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首页> 外文期刊>Reliability, IEEE Transactions on >Lifetime Inference for Highly Reliable Products Based on Skew-Normal Accelerated Destructive Degradation Test Model
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Lifetime Inference for Highly Reliable Products Based on Skew-Normal Accelerated Destructive Degradation Test Model

机译:基于斜正态加速破坏性退化测试模型的高可靠性产品的寿命推断

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摘要

The accelerated destructive degradation test (ADDT) method provides an effective way to assess the reliability information of highly reliable products whose quality characteristics degrade over time, and can be taken only once on each tested unit during the measurement process. Conventionally, engineers assume that the measurement error follows the normal distribution. However, degradation models based on this normality assumption often do not apply in practical applications. To relax the normality assumption, the skew-normal distribution is adopted in this study because it preserves the advantages of the normal distribution with the additional benefit of flexibility with regard to skewness and kurtosis. Here, motivated by polymer data, we propose a skew-normal nonlinear ADDT model, and derive the analytical expressions for the product's lifetime distribution along with its corresponding th percentile. Then, the polymer data are used to illustrate the advantages gained by the proposed model. Finally, we addressed analytically the effects of model mis-specification when the skewness of measurement error are mistakenly treated, and the obtained results reveal that the impact from the skewness parameter on the accuracy and precision of the prediction of the lifetimes of products is quite significant.
机译:加速破坏性降解测试(ADDT)方法提供了一种评估质量特性随时间降低的高度可靠产品的可靠性信息的有效方法,并且在测量过程中每个被测部件只能使用一次。按照惯例,工程师假定测量误差遵循正态分布。但是,基于此正态性假设的降级模型通常不适用于实际应用。为了放宽正态性假设,本研究采用了偏态正态分布,因为它保留了正态分布的优点,并且在偏度和峰度方面具有灵活性的额外好处。在此,根据聚合物数据,我们提出了偏正态非线性ADDT模型,并推导了产品寿命分布及其相应百分位数的解析表达式。然后,使用聚合物数据来说明所提模型获得的优势。最后,我们分析了错误处理测量误差偏度时模型错误指定的影响,所得结果表明,偏度参数对产品寿命预测的准确性和精度的影响非常显着。

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