基于发现学习驱动的复杂设备可靠性增长灰色AMSAA-ELP模型研究

N. Zhang, Xiaqing Liu, Zhigeng Fang, Wang Hongquan
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引用次数: 0

摘要

针对复杂设备开发过程中通过发现学习提高系统可靠性的实际情况,提出了一种基于发现学习驱动的复杂设备可靠性增长的灰色AMSAA-ELP模型。分析了模型的特点,建立了时间终止试验和固定失效数试验(通常称为I型截尾和II型截尾)情况下的最大似然估计计算公式。指出如果MLE有多个极值,则可以使用拟蒙特卡罗方法进行参数计算。并给出了拟合优度的检验方法。最后,利用该方法对某复杂设备发动机的故障数据进行了分析,结果表明,灰色AMASS-ELP模型拟合的试验数据优于灰色AMSAA模型,其评估结果更符合工程实际。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research on Grey AMSAA-ELP model on the basis of discovery learning driven reliability growth of complex equipment
A Grey AMSAA-ELP model based on discovery learning driven reliability growth of complex equipment is proposed in accordance with the practical cases where system's reliability can be improved by discovery learning from the development process of other related equipment. The characteristics of the model are analyzed and a maximum likelihood estimation (MLE) calculation formula is built in the cases of time terminated testing and fixed failure number testing (commonly known as Type I censoring and Type II censoring). It is pointed out that if MLE has multiple extrema, the quasi- Monte-Carlo method can be used for parameter calculation. Furthermore, test methods for goodness of fit are given. Finally, failure data from an engine with certain complex equipment are analyzed by means of the proposed method, which reveals that test data fitting the Grey AMASS-ELP model outperforms that of the Grey AMSAA, and its assessment results are more consistent with engineering practices as well.
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