一种求解约束和混合变量优化问题的粒子群算法

Wei-gang Wang, H. Ni
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引用次数: 0

摘要

许多工程优化问题经常遇到混合变量和非线性约束,这大大增加了求解的复杂性。当目标函数为非凸不可微时,现有的方法很少能得到全局最优解。提出了一种新的粒子群优化算法。该算法引入了模拟退火(SA)、交叉和变异算子的机制。它可以提高算法的进化速度和精度。为了实现连续变量到离散变量的转换,提出了一种随机逼近的方法。对于约束的处理,我们采用了死刑函数法。基于工程设计问题,计算结果优于文献报道的其他解决方案。因此,新算法是可行的,其精度和鲁棒性明显优于其他算法。
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A new particle swarm optimization algorithm for solving constraint and mixed variables optimization problem
Many engineering optimization problems frequently encounter mixed variables and nonlinear constraints, which add considerably to the solution complexity. Very few of the existing methods can yield a globally optimal solution when the objective functions are non-convex and non-differentiable. We developed a new particle swarm optimization (PSO) algorithm. The algorithm introduced a mechanism of simulated annealing (SA), crossover and mutation operator. It may improve the evolutionary rate and precision of the algorithm. We put forward a method of stochastic approximation, in order to realize the transformation from continuous variable to discrete variable. For handling constraints, we used death penalty function method. Based on engineering design problem, computational result was better than the other solutions reported in the literature. Therefore, the new algorithm is feasible, and its accuracy and robustness are obviously superior to the other algorithms.
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