Improved PSO and its application to load distribution optimization of hot strip mills
-
摘要: 對一種已有的自適應算法進行了改進,并將該算法思想引入到粒子群算法的改進中,在種群進化到一定代數時按照改進自適應算法改變搜索范圍的大小,實現了自動調整搜索范圍、提高收斂速度和精度并可有效防止粒子群算法早熟收斂的目的,同時通過實驗仿真進行了驗證.將該改進粒子群算法應用到熱連軋機精軋機組的負荷分配優化計算中,程序運行時間小于5s,滿足實時性的要求,為其提供了一種更為有效的優化手段.Abstract: An adaptive algorithm was improved and introduced to the particle swarm optimization algorithm (PSO). When the population evolution reaches certain generations, the search area is changed in accordance with the improved adaptive algorithm. It is achieved that the search area is revised automatically to increase the convergence rate and precision and prevent the premature convergence of the particle swarm algorithm. The conclusion was verified through simulation. Finally, the new algorithm was applied to the optimum design of scheduling hot strip mills, whose running time was less than 5 s, which validated the real-time application to provide an effective way to optimize.
-
Key words:
- particle swarm optimization algorithm /
- hot strip mills /
- load distribution /
- shape /
- optimization
-

計量
- 文章訪問數: 162
- HTML全文瀏覽量: 31
- PDF下載量: 4
- 被引次數: 0