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A Study on the Reflection of Condition-Based Maintenance Requirement in the Defense Specification

상태기반정비 요구도 국방규격 반영에 관한 연구

  • Son, Minjeong (C4ISR Systems Development Quality Team, Development Quality Research Center, Defense Agency for Technology and Quality) ;
  • Kim, Young-Gil (C4ISR Systems Development Quality Team, Development Quality Research Center, Defense Agency for Technology and Quality)
  • 손민정 (국방기술품질원 개발품질연구센터 지휘정찰개발품질팀) ;
  • 김영길 (국방기술품질원 개발품질연구센터 지휘정찰개발품질팀)
  • Received : 2021.08.06
  • Accepted : 2021.09.09
  • Published : 2021.09.30

Abstract

Purpose: The purpose of this study was to suggest weapon system specifications for requirements of Condition-Based Maintenance(CBM/CBM+). Methods: The military documents and case studies with regard to condition-based maintenance were reviewed. Representative Korea defense specifications of weapon system such as an aircraft, a C4ISR etc. were analyzed and investigated the level of requirement for maintainability was. Results: Condition-based maintenance was defined in both U.S. instruction and Korean directive. While deparment of defense(U.S.) provide a guidebook for CBM+, detailed instruction was not sufficient for Korean. Ministry of national defense(ROK) define the CBM+ by means of IPS element which should be developed along with the system development. The maintainability was barely included in Korean defense specifications, except for BIT(Built-in test) function. As a first step for defining the condition-based maintenance requirement in defense specification, this study suggests a standard form for data needed to acquire according to types of system, fault, failure, and so on. Conclusion: The empirical researches on CMB/CBM+ with domestic weapon systems are not enough, and a logic which leads the maintenance strategy to CMB/CBM+ is not solved. Through technical researches and institutional improvements including this study, we hope that condition-based maintenance would be fully established in the Korean defense field.

Keywords

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