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Integrating renewal process modeling with Probabilistic Physics-of-Failure: Application to Loss of Coolant Accident (LOCA) frequency estimations in nuclear power plants

机译:用概率物理学集成续展过程建模:应用于核电厂冷却液事故(LOCA)频率估计的应用

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摘要

Renewal process modeling is used for the failure prediction of hardware components under periodic maintenance. While most studies utilized data-driven approaches to estimate the input parameters for renewal process models, this paper initiates a line of research to integrate renewal process modeling with probabilistic models of underlying mechanisms associated with physical degradation and maintenance. At this stage of the research, the methodology integrates Markov modeling with Probabilistic Physics-of-Failure (PPoF) models of degradation, while maintenance is treated by a data-driven approach. This methodology is valuable to obtain a more accurate estimation of component reliability and availablity, especially when (i) components are highly reliable, and failure data are limited, (ii) historical data are unreliable due to changes in design, operation, and maintenance, or (iii) advanced technologies have emerged limiting operational data. The methodology explicitly incorporates the underlying spatiotemporal causes of failure into the renewal model, allowing to rank the criticality of causal factors to improve maintenance and mitigation strategies. Although the new methodology is applicable for component reliability and availability analysis in diverse industries, this paper demonstrates its value for estimating frequencies of a Loss-Of-Coolant Accident (LOCA), which is an initiating event in Probabilistic Risk Assessment (PRA) of Nuclear Power Plants (NPPs).
机译:更新过程建模用于在周期性维护下的硬件组件故障预测。虽然大多数研究利用数据驱动方法来估计更新过程模型的输入参数,但本文启动了一系列研究,以将续展过程建模与与物理退化和维护相关的潜在机制的概率模型集成。在该研究的这种阶段,该方法与Markov建模与概率的物理 - 失败模型集成了劣化的概率,同时通过数据驱动方法进行维护。该方法是有价值的,可以获得对组件可靠性和可用性的更准确估计,特别是当(i)组件高度可靠,并且失败数据受到限制,由于设计,操作和维护的变化,(ii)历史数据是不可靠的,或(iii)先进的技术已经出现了限制运营数据。该方法明确地将失败的潜在的时空原因纳入更新模型,允许对改善维护和缓解策略的因果区进行排名。虽然新方法适用于各种行业的组件可靠性和可用性分析,但本文展示其估算冷却液事故(LOCA)频率的价值,这是核概率风险评估(PRA)的启动事件发电厂(NPPS)。

著录项

  • 来源
    《Reliability Engineering & System Safety》 |2019年第10期|106479.1-106479.15|共15页
  • 作者单位

    UIUC Dept Nucl Plasma & Radiol Engn Urbana IL 61820 USA|UIUC Sociotech Risk Anal SoTeRiA Ind Affiliates Progra Urbana IL 61820 USA;

    UIUC Dept Nucl Plasma & Radiol Engn Urbana IL 61820 USA|UIUC Sociotech Risk Anal SoTeRiA Ind Affiliates Progra Urbana IL 61820 USA;

    UIUC Dept Nucl Plasma & Radiol Engn Urbana IL 61820 USA|UIUC Sociotech Risk Anal SoTeRiA Ind Affiliates Progra Urbana IL 61820 USA;

    UIUC Dept Nucl Plasma & Radiol Engn Urbana IL 61820 USA|UIUC Sociotech Risk Anal SoTeRiA Ind Affiliates Progra Urbana IL 61820 USA;

    UIUC Dept Nucl Plasma & Radiol Engn Urbana IL 61820 USA|UIUC Sociotech Risk Anal SoTeRiA Ind Affiliates Progra Urbana IL 61820 USA;

    UIUC Dept Nucl Plasma & Radiol Engn Urbana IL 61820 USA|UIUC Sociotech Risk Anal SoTeRiA Ind Affiliates Progra Urbana IL 61820 USA;

    UIUC Dept Nucl Plasma & Radiol Engn Urbana IL 61820 USA|UIUC Sociotech Risk Anal SoTeRiA Ind Affiliates Progra Urbana IL 61820 USA|UIUC Beckman Inst Adv Sci & Technol Urbana IL USA|UIUC Illinois Informat Inst Urbana IL USA;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Probabilistic Risk Assessment (PRA); Renewal process modeling; Probabilistic Physics-of-Failure (PPoF); Maintenance work process model; Loss of Coolant Accident (LOCA); Component reliability and availability;

    机译:概率风险评估(PRA);更新过程建模;概率物理失败(PPOF);维护工作过程模型;冷却液事故(LOCA)丧失;组件可靠性和可用性;

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