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Reliability estimation considering multi-stress monotonic degradation test data with non-constant scale parameter

机译:考虑非恒定比例参数的多应力单调劣化测试数据的可靠性估计

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摘要

The accelerated degradation testing (ADT) has been proven to be effective in quickly assessing the reliability of a highly reliable product, especially during product design and development stage. However, the modeling of ADT data to estimate reliability at normal operating conditions is still a challenging task. It becomes even more complex when there are more than one accelerating factors. In this study, a nonstationary gamma process is considered to model the degradation behavior assuming that the nature of product deterioration is strictly monotonic and non-negative. It further assumes that both gamma process parameters are stress-dependent while considering multiple stresses and their interaction effects. To deal with a problem of computational complexity caused by the consideration of multiple stresses and parameter dependency, a maximum likelihood method has been used for the model parameter estimation. The lifetime and reliability parameters under normal operating conditions are estimated using the acceleration models. A Monte Carlo simulation with the Bayesian updating method has been incorporated to update the gamma parameters when new degradation data become available. A carbon-film resistor degradation data is employed to demonstrate the efficacy of the proposed reliability assessment methodology.
机译:已证明加速降解测试(ADT)在快速评估高度可靠产品的可靠性方面,特别是在产品设计和开发阶段的可靠性方面是有效的。然而,ADT数据在正常操作条件下估计可靠性的建模仍然是一个具有挑战性的任务。当有多个加速因素时,它变得更加复杂。在本研究中,认为非营养的γ过程模拟了劣化行为,假设产品劣化的性质是严格的单调和非负面的。它进一步假设在考虑多次应力及其相互作用效果的同时,伽马工艺参数都是压力依赖性的。为了应对由考虑多次应力和参数依赖性引起的计算复杂性的问题,已经用于模型参数估计的最大似然方法。使用加速模型估计正常操作条件下的寿命和可靠性参数。使用贝叶斯更新方法的Monte Carlo模拟已被融合以在新的降级数据可用时更新伽玛参数。采用碳膜电阻器劣化数据来证明所提出的可靠性评估方法的功效。

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