通过不完全受控条件下的加速试验进行可靠性预测

Cesar Ruiz, Seyyed Farid Hashemian, Haitao Liao
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引用次数: 0

摘要

高可靠性产品的可靠性通常是通过使用一种或多种应力和精心设计的应力曲线进行加速测试来估算的。由于产品的寿命-应力关系参数会随应力变化而改变,因此最好能精确控制设计的测试条件。然而,广泛使用的测试设备(如环境试验箱)在所需的精确度方面可能并不总是能满足这种期望。这可能会导致测试过程中寿命-应力关系的变化,如果被忽视,可能会降低使用条件下可靠性推断的准确性。在本文中,我们提出了一种物理信息统计学习框架,用于在不完全受控的测试条件下通过加速测试进行产品可靠性预测。所提出的应力曲线表示方法和统计估计程序部分放宽了对加速测试期间施加应力的严格控制要求。我们修改了涉及电压和温度应力的电容器加速测试数据集,并用它来说明所提出的方法。结果表明,所提出的方法是一种有用的可靠性预测工具,对加速测试条件的适度和持续变化具有鲁棒性,而从最终用户的角度来看,所需的额外知识极少。
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Reliability Prediction via Accelerated Testing with Imperfectly Controlled Conditions
The reliability of a highly reliable product is often estimated through accelerated testing with one or multiple stressors and well-designed stress profiles. Since the parameters of the product's life-stress relationship will change in response to stress variation, it is desirable to precisely control the designed testing conditions. However, widely used testing equipment, such as an environmental chamber, may not always meet such expectations with respect to the required level of accuracy. This may result in changes in the life-stress relationship during the test and, if ignored, potentially diminish the accuracy of reliability extrapolation at the use condition. In this paper, we propose a physics-informed statistical learning framework for product reliability prediction via accelerated testing with imperfectly controlled testing conditions. The proposed stress profile representation method and statistical estimation procedure partially relax the requirements for stringent control of applied stresses during accelerated testing. A dataset from a capacitor accelerated test involving both voltage and temperature stressors is modified and used to illustrate the proposed methodology. The results show that the proposed methodology is a useful tool for reliability prediction and is robust to moderate and continuous changes in accelerated testing conditions while requiring minimal added knowledge from the end user's perspective.
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