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Material Requirements Planning for Military Maintenance Depot

군 정비창 자재소요계획

  • Kim, Heung Seob (Department of Systems Engineering, Air Force Academy) ;
  • Kim, Pansoo (School of Business, Kyungpook National University)
  • Received : 2014.08.05
  • Accepted : 2014.11.27
  • Published : 2014.12.31

Abstract

In order to manage essential parts that are required for the repairable parts services performed at the military maintenance depots, the United States Air Force developed the Repairability Forecasting Model (RFM). In the RFM, if the requirements of the parts are assumed to follow the normal probability distribution after applying means from the past data to the replacement rate and lead times, the chance of the AWP (Awaiting Parts) occurring is 50%. In this study, to counter the uncertainties of requirements and lead times from the RFM, the safety level concept is considered. To obtain the safety level for requirements, the binomial probability distribution is applied, while the safety level for lead time is obtained by applying the normal probability distribution. After adding this concept, the improved RFM is renamed as the ARFM (Advanced RFM), and by conducting the numerical stimulation, the effectiveness of the ARFM, minimizing the occurrence of the AWP, is shown by increasing the efficiency of the maintenance process and the operating rate of the weapon system.

Keywords

References

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