEE International Conference Intelligent Systems,
IS 2010",
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year = "2010",
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month = "7-9 " # jul,
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pages = "426--431",
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address = "London",
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keywords = "genetic algorithms, genetic programming, accuracy
evaluation criteria, complex nonlinear system
identification, crossover operator efficiency,
customized genetic operators, deterministic parameter
computation procedure, elitist multiobjective
optimization methodology, encapsulation mechanism,
fuzzy controller, multiobjective nonlinear systems
identification, parsimony evaluation criteria,
similarity analysis technique, universal approximator,
fuzzy control, identification, large-scale systems,
nonlinear control systems",
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isbn13 = "978-1-4244-5163-0",
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DOI = "doi:10.1109/IS.2010.5548346",
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size = "6 pages",
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abstract = "An elitist multiobjective optimisation methodology,
based on genetic programming, is suggested in the
following, as means of identifying complex nonlinear
systems. The structure and parameters of the nonlinear
models are selected simultaneously as result of the
conjoint usage of customised genetic operators and of a
deterministic parameter computation procedure. This
symbiosis is configured to efficiently exploit the
nonlinear, linear in parameters formalism, a proven
universal approximator, according to which the models
are generated. In order to protect useful model terms
from fragmentation via crossover, the authors have
introduced a novel encapsulation mechanism supervised
by a fuzzy controller. To meet the specific
requirements of systems identification in engineering
applications, the optimisation procedure considers two
evaluation criteria, namely accuracy and parsimony,
exploited from an elitist standpoint. The approach also
features an original similarity analysis technique,
meant to encourage population diversity. The practical
efficiency of the proposed identification algorithm was
tested in the framework of a real life industrial
system.",
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notes = "Also known as \cite{5548346}",
- }
Genetic Programming entries for
Alina Patelli
Lavinia Ferariu
Citations