Predicting flow time distributions in workstations with dispatching: an aggregate modeling approach

C.P.L. Veeger, L.F.P. Etman, A.A.J. Lefeber, I.J.B.F. Adan, J.E. Rooda

Research output: Chapter in Book/Report/Conference proceedingConference contributionAcademicpeer-review

Abstract

For manufacturing workstations, there is a trade-o ff between throughput and meeting product due dates.Models for predicting flow time distributions are helpful in this respect. A model of a workstation typically has to include the process time distributions of the machines in the workstation, the dispatching rule, and other disturbances that aff ect the flow time performance. A detailed simulation model may be used to predict the flow time distributions of a workstation. However, such a model typically involves considerable development time, and obtaining all model parameters may be difficult. In this paper we propose a single-server aggregate model with a workload-dependent aggregate process time distribution, and a workload-dependent overtakingdistribution. The model involves little development time. The process time and overtaking ditribution in the aggregate model are determined from lot arrival and departure events measured at the considered workstation. Two simulation test cases are included to demonstrate the proposed method.
Original languageEnglish
Title of host publicationProceedings of the 7th Conference on Stochastic Models of Manufacturing and Service Operations (SMMSO 2009), June 7-12 2009, Ostuni, Italy
Place of PublicationRome
PublisherAracne Editrice
Pages38-45
ISBN (Print)978-88-548-2532-1
Publication statusPublished - 2009
Event7th Conference on Stochastic Models of Manufacturing and Service Operations (SMMSO 2009) - Ostuni, Italy
Duration: 7 Jun 200912 Jun 2009
Conference number: 7

Conference

Conference7th Conference on Stochastic Models of Manufacturing and Service Operations (SMMSO 2009)
Abbreviated titleSMMSO 2009
Country/TerritoryItaly
CityOstuni
Period7/06/0912/06/09

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