透過您的圖書館登入
IP:3.20.235.88
  • 期刊

Research on Flexible Job Shop Scheduling with Multiple Time Factors based on Group Optimization

摘要


Production scheduling can improve economic benefits, reduce costs and energy consumption, and promote the sustainable development of enterprises, which is one of the research hotspots in the field of computer integration in the past few decades. With the progress of science, enterprises are increasingly demanding production scheduling. The research and application of effective scheduling methods and optimization techniques have important theoretical and practical significance.According to the requirements of the enterprise's own interests, the strict constraints of delivery date, the pressure of cost and work efficiency, the effective utilization of resources, the problem of reducing waste, etc., it is particularly important for the enterprise to formulate a set of good and effective production scheduling.

參考文獻


A particle swarm optimization method for power system dynamic security control[M] .Voumvoulakis E M,Hatziargyriou N D.IEEE Transactions on Power System,2020,25(2):1032-1041.
Particle swarm optimization-based feedback controller for unified power-quality conditioner.Karanki S B,Mishra M K,Kumar B K.IEEE Transactions on Power Delivery.2020,25(4):2814-2824.
An Effective Two-stage Heuristic Algorithm for FJSP with Two Constraints[M].Hasan Koyuncu,Rahime Ceylan.Electrical&Electronics Engineering Department Konya Technical University.Journal of Computation Design and Engineering.2021.
Particle Swarm Optimization Algorithm Based on Adaptive and Self-learning Ability Flexible Job Shop Scheduling Algorithm [J]. Ye Hanfeng, Li Zhanshan, Chen Chao. Journal of Jilin University (Science Edition), 2014,52(01):93-97.
Hybrid scheduling algorithm based on particle swarm optimization and simulated annealing [J]. Pan Quanke, Wang Wenhong, Zhu Jianying. China Mechanical Engineering, 2016,17(10):1044-1046.

延伸閱讀