@inproceedings{6d934016fc214816a178542185d71d12,
title = "A comparison of binary and continuous genetic algorithm in parameter estimation of a logistic growth model",
abstract = "Genetic algorithm is an optimization method based on the principles of genetics and natural selection in life organisms. The algorithm begins by defining the optimization variables, defining the cost function (in a minimization problem) or the fitness function (in a maximization problem) and selecting genetic algorithm parameters. The main procedures in genetic algorithm are generating initial population, selecting some chromosomes (individual) as parent's individual, mating, and mutation. In this paper, binary and continuous genetic algorithms were implemented to estimate growth rate and carrying capacity parameter from poultry data cited from literature. For simplicity, all genetic algorithm parameters (selection rate and mutation rate) are set to be constant along implementation of the algorithm. It was found that by selecting suitable mutation rate, both algorithms can estimate these parameters well. Suitable range for mutation rate in continuous genetic algorithm is wider than the binary one.",
keywords = "dynamical model, genetic algorithm, parameter estimation, poultry data",
author = "Windarto and Indratno, {S. W.} and N. Nuraini and E. Soewono",
note = "Publisher Copyright: {\textcopyright} 2014 AIP Publishing LLC.; Symposium on Biomathematics, Symomath 2013 ; Conference date: 27-10-2013 Through 29-10-2013",
year = "2014",
doi = "10.1063/1.4866550",
language = "English",
series = "AIP Conference Proceedings",
publisher = "American Institute of Physics Inc.",
pages = "139--142",
editor = "Nuning Nuraini and Hidetaka Arimura",
booktitle = "Symposium on Biomathematics, Symomath 2013",
}