DocumentCode
3225033
Title
Manufacturing modeling and optimization
Author
O´Ferrell, David S.
Author_Institution
Siltec Corp., Salem, OR, USA
fYear
1995
fDate
13-15 Nov 1995
Firstpage
334
Lastpage
339
Abstract
The purpose of this project was to model and optimize the personnel and equipment utilization in Siltec\´s Epitaxial manufacturing process. Previous attempts to model the behavior of the process through static models (linear programming and spreadsheets) had not attempted to explain any of the variability experienced in the process line. SIMAN was used to create a simple model to study the effects of crosstraining on productivity and cycle time. The model was validated using actual production data from Siltec\´s production line. The programming of the model was verified by comparing "boundary values" with expected behavior. The model was used to predict production volumes given various absence rates and crosstraining levels. Additional experiments investigated the effects of Kanban size, equipment failure rates, operator staffing levels, and equipment capacity increases on operator staffing requirements, production throughput and WIP, and cycle time. During periods of normal operator absence (10%), productivity is improved by about 10% and cycle time is improved by about 50% if all operators are fully crosstrained. During periods of high operator absence (20%), productivity is improved by about 30% and cycle time is improved by about 50% if all operators are fully crosstrained. In all cases, equipment utilization is improved with increased crosstraining. Additional experiments allowed determination of required headcount, equipment additions, and Kanban size for optimized production throughput, WIP, and cycle time. The general conclusion of this project is an affirmation of expected behavior. Increasing crosstraining will improve productivity, especially during periods of high operator absence. Increasing Kanban size will increase throughput minimally while increasing WIP and cycle time considerably. Moderate increases in capacity at bottlenecks will result in dramatic increases in throughput. The model has been and will continue to be used to make qualitative and quantitative decisions concerning headcount, resource allocation, and expansion plans.
Keywords
human resource management; modelling; optimisation; personnel; semiconductor device manufacture; training; Kanban size; SIMAN; Siltec Epitaxial; WIP; crosstraining; cycle time; equipment; headcount; linear programming; manufacturing; modeling; operator staffing; optimization; personnel; production line; production throughput; productivity; resource allocation; semiconductor fab; spreadsheet; static models; Equipment failure; Linear programming; Manufacturing processes; Personnel; Predictive models; Production; Productivity; Semiconductor process modeling; Throughput; Virtual manufacturing;
fLanguage
English
Publisher
ieee
Conference_Titel
Advanced Semiconductor Manufacturing Conference and Workshop, 1995. ASMC 95 Proceedings. IEEE/SEMI 1995
ISSN
1078-8743
Print_ISBN
0-7803-2713-6
Type
conf
DOI
10.1109/ASMC.1995.484400
Filename
484400
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