元优化
多群优化
数学优化
元启发式
粒子群优化
渡线
无导数优化
帝国主义竞争算法
局部最优
计算机科学
最优化问题
早熟收敛
适应性突变
稳健性(进化)
收敛速度
遗传算法
算法
数学
人工智能
基因
计算机网络
生物化学
化学
频道(广播)
作者
Hao Zhu,Yumei Hu,Weidong Zhu
标识
DOI:10.1177/1687814018824930
摘要
A dynamic adaptive particle swarm optimization and genetic algorithm is presented to solve constrained engineering optimization problems. A dynamic adaptive inertia factor is introduced in the basic particle swarm optimization algorithm to balance the convergence rate and global optima search ability by adaptively adjusting searching velocity during search process. Genetic algorithm–related operators including a selection operator with time-varying selection probability, crossover operator, and n-point random mutation operator are incorporated in the particle swarm optimization algorithm to further exploit optimal solutions generated by the particle swarm optimization algorithm. These operators are used to diversify the swarm and prevent premature convergence. Tests on nine constrained mechanical engineering design optimization problems with different kinds of objective functions, constraints, and design variables in nature demonstrate the superiority of the dynamic adaptive particle swarm optimization and genetic algorithm against several other meta-heuristic algorithms in terms of solution quality, robustness, and convergence rate in most cases.
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