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Chinese Journal of Engineering Design  2009, Vol. 16 Issue (4): 252-255    DOI:
    
Study on correlation algorithm of failure mode rates in testability modeling
 WANG  Cheng-Gang1, WANG  Xue-Wei2, YANG  Zhi-Yong3, ZENG  Ru-Wei4
1. Department of Basic Experiment, Naval Aeronautical and Astronautical University, Yantai 264001, China;
2. Department of Control Engineering, Naval Aeronautical and Astronautical University, Yantai 264001, China; 
3. Fourth Graduate Students Battalion, Second Artillery Engineering Academy, Xian 710025, China;
4. New Equipments Training Center, Naval Aeronautical and Astronautical University, Yantai 264001, China
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Abstract  To adapt to testability analysis and evaluation of complex equipment in its whole life cycle, hierarchical model is usually adopted in testability model. Aiming at the conflict of failure mode probability and signal (functional) probability, two probability updating algorithms are put forward. Then, the updating process of failure mode probability for testability model of an equipment module is illustrated, which proves that our method is effective and it can increase the accuracy of testability analysis and evaluation, and meanwhile provides more reliable reference for model modification and fault diagnosis strategy generation.

Key wordstestability analysis      testability evaluation      failure mode      fault diagnosis      complex equipment     
Published: 28 August 2009
Cite this article:

WANG Cheng-Gang, WANG Xue-Wei, YANG Zhi-Yong, ZENG Ru-Wei. Study on correlation algorithm of failure mode rates in testability modeling. Chinese Journal of Engineering Design, 2009, 16(4): 252-255.

URL:

https://www.zjujournals.com/gcsjxb/     OR     https://www.zjujournals.com/gcsjxb/Y2009/V16/I4/252


测试性建模中故障模式概率更新算法研究

为适应复杂装备全寿命周期内的测试性分析与评估,测试性建模中多采用层次化的建模方式.针对建模过程中信号(功能)概率和故障模式概率的冲突问题,提出了两种故障模式概率更新算法,并通过某装备模块的故障模式概率的更新验证了算法的有效性.提高了测试性分析与评估的精度,为模型的修正和故障诊断策略的生成提供了更加可靠的依据.

关键词: 测试性分析,  测试性评估,  故障模式,  故障诊断,  复杂装备 
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