2024
DOI: 10.3390/math12040516
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Adaptation of the Scaling Factor Based on the Success Rate in Differential Evolution

Vladimir Stanovov,
Eugene Semenkin

Abstract: Differential evolution is a popular heuristic black-box numerical optimization algorithm which is often used due to its simplicity and efficiency. Parameter adaptation is one of the main directions of study regarding the differential evolution algorithm. The main reason for this is that differential evolution is highly sensitive to the scaling factor and crossover rate parameters. In this study, a novel adaptation technique is proposed which uses the success rate to replace the popular success history-based ad… Show more

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Cited by 4 publications
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“…In addressing boundary variation, the value of F in Equations ( 19) and ( 28) is typically set to 0.1, given the narrow range of individuals that cross the boundary [35]. In the event that an individual remains out of bounds following two consecutive mutation operations, a substitution approach is adopted, wherein a random individual is generated within the permissible solution space to replace the outlier.…”
Section: Improved Differential Evolution Algorithm By Introducing a B...mentioning
confidence: 99%
“…In addressing boundary variation, the value of F in Equations ( 19) and ( 28) is typically set to 0.1, given the narrow range of individuals that cross the boundary [35]. In the event that an individual remains out of bounds following two consecutive mutation operations, a substitution approach is adopted, wherein a random individual is generated within the permissible solution space to replace the outlier.…”
Section: Improved Differential Evolution Algorithm By Introducing a B...mentioning
confidence: 99%