复杂系统可靠性评估的无分布方法

ORiON Pub Date : 2014-01-01 DOI:10.5784/18-0-185
V. Yadavalli, N. Signh, H. Boraine
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引用次数: 0

摘要

在工业界,众所周知,由于各种原因,即工程设计、制造工艺、维修和质量检验程序以及各种可转让和不可转让的因素,制造单位的故障率随时间而变化。这种失效率总是在水平和坡度上都有变化,有时也表现出周期性的模式。因此,用通常的失效分布方法来分析这种随机观测序列是非常不合适和错误的。由于这些数据可以解释为时间序列,我们建议在本文中使用包括卡尔曼滤波在内的时间序列技术进行分析。使用后一种技术的其他优点是,如果有周期性的话,可以考虑到,并且可以作出短期预测,否则是不可能做到的。
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Distribution-free approach to the evaluation of reliability of complex systems
In the industrial community it is well known that the failure rate of the manufactured units vary with time due to a variety of causes, namely, engineering design, manufacturing process, maintenance and quality inspection procedures and various assignable and non-assignable factors. Such failure rates invariably exhibit changes in both level and slope and at times exhibit periodic patterns as well. Therefore it would be quite inappropriate and erroneous to analyze such stochastic series of observations using the usual failure distribution approach. Since such data can be construed as time series, we suggest in this paper the time series techniques including the Kalman filter for their analysis. Other advantages of using the latter techniques are that the periodicities, if any, can be taken into account and short-term forecasts can be made which otherwise would not have been possible.
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