Computational effectiveness and limited resources in evolutionaryalgorithms are interdependently handled during the working of low-power microprocessors for real-world problems, particularly in many-objective evoluti...
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Computational effectiveness and limited resources in evolutionaryalgorithms are interdependently handled during the working of low-power microprocessors for real-world problems, particularly in many-objectiveevolutionaryalgorithms (MaOEAs). In this respect, the balance between them will be broken by evolutionaryalgorithms with a normal-sized population, but which doesn't include a micro population. To tackle this issue, this paper proposes a micro many-objective evolutionary algorithm with knowledge transfer (mu MaOEA). To address the oversight that knowledge is often not considered enough between niches, the knowledge-transfer strategy is proposed to bolster each unoptimized niche through optimizing adjacent niches, which enables niches to generate better individuals. Meanwhile, a two-stage mechanism based on fuzzy logic is designed to settle the conflict between convergence and diversity in many-objective optimization problems. Through efficient fuzzy logic decision-making, the mechanism maintains different properties of the population at different stages. Different MaOEAs and micro multi-objectiveevolutionaryalgorithms were compared on benchmark test problems DTLZ, MaF, and WFG, and the results showed that mu MaOEA has an excellent performance. In addition, it also conducted simulation on two real-world problems, MPDMP and MLDMP, based on a low-power microprocessor. The results indicated the applicability of mu MaOEA for low-power microprocessor optimization.
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