首页> 外文会议>American Society of Mechanical Engineers(ASME) International Mechanical Engineering Congress and Exposition; 20051105-11; Orlando,FL(US) >A Proportional Hazards Neuraj Network for Performing Reliability Estimates and Risk Prognostics for Mobile Systems Subject to Stochastic Covariates
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A Proportional Hazards Neuraj Network for Performing Reliability Estimates and Risk Prognostics for Mobile Systems Subject to Stochastic Covariates

机译:用于执行随机协变量的移动系统的可靠性估计和风险预测的比例风险神经网络

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We present a proportional hazards model (PHM) that establishes a framework suitable for performing reliability estimates and risk prognostics on complex multi-component systems which are transferred at arbitrary times among a discrete set of non-stationary stochastic environments. Such a scenario is not at all uncommon for portable and mobile systems. It is assumed that survival data, possibly interval censored, is available at several "typical" environments. This collection of empirical survival data forms the foundation upon which the basic effects of selected covariates are incorporated via the proportional hazards model. Proportional hazards models are well known in medical statistics, and can provide a variety of data-driven risk models which effectively capture the effects of the covariates. The paper describes three modifications we have found most suitable for this class of systems: development of suitable survival estimators that function well under realistic censoring scenarios, our modifications to the PHM which accommodate time-varying stochastic covariates, and implementation of said model in a non-linear network context which is itself model-free. Our baseline hazard is a parameterized reliability model developed from the empirical reliability estimates. Development of the risk score for arbitrary covariates arising from movement among different random environments is through interaction of the non-linear network and training data obtained from a Markov chain simulation based on stochastic environmental responses generated from Karhunen-Loeve models.
机译:我们提出了比例风险模型(PHM),该模型建立了一个适用于在复杂的多组件系统上执行可靠性估计和风险预测的框架,这些组件在离散的一组非平稳随机环境之间任意时间转移。对于便携式和移动系统来说,这种情况并非罕见。假设生存数据(可能经过时间间隔检查)可以在几种“典型”环境中使用。经验生存数据的收集形成了基础,通过比例风险模型将所选协变量的基本效果纳入其中。比例风险模型在医学统计中是众所周知的,并且可以提供各种数据驱动的风险模型,可以有效地捕获协变量的影响。本文描述了我们发现最适合此类系统的三种修改:开发在现实的检查场景下能正常运行的合适的生存估计器,对PHM的修改以适应随时间变化的随机协变量,以及在非实际情况下实现该模型线性网络上下文,它本身是无模型的。我们的基准危害是根据经验可靠性估计值开发的参数化可靠性模型。由不同随机环境之间的运动引起的任意协变量的风险评分的发展是通过非线性网络和基于Karhunen-Loeve模型所产生的随机环境响应的马尔可夫链模拟获得的训练数据的相互作用来进行的。

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