标题: 以作业序一元基因染色体表达法求解具维修特性之DFJSP排程问题
Using OP-Based Chromosomes with 1-tuple Genes to Develop Meta-heuristic Algorithms for DFJSP Scheduling Subject to Maintenance
作者: 范咏婷
Fan, Yung-Ting
巫木诚
Wu, Muh-Cherng
工业工程与管理系所
关键字: 分散且弹性零工式排程;排程;预防维修;蚁群最佳化演算法;基因演算法;解表达法;Distributed Flexible Job Shop;Scheduling;Preventive Maintenance;Genetic Algorithms;Ant Colony Optimization;Solution Representation
公开日期: 2012
摘要: 本论文探讨具维修特性之分散且弹性零工式排程问题(distributed and flexible job shops scheduling problem with maintenance),在DFJSP问题下考虑机台维修(maintenance)的问题。此排程问题包含四项子决策,分别为(1)工件指派加工的制造单元(job-to-cell assignment),(2)作业指派加工的机台(operation-to-machine assignment),(3)决定每个作业的排序(operations sequencing),(4)机台维修指派(PM decisions)。具维修特性之DFJSP为NP-hard问题,本论文发展出两种新演算法(简称ACO_ Sop-1t 与GA_ Sop-1t),搭配新染色体表达法(简称 Sop-1t)进行求解。本论文主要构想是将机台维修视为一个虚拟作业,因此Sop-1t为一般作业与虚拟维修作业所构成之特定的作业排序。本论文发展两种启发式准则(heuristic rules),可藉此导出此染色体相对应的四项DFJSP子决策。数值实验结果显示Sop-1t之绩效优于过去文献所发展的演算法。
This research is concerned with distributed flexible job shop problem subject to maintenance (called the DFJSP/PM problem), which considers the effect of preventive maintenance (PM) in scheduling. The DFJSP/PM problem involves four sub-decisions: (1) job-to-cell assignment, (2) operation-to-machine assignment, (3) operations sequencing, and (4) PM decisions. The complexity of the scheduling problem is NP-hard. This research solves the problem by two meta-heuristic algorithms (called ACO_ Sop-1t and GA_ Sop-1t), based on a new solution representation (called Sop-1t). Sop-1t represents a solution by a sequence of generic operations, where an operation is either a normal operation or a virtual PM operation. Decoding Sop-1t by two heuristic rules, we can obtain the aforementioned four sub-decisions. Experiment results show that ACO_Sop-1t and GA_Sop-1t outperform prior meta-heuristic algorithms in literature.
URI: http://140.113.39.130/cdrfb3/record/nctu/#GT070053311
http://hdl.handle.net/11536/71571
显示于类别:Thesis