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학술논문신뢰성 응용연구2017.06 발행KCI 피인용 4

저장신뢰도 기반의 유도탄 품질보증모델에 대한 연구

A Study on Warranty and Quality Assurance Model for Guided Missiles Based on Storage Reliability

정상훈(방위사업청); 이상복(한성대학교)

17권 2호, 83~91쪽

초록

Purpose: The purpose of this study is to develop a quality assurance model and to determine appropriate warranty period for a guided missile using its field data. Methods: 10 years of actual firing data is collected from the defense industry company and military. Parametric maximum likelihood estimation for a reliability function is determined with the data. Results: The reliability function estimates average lifetime of the missile. That function shows a user requirement, 80% reliability (lifetime) is come up when 8 years have passed, which is longer than the estimates in the missile’s development phase. Conclusion: Quality assurance warranty for a guided missile must be established with actual test data. It is necessary to update and modify the reliability prediction and the warranty period with actual field test data.

Abstract

Purpose: The purpose of this study is to develop a quality assurance model and to determine appropriate warranty period for a guided missile using its field data. Methods: 10 years of actual firing data is collected from the defense industry company and military. Parametric maximum likelihood estimation for a reliability function is determined with the data. Results: The reliability function estimates average lifetime of the missile. That function shows a user requirement, 80% reliability (lifetime) is come up when 8 years have passed, which is longer than the estimates in the missile’s development phase. Conclusion: Quality assurance warranty for a guided missile must be established with actual test data. It is necessary to update and modify the reliability prediction and the warranty period with actual field test data.

발행기관:
한국신뢰성학회
분류:
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저장신뢰도 기반의 유도탄 품질보증모델에 대한 연구 | 신뢰성 응용연구 2017 | AskLaw | 애스크로 AI