Functional reconstruction of dynamical systems from time series using genetic programming
Created by W.Langdon from
gp-bibliography.bib Revision:1.8051
- @InProceedings{mcconaghy:2000:IECON,
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author = "T. McConaghy and H. Leung and V. Varadan",
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title = "Functional reconstruction of dynamical systems from
time series using genetic programming",
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booktitle = "26th Annual Conference of the IEEE Industrial
Electronics Society, IECON 2000",
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year = "2000",
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volume = "3",
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pages = "2031--2034",
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address = "Nagoya",
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month = "22-28 " # oct,
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publisher = "IEEE",
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keywords = "genetic algorithms, genetic programming",
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DOI = "doi:10.1109/IECON.2000.972588",
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abstract = "Reconstruction of a chaotic system from its
measurement is a challenging problem. It requires the
determination of an embedding dimension and a nonlinear
mapping that approximates the underlying unknown
dynamics. We propose the use of genetic programming
(GP) to find the exact functional form and embedding
dimension of an unknown dynamical system automatically.
Using functional operators of addition, multiplication,
and time-delay, with the least-squares estimation
technique, we use GP to reconstruct the exact chaotic
polynomial system and its embedding dimension from a
time series. If the underlying dynamic does not come
from a polynomial system, the proposed GP method will
produce an optimal polynomial predictor for the time
series. Simulations showed that the GP approach
outperformed a radial basis function neural network in
predicting both polynomial and nonpolynomial chaotic
systems",
- }
Genetic Programming entries for
Trent McConaghy
Henry Leung
Vinay Varadan
Citations