Simulation-Based Analysis of the Nervousness within Semiconductors Supply Chain Planning: Insight from a Case Study

Author(s):  
Behrouz Alizadeh Mousavi ◽  
Radhia Azzouz ◽  
Cathal Heavey ◽  
Hans Ehm
Author(s):  
Hannah Allison ◽  
Peter Sandborn ◽  
Bo Eriksson

Due to the nature of the manufacturing and support activities associated with long life cycle products, the parts that products required need to be dependably and consistently available. However, the parts that comprise long lifetime products are susceptible to a variety of supply chain disruptions. In order to minimize the impact of these unavoidable disruptions to production, manufacturers can implement proactive mitigation strategies. Two mitigation strategies in particular have been proven to decrease the penalty costs associated with disruptions: second sourcing and buffering. Second sourcing involves selecting two distinct suppliers from which to purchase parts over the life of the part’s use within a product or organization. Second sourcing reduces the probability of part unavailability (and its associated penalties), but at the expense of qualification and support costs for multiple suppliers. An alternative disruption mitigation strategy is buffering (also referred to as hoarding). Buffering involves stocking enough parts in inventory to satisfy the forecasted part demand (for both manufacturing and maintenance requirements) for a fixed future time period so as to offset the impact of disruptions. Careful selection of the mitigation strategy (second sourcing, buffering, or a combination of the two) is key, as it can dramatically impact a part’s total cost of ownership. This paper studies the effectiveness of traditional analytical models compared to a simulation-based approach for the selection of an optimal disruption mitigation strategy. A verification case study was performed to check the accuracy and applicability of the simulation-based model. The case study results show that the simulation model is capable of replicating results from operations research models, and overcomes significant scenario restrictions that limit the usefulness of analytical models as decision-making tools. Four assumptions, in particular, severely limit the realism of most analytical models but do not constrain the simulation-based model. These limiting assumptions are: 1) no fixed costs associated with part orders, 2) infinite-horizon, 3) perfectly reliable backup supplier, and 4) disruptions lasting full ordering periods (as opposed to fractional periods).


OPSEARCH ◽  
2020 ◽  
Vol 57 (3) ◽  
pp. 874-907
Author(s):  
T. V. S. R. K. Prasad ◽  
Kolla Srinivas ◽  
C. Srinivas

2004 ◽  
Vol 15 (1) ◽  
pp. 91-110 ◽  
Author(s):  
Luc Cassivi ◽  
Élisabeth Lefebvre ◽  
Louis A. Lefebvre ◽  
Pierre‐ Majorique Léger

In this paper, we focus on the relative efficiency of different e‐collaboration tools and their impact on the performance of individual firms positioned along the supply chain. In exploratory study, the supply chain of one large telecommunications OEM was analyzed in two consecutive phases, namely a detailed case study and an electronic survey. This led to the examination of an entire supply chain from both upstream and downstream perspectives. Supply chain execution and supply chain planning e‐collaboration tools were identified and their relative efficiency was assessed. We attempt to map out the tools' potential to enhance the performance of, individual firms, in particular the link between e‐collaboration configurations and key performance dimensions.


Author(s):  
Gregor Cieminski ◽  
Carsten Begemann ◽  
Stefan Lutz ◽  
Michael Schneider ◽  
Hans-Peter Wiendahl

2017 ◽  
Vol 203 ◽  
pp. 333-347 ◽  
Author(s):  
Martin Waldemarsson ◽  
Helene Lidestam ◽  
Magnus Karlsson

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