Research

year 2002 
author Yangja Jang 
Keyword scheduling, flexible job shop, multi-level job structure, genetic algorithm, large step optimization 
Abstract It is evident that there are disparities between scheduling theory and shop floor requirements. One of these is manufacturing flexibility, which supports various manufacturing alternatives to produce a product, and another is jobs hierarchy, which describes the gozinto relationships between jobs. In this paper, we deal with the flexible job shop scheduling problem in the processing of multi-level jobs. A flexible job shop can be defined as a general job shop consisting of workcenters composed of identical parallel machines. This situation adds the machine selection problem to the standard job shop scheduling which only sequences operations at each machine. Owing to the multi-level job structure, we also control the coordination and pacing of low level components. Three mathematical models respecting different manufacturing environments have been proposed.

This paper has proposed a new gene design, used in the genetic algorithm, to represent machine assignment, operation sequences, and the relative level of the operation to the final operation. The relative operation level is the control parameter which synchronizes the completion timing of the components belonging to the same branch in the job hierarchy. We compare the effectiveness of the genetic algorithm utilizing relative operation levels with that of several dispatching rules in terms of total tardiness, sum of total tardiness and total earliness, and makespan. The genetic algorithm reveals outstanding performance in the solution performance of forty modified standard job shop problems. For the small sized problems, we compare the best solution of MIP optimizer and the best solution of genetic algorithm and it shows the good performance of genetic algorithm. The genetic algorithm shows good promise as a scheduling tool in a flexible job shop with multi-level job structures.

In order to revise the fixed relative level which solutions are confined to, we apply large step transition in the firs step and genetic algorithm in the second step. We call this procedure as large step optimization. We compare the genetic algorithm and large step optimization in terms of total tardiness and makespan for about forty modified standard job-shop problem instances. Large step optimization decreases 17% in the total tardiness and 15% in the makespan of genetic algorithm respectively. The large step transition suggested in this paper seems to lead the solution of genetic algorithm to the improved solution region.

Finally, we propose mathematical model which assigns the due date of newly entered customer orders and propose binary search process which seeks the possible due date. 
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번호 c year 제목 author
26 PhD  2014  A study on integrative decision-making system for reconfigurable manufacturing cells Jin Wu Seo 
25 PhD  2014  Multi-level job scheduling in a flexible discrete-part production environment Hong Bum Na 
24 PhD  2013  A study on production scheduling problems considering differential electricity pricing and distributed generations Jun Young Moon 
23 PhD  2013  Price of Simplicity under Congestion: On the Revenue and Pricing Schemes in the Telecommunication Industry [58] file Dongmyung Lee 
22 PhD  2010  Enhancing Flexibility and Responsiveness in Sales Order Management [54] Mokmin Park 
21 PhD  2010  Framework for Integrative SRM System and Collaboration Scorecard [26] Jongkyoung Park 
20 PhD  2009  A Study for Business Process Improvement Using Real-time Information of Unbalanced Work [19] Jaehyun Kong 
19 PhD  2008  A study on integrated production planning and strategic framework in supply chain [15] Haejoong Kim 
18 PhD  2007  A Study on MRP Process Improvement in a Grid Enabled APS [2] file Hyoung-Gon Lee 
17 PhD  2005  Development of an algorithm for multi-plant production plans in a supply chain [50] Sungwon Jung 
16 PhD  2005  Performance Analysis and Network Design of Supply Chain for Strategic Decision Making [14] Eoksu Sim 
15 PhD  2005  A Study on the Integration of Quality Designing and Process Control in Steel Industry [15] Jonghan Kim 
14 PhD  2004  Ontology Development for e-Business Integration [26] Tai-Woo Chang 
13 PhD  2003  Process Modeling and Performance Analysis Methodology toward Optimal Design of Manufacturing Systems [30] Kichang Lee 
» PhD  2002  Flexible Job Shop Scheduling with Multi-level Job Structures [16] Yangja Jang 
11 PhD  1999  A Study on the Manufacturing System State Based Scheduler using Neural Network and Simulator [20] Kitae Kim 
10 PhD  1999  A Study on Job Shop Scheduling Problems considering Production Capacity Adjustment [16] Daeyoung Chung 
9 PhD  1997  A Study on the Integration of Loading and Scheduling in Flexible Manufacturing Systems [21] Sangbok Woo 
8 PhD  1997  A Study on FMS Design Justification Considering Part Type Selection and Performance Evaluation Hosub Shin 
7 PhD  1997  Computer-Aided Synthesis of the Execution Controllers for Workcells in Computer Integrated Manufacturing Systems [18] Sangkyun Kim 
6 PhD  1997  A Study on the Integration of Process Planning and Scheduling [3] Kidong Kim 
5 PhD  1996  A Design Support System for the Process Design of Computer Integrated Manufacturing [2] Chankwon Park 
4 PhD  1996  An Improved Scheduling Heuristic Based on Batch Splitting Method for The Job Shop Scheduling Problem [4] Hanil Jeong 
3 PhD  1995  Design Support System for the Conceptual Design of Manufacturing Databases [13] Kitae Shin 
2 PhD  1994  A Study on Design of a Cooperative- Distributed Shop Floor Control System for Computer Integrated Manufacturing [19] Namkyu Park 
1 PhD  1991  An Integrated Decision Support System for FMS Planning and Control Problems [11] Seongyoung Jang