Step-Stress ADT data estimation based on time series method

Li Wang, Xiaoyang Li, B. Wan, T. Jiang
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引用次数: 9

Abstract

For long lifetime and high reliability products, it is difficult to obtain failure time data in a short time period. Hence, Accelerated Degradation Testing (ADT) is presented to deal with the cases that few or no failure time data could be obtained but degradation data of the primary parameter of the product are available. Step-Stress ADT (SSADT) is commonly used for the advantage that it needs only a few test samples to conduct a life test. For reliability and lifetime evaluation in SSADT, previous works use deterministic functions to represent the product performance degradation process. However, it does not represent performance degradation information adequately. It is necessary to add stochastic information description to performance degradation process. Time series analysis can represent stochastic information. During the last two decades, considerable research has been carried out in time series analysis. However, only few papers have studied the degradation data analyze method based on time series method. Moreover, SSADT data analysis based on time series method has not been reported in literature at present.
基于时间序列方法的阶跃应力ADT数据估计
对于长寿命、高可靠性的产品,很难获得短时间内的失效时间数据。因此,加速退化试验(ADT)被提出,用于处理产品的失效时间数据很少或没有数据,但产品主要参数的退化数据可用的情况。步进应力ADT (SSADT)的优点是它只需要少量的测试样品就可以进行寿命测试。对于SSADT中的可靠性和寿命评估,以前的工作使用确定性函数来表示产品性能退化过程。但是,它不能充分表示性能下降的信息。在性能退化过程中加入随机信息描述是必要的。时间序列分析可以表示随机信息。在过去的二十年里,人们对时间序列分析进行了大量的研究。然而,基于时间序列方法的退化数据分析方法研究较少。此外,基于时间序列方法的SSADT数据分析目前尚未见文献报道。
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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