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A Novel Particle Swarm Optimization Algorithm Based on Fuzzy Velocity Updating for Multi-objective Optimization

机译:基于模糊速度更新的多目标粒子群优化算法

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A novel particle swarm optimization algorithm for multi-objective optimization (MOO) based on fuzzy velocity updating strategy is developed and implemented in this paper. The proposed algorithm incorporates fuzzy velocity updating strategy, which can characterize to some extent the uncertainty on the true optimality of the global best position, into particle swarm optimization (PSO) so as to avoid the premature convergence and to maintain the swarm diversity. In addition, a crowding distance computation operator for promoting solution diversity and an efficient mutation operator for searching feasible non-dominated solutions are adopted. The proposed algorithm is tested on various benchmark problems taken from the literature and evaluated with standard performance metrics by comparison with NSGA-II. It is found that the proposed algorithm does not have any difficulties in achieving well-spread Pareto optimal solutions with good convergence to true Pareto optimal front.
机译:提出并实现了一种基于模糊速度更新策略的多目标粒子群优化算法。提出的算法将模糊速度更新策略结合到粒子群优化算法中,该算法可以在一定程度上描述全局最佳位置的真实最优性的不确定性,从而避免过早收敛并保持群体多样性。另外,采用了用于提高解多样性的拥挤距离计算算子和用于搜索可行的非支配解的有效变异算子。该算法对来自文献的各种基准问题进行了测试,并与NSGA-II进行了比较,并以标准性能指标进行了评估。发现所提出的算法在获得扩展到真正的帕累托最优前沿的良好收敛的帕累托最优解时没有任何困难。

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