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A Reward Population-Based Differential Genetic Harmony Search Algorithm
2022
Algorithms
To overcome the shortcomings of the harmony search algorithm, such as its slow convergence rate and poor global search ability, a reward population-based differential genetic harmony search algorithm is proposed. In this algorithm, a population is divided into four ordinary sub-populations and one reward sub-population, for each of which the evolution strategy of the differential genetic harmony search is used. After the evolution, the population with the optimal average fitness is combined
doi:10.3390/a15010023
fatcat:fq5byyuoznclteojjm3srkdzwm