2021
DOI: 10.15866/ireme.v15i2.19726
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Comparison of Crossover in Genetic Algorithm for Discrete-Time System Identification

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Cited by 13 publications
(11 citation statements)
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“…The quality of the chromosome can be improved by the selection process which depends on the chromosome's fitness value. We apply a simple and effective selection operator which is the tournament selection method [24], [25]. To produce high-quality offspring, crossover, and mutation operators, as well as their probabilities, are very important.…”
Section: Proposed Framework/methodsmentioning
confidence: 99%
“…The quality of the chromosome can be improved by the selection process which depends on the chromosome's fitness value. We apply a simple and effective selection operator which is the tournament selection method [24], [25]. To produce high-quality offspring, crossover, and mutation operators, as well as their probabilities, are very important.…”
Section: Proposed Framework/methodsmentioning
confidence: 99%
“…The control transition point x was taken as a gene, and all the control transition points in the operation interval were sorted and combined into one chromosome.(2) Initial population: The initial population with the size set at N was obtained through random generation. That is, the ( x 1 … x m ) arranged in sequence was randomly generated between (0, S ).(3) Selection operator: In this paper, truncation selection was adopted to avoid the repeated selection of individuals with small fitness values in the population, and to prevent the local convergence resulting from a gradually dwindling population in the iterative process.(4) Crossover operator: An arithmetic crossover operator 20 was adopted in this paper because the chromosomes were encoded by real numbers.(5) Mutation operator: Real-number uniform mutation was performed, where random numbers conforming to the uniform distribution in a certain range were utilized, and the original gene value of each locus in the individual code string was replaced with a relatively small probability. Random numbers were generated with two adjacent control transition points as upper and lower bounds to avoid the disorder of individual control transition points after the chromosome mutation.(6) Population screening operator: The control transition point corresponding to each chromosome was substituted into a dynamic model of train operation.…”
Section: Improved Agamentioning
confidence: 99%
“…(4) Crossover operator: An arithmetic crossover operator 20 was adopted in this paper because the chromosomes were encoded by real numbers.…”
Section: Improved Agamentioning
confidence: 99%
“…It does not fall into the trap of local superiority, and can find the global optimum among many local superiorities, which is a global optimization method [21]. In recent years, genetic algorithms have been used in many fields internationally [22][23][24][25][26][27].…”
Section: Intelligent Genetic Algorithmmentioning
confidence: 99%