首页> 外文期刊>Quality and Reliability Engineering International >Advanced Bayesian Estimation of Weibull Early Life Failure Distributions
【24h】

Advanced Bayesian Estimation of Weibull Early Life Failure Distributions

机译:威布尔早期寿命失效分布的高级贝叶斯估计

获取原文
获取原文并翻译 | 示例
           

摘要

In semiconductor manufacturing, it is a key to ensure reliability of the produced devices. The population's reliability level is demonstrated by means of a burn-in study (that is investigating a large number of devices under real-life stress conditions for product relevant fails). Burn-in settings are based on the lifetime distribution of early fails. Typically, it is modelled as a Weibull distribution Wb(a,b) with scale parameter a > 0 and shape parameter b ∈ (0,1) motivated by a decreasing failure rate within the devices' early life. Depending on the applied burn-in scheme, the Weibull parameters have to be estimated from time-to-failure and discrete failure count data, respectively. In this paper, we present advanced Bayesian estimation models for the Weibull distribution handling both data situations. First, a simplified conjugate approach using gamma-histogram-beta priors is presented. Further, according to the paper's main focus, an extended Bayesian concept for assessing Weibull early life failure distributions is highlighted. It is characterized by a Dirichlet prior distribution applied to the lifetime function of early fails. The proposed model simplifies the incorporation of engineering prior knowledge. Moreover, it can be extended to both discrete failure and time-to-failure burn-in data. The joint posterior distribution, Bayesian estimators and compounded and joint credible regions are derived by means of Monte Carlo simulation. The principle of Bayesian learning allows to update the Weibull early life failure distribution whenever new failure data become available. Therefore, burn-in settings can dynamically be adapted improving the efficiency of burn-in.
机译:在半导体制造中,确保所生产设备的可靠性是关键。通过老化研究来证明总体的可靠性水平(该研究是在现实压力条件下针对与产品相关的故障研究大量设备)。老化设置基于早期故障的生命周期分布。通常,将其建模为Weibull分布Wb(a,b),其比例参数a> 0且形状参数b∈(0,1)由设备早期生命周期中的故障率降低引起。取决于所应用的老化方案,必须分别从失效时间和离散失效计数数据估计Weibull参数。在本文中,我们为处理两种数据情况的威布尔分布提供了高级贝叶斯估计模型。首先,提出了一种使用伽玛直方图-β先验的简化共轭方法。此外,根据本文的主要重点,突出了用于评估威布尔早期寿命失败分布的扩展贝叶斯概念。它的特点是将Dirichlet先验分布应用于早期失效的寿命函数。提出的模型简化了工程先验知识的整合。此外,它可以扩展到离散故障和故障时间老化数据。联合后验分布,贝叶斯估计量以及复合可信区域和联合可信区域是通过蒙特卡洛模拟方法得出的。贝叶斯学习的原理允许在新的故障数据可用时更新威布尔早期寿命故障分布。因此,可以动态调整老化设置,从而提高老化效率。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号