Data-driven aggregate modeling of a semiconductor wafer fab to predict WIP levels and cycle time distributions

In complex manufacturing systems, such as a semiconductor wafer fabrication facility (wafer fab), it is important to accurately predict cycle times and work-in-progress (WIP) levels. These key performance indicators are commonly predicted using detailed simulation models; however, the detailed simul...

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Veröffentlicht in:Flexible services and manufacturing journal 2024-06, Vol.36 (2), p.567-596
Hauptverfasser: Deenen, Patrick C., Middelhuis, Jeroen, Akcay, Alp, Adan, Ivo J. B. F.
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Sprache:eng
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Zusammenfassung:In complex manufacturing systems, such as a semiconductor wafer fabrication facility (wafer fab), it is important to accurately predict cycle times and work-in-progress (WIP) levels. These key performance indicators are commonly predicted using detailed simulation models; however, the detailed simulation models are computationally expensive and have high development and maintenance costs. In this paper, we propose an aggregate modeling approach, where each work area, i.e., a group of functionally similar workstations, in the wafer fab is aggregated into a single-server queueing system. The parameters of the queueing system can be derived directly from arrival and departure data of that work area. To obtain fab-level predictions, our proposed methodology builds a network of aggregate models, where the network represents the entire fab consisting of different work areas. The viability of this method in practice is demonstrated by applying it to a real-world wafer fab. Experiments show that the proposed model can make accurate predictions, but also provide insights into the limitations of aggregate modeling.
ISSN:1936-6582
1936-6590
DOI:10.1007/s10696-023-09501-1