2019
DOI: 10.3390/info10120390
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Choosing Mutation and Crossover Ratios for Genetic Algorithms—A Review with a New Dynamic Approach

Abstract: Genetic algorithm (GA) is an artificial intelligence search method that uses the process of evolution and natural selection theory and is under the umbrella of evolutionary computing algorithm. It is an efficient tool for solving optimization problems. Integration among (GA) parameters is vital for successful (GA) search. Such parameters include mutation and crossover rates in addition to population that are important issues in (GA). However, each operator of GA has a special and different influence. The impac… Show more

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Cited by 413 publications
(234 citation statements)
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“…In doing this, the part of each node on either side of the crossover point is interchanged. Typically, the crossover probability will vary between 0.6 and 1 [40].…”
Section: Methodsologymentioning
confidence: 99%
“…In doing this, the part of each node on either side of the crossover point is interchanged. Typically, the crossover probability will vary between 0.6 and 1 [40].…”
Section: Methodsologymentioning
confidence: 99%
“…A detailed description of the GA process may be found elsewhere (Kramer 2017;Appiah et al 2011). The GA parameters for this application were selected based on a literature search of previous engineering-related GA applications (e.g., Yao et al 2012;Yang et al 2016;Hassanat et al 2019;Cimorelli et al 2020). The literature review found that the GA operators, e.g., the crossover rate and mutation rates, ranged from 50% to 90% and 1.0% to 2.5%, respectively.…”
Section: Hcm-6 Ttr Methodsologymentioning
confidence: 99%
“…If crossover is not considered during evolution, then the algorithm can result in local optima. The degree of these operators greatly affect the performance of GAs [ 72 ]. The proper balance between these operators are required to ensure the global optima.…”
Section: Challenges and Future Possibilitiesmentioning
confidence: 99%