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Multi-Objective Particle Swarm optimization Algorithm Based on Angle Preference and Three-Archive Sets

机译:基于角度偏好和三归档集的多目标粒子群优化算法

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Multi-objective optimization problems (MOP) have not been completely solved due to their complexity. The evolutionary algorithm simulates the motor foraging mode of the biological group, which has certain advantages for solving the MOP, and can obtain the ε-pareto optimal solution. Particle swarm optimization (PSO) is well suitable for some evolutionary algorithms because of its fast convergence. Considering convergence, diversity and user preference information of multiple targets, we propose multi-objective particle swarm optimization algorithm with angle preference and three-archive sets (APTPSO). The validity of AP-TPSO is described by calculating the GD and SP values of the standard test functions.
机译:由于其复杂性,多目标优化问题(MOP)尚未完全解决。进化算法模拟了生物群的运动觅食方式,对求解MOP具有一定的优势,可以得到ε-最优解。粒子群优化(PSO)由于具有快速收敛性,因此非常适合某些进化算法。考虑到多个目标的收敛性,多样性和用户偏好信息,提出了一种具有角度偏好和三档案集的多目标粒子群优化算法(APTPSO)。通过计算标准测试功能的GD和SP值来描述AP-TPSO的有效性。

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