2023
DOI: 10.3390/math11081911
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NSGA-II/SDR-OLS: A Novel Large-Scale Many-Objective Optimization Method Using Opposition-Based Learning and Local Search

Abstract: Recently, many-objective optimization problems (MaOPs) have become a hot issue of interest in academia and industry, and many more many-objective evolutionary algorithms (MaOEAs) have been proposed. NSGA-II/SDR (NSGA-II with a strengthened dominance relation) is an improved NSGA-II, created by replacing the traditional Pareto dominance relation with a new dominance relation, termed SDR, which is better than the original algorithm in solving small-scale MaOPs with few decision variables, but performs poorly in … Show more

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“…This is particularly true when the objective value is in proximity to the PF because oscillations may arise. The oscillation of the MOEA solution set can be attenuated by implementing local gradient search techniques [13,43]. Figure 7 shows that by combining local search techniques with the results of MOEA, the convergence pressure of the algorithm is enhanced and the solution set is closer to the true PF.…”
Section: Hybrid Multi-objective Algorithm Frameworkmentioning
confidence: 99%
“…This is particularly true when the objective value is in proximity to the PF because oscillations may arise. The oscillation of the MOEA solution set can be attenuated by implementing local gradient search techniques [13,43]. Figure 7 shows that by combining local search techniques with the results of MOEA, the convergence pressure of the algorithm is enhanced and the solution set is closer to the true PF.…”
Section: Hybrid Multi-objective Algorithm Frameworkmentioning
confidence: 99%