Reliability prediction using an unequal interval grey model

Yuhong Wang, E. Pohl, Yao-guo Dang
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引用次数: 3

Abstract

An unequal interval grey model is constructed to predict component reliability using meantime between failure data. The initial grey model developed focuses on predicting failure tendencies using equal time intervals or an equally spaced interval sequence for small sample sizes. Using this approach, the grey model does a poor job of predicting component reliabilities. To better predict component reliability at a random failure time an unequal time interval grey model is constructed. An improved formula expression for the first-order accumulated generation operator is developed. Using this formula and the whitened equation for the grey differential model, yields a higher prediction precision for the improved unequal interval grey model. A numerical example is used to illustrate the method mentioned above. These results are compared with parametric estimates found using the maximum likelihood method as well as with Kaplan-Meier nonparametric estimates of reliability. The results indicate that the unequal time interval grey model is capable of predicting component reliabilities better than maximum likelihood estimation approach and the Kaplan-Meier nonparametric methods.
基于不等区间灰色模型的可靠性预测
建立了不等间隔灰色模型,利用故障间隔时间对部件可靠性进行预测。最初开发的灰色模型侧重于使用等时间间隔或小样本量的等间隔序列预测故障趋势。使用这种方法,灰色模型在预测组件可靠性方面做得很差。为了更好地预测部件在随机失效时的可靠性,建立了不等时间间隔灰色模型。提出了一阶累积生成算子的改进表达式。利用该公式和灰色微分模型的白化方程,改进的不等区间灰色模型具有较高的预测精度。最后用一个数值算例说明了上述方法。这些结果与使用最大似然方法发现的参数估计以及可靠性的Kaplan-Meier非参数估计进行了比较。结果表明,非等时间间隔灰色模型比极大似然估计法和Kaplan-Meier非参数方法更能预测部件的可靠性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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