The combining of a General-Purpose Particle Swarm Optimizer (GP-PSO) with Sequential Quadratic Programming (SQP) algorithm for constrained optimization problems has been shown to be highly beneficial to the refinement, and in some cases, the success of finding a global optimum solution. It is shown that the likely difference between leading algorithms are in their local search ability. A comparison with other leading optimizers on the tested benchmark suite, indicate the hybrid GP-PSO with implemented local search to compete along side other leading PSO algorithms.
翻译:事实证明,将一般用途粒子蒸汽优化器(GP-PSO)与限制优化问题的连续二次曲线编程算法(SQP)相结合,对于改进和在某些情况下成功地找到全球最佳解决办法非常有益,表明主要算法之间的可能差别在于它们在当地的搜索能力,与其他测试的基准套件的主要优化器进行比较,表明混合的GP-PSO在当地进行了搜索,以便与其他主要的PSO算法并肩竞争。