Structural System Identification Using Genetic Programming and a Block Diagram Oriented Simulation Tool   [SI] [GP]

by

Gray, G., J., Li, Y., Murray-Smith, D., J. and Sharman, K., C.

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Info: 1996
Keywords:genetic algorithms, genetic programming, system identification, nonlinear mathematical modelling, SIMULINK
Abstract:
Genetic programming [GP] can be used for structural optimisation. Combined with a hybrid simplex/simulated annealing algorithm, it is applied to the identification of nonlinear dynamic models from simulated experimental data. Nonlinear models similar to the original test model of the system are identified yielding both correct structures and accurate parameters
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BibTex:
@TechReport{gray:1996:ssi,
  author =       "G. J. Gray and Y. Li and D. J. Murray-Smith and K. C.
                 Sharman",
  title =        "Structural System Identification Using Genetic
                 Programming and a Block Diagram Oriented Simulation
                 Tool",
  institution =  "Department of Electronics and Electrical Engineering,
                 University of Glasgow",
  year =         "1996",
  type =         "Technical Report",
  number =       "CSC-96003",
  address =      "Glasgow, G12 8QQ, U.K.",
  month =        "13 " # jun,
  note =         "submitted to: Electronics Letters",
  keywords =     "genetic algorithms, genetic programming, system
                 identification, nonlinear mathematical modelling,
                 SIMULINK",
  URL =          "ttp://www.mech.gla.ac.uk/~gary/csc96003.ps",
  abstract =     "Genetic programming can be used for structural
                 optimisation. Combined with a hybrid simplex/simulated
                 annealing algorithm, it is applied to the
                 identification of nonlinear dynamic models from
                 simulated experimental data. Nonlinear models similar
                 to the original test model of the system are identified
                 yielding both correct structures and accurate
                 parameters",
  notes =        "

                 ",
}