A heuristic-search genetic algorithm for multi-stage hybrid flow shop scheduling with single processing machines and batch processing machines

被引:0
作者
Dongni Li
Xianwen Meng
Qiqiang Liang
Junqing Zhao
机构
[1] Beijing Institute of Technology,Beijing Lab of Intelligent Information Technology, School of Computer Science
来源
Journal of Intelligent Manufacturing | 2015年 / 26卷
关键词
Hybrid flow shop; Batch processing machine; Single processing machine; Genetic algorithm; Heuristic rule;
D O I
暂无
中图分类号
学科分类号
摘要
This paper addresses the scheduling problem for a multi-stage hybrid flow shop (HFS) with single processing machines and batch processing machines. Each stage consists of nonidentical machines in parallel, and only one of the stages is composed of batch processing machines. Such a variant of the HFS problem is derived from the actual manufacturing of complex products in the equipment manufacturing industry. Aiming at minimizing the maximum completion time and minimizing the total weighted tardiness, respectively, a heuristic-search genetic algorithm (HSGA) is developed in this paper, which selects assignment rules for parts, sequencing rules for machines (including single processing machines and batch processing machines), and batch formation rules for batch processing machines, simultaneously. Then parts and machines are scheduled using the obtained combinatorial heuristic rules. Since the search space composed of the heuristic rules is much smaller than that composed of the schedules, the HSGA results in lower complexity and higher computational efficiency. Computational results indicate that as compared with meta-heuristics that search for scheduling solutions directly, the HSGA has a significant advantage with respect to the computational efficiency. As compared with combinatorial heuristic rules, other heuristic-search approaches, and the CPLEX, the HSGA provides better optimizational performance and is especially suitable to solve large dimension scheduling problems.
引用
收藏
页码:873 / 890
页数:17
相关论文
共 74 条
[11]  
Rao AG(2011)Hybrid flowshop scheduling with batch-discrete processors and machine maintenance in time windows International Journal of Production Research 49 1575-1603
[12]  
Mestry S(2010)Minimizing total weighted tardiness on a batch-processing machine with non-agreeable release times and due dates International Journal of Advanced Manufacturing Technology 48 1133-1148
[13]  
Dorndorf U(2011)A simulated annealing algorithm approach to hybrid flow shop scheduling with sequence-dependent setup times Journal of Intelligent Manufacturing 22 965-978
[14]  
Pesch E(1997)Adaptive scheduling in dynamic flexible manufacturing systems: A dynamic rule selection approach Ieee Transactions on Robotics and Automation 13 486-502
[15]  
Fayad C(2001)A multiobjective genetic algorithm for job shop scheduling Production Planning & Control 12 764-774
[16]  
Petrovic S(2000)Scheduling with batching: A review European Journal of Operational Research 120 228-249
[17]  
Hu H.(2007)Flexible job-shop scheduling with routing flexibility and separable setup times using ant colony optimisation method Robotics and Computer-Integrated Manufacturing 23 503-516
[18]  
Li Z.(2006)A genetic algorithm for hybrid flowshops with sequence dependent setup times and machine eligibility European Journal of Operational Research 169 781-800
[19]  
Kim YD(2008)Modeling realistic hybrid flexible flowshop scheduling problems Computers & Operations Research 35 1151-1175
[20]  
Joo BJ(2010)The hybrid flow shop scheduling problem European Journal Of Operational Research 205 1-18