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ASSESSMENT OF DYNAMIC PRA TECHNIQUES WITH INDUSTRY- AVERAGE COMPONENT PERFORMANCE DATA

机译:利用行业平均组件性能数据评估动态PRA技术

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In the nuclear industry, risk monitors are intended to provide a point-in-time estimate of the system risk given the current plant configuration. Current risk monitors are limited in that they do not properly take into account the deteriorating states of plant equipment, which are unit-specific. Current approaches to computing risk monitors use probabilistic risk assessment (PRA) techniques, but the assessment is typically a snapshot in time. Living PRA models attempt to address limitations of traditional PRA models in a limited sense by including temporary changes in plant and system configurations. However, information on plant component condition is not considered. This often leaves risk monitors using living PRA models incapable of conducting evaluations with dynamic degradation scenarios evolving overtime. There is a need to develop enabling approaches to solidify risk monitors to provide time- and condition-dependent risk by integrating traditional PRA models with condition monitoring and prognostic techniques. This paper presents an estimation of system risk evolution over time by integrating plant risk monitoring data with dynamic PRA methods that incorporate aging and degradation. Several online, nondestructive approaches have been developed for diagnosing plant component conditions in the nuclear industry, i.e., using a condition indication index, vibration analysis, current signatures, and operational history [1], In this work, the component performance measures at U.S. commercial nuclear power plants are incorporated within the dynamic PRA methodologies to provide better estimates of the probability of failures. Aging and degradation are modeled within the Level 1 PRA framework, are applied to several failure modes of pumps, and can be extended to a range of components, namely, valves, generators, batteries, and pipes.
机译:在核工业中,给定当前的工厂配置,风险监控器旨在提供系统风险的时间点估计。当前的风险监控器之所以受到限制,是因为它们没有适当考虑特定于单位的工厂设备的恶化状态。当前的计算风险监控器的方法使用概率风险评估(PRA)技术,但是评估通常只是时间的快照。实时PRA模型试图通过包括工厂和系统配置的临时更改来在有限的意义上解决传统PRA模型的局限性。但是,没有考虑有关植物成分状况的信息。这常常使风险监控器无法使用实时PRA模型进行评估,因为动态评估方案会随着时间的推移而演变。有必要开发一种可行的方法,通过将传统的PRA模型与病情监测和预后技术相集成来巩固风险监视器,以提供与时间和病情有关的风险。本文通过将工厂风险监测数据与结合了老化和退化的动态PRA方法相结合,提出了随时间推移系统风险演变的估计。已经开发了几种在线的,无损的方法来诊断核工业中的工厂组件状况,即使用状态指示指数,振动分析,当前特征和运行历史[1]。在这项工作中,美国商业上的组件性能指标核电厂被纳入动态PRA方法中,以提供对失败概率的更好估计。老化和退化在1级PRA框架内建模,应用于泵的几种故障模式,并且可以扩展到一系列组件,即阀门,发电机,电池和管道。

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