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Estimation of the functional failure probability of a thermal-hydraulic passive system by Subset Simulation

机译:用子集仿真估计热工被动系统的功能失效概率

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In the light of epistemic uncertainties affecting the model of a thermal-hydraulic (T-H) passive system and the numerical values of its parameters, the system may find itself in working conditions which do not allow it to accomplish its function as required. The estimation of the probability of these functional failures can be done by Monte Carlo (MC) sampling of the uncertainties in the model followed by the computation of the system response by a mechanistic T-H code. The procedure requires considerable computational efforts for achieving accurate estimates. Efficient methods for sampling the uncertainties in the model are thus in order.rnIn this paper, the recently developed Subset Simulation (SS) method is considered for improving the efficiency of the random sampling. The method, originally developed to solve structural reliability problems, is founded on the idea that a small failure probability can be expressed as a product of larger conditional probabilities of some intermediate events: with a proper choice of the conditional events, the conditional probabilities can be made sufficiently large to allow accurate estimation with a small number of samples. Markov Chain Monte Carlo (MCMC) simulation, based on the Metropolis algorithm, is used to efficiently generate the conditional samples, which is otherwise a non-trivial task.rnThe method is here developed for efficiently estimating the probability of functional failure of an emergency passive decay heat removal system in a simple steady-state model of a Gas-cooled Fast Reactor (GFR). The efficiency of the method is demonstrated by comparison to the commonly adopted standard Monte Carlo Simulation (MCS).
机译:考虑到认知不确定性会影响热工(T-H)被动系统的模型及其参数的数值,该系统可能会发现自己处于无法使其按要求完成其功能的工作状态。这些功能故障的可能性的估计可以通过对模型中的不确定性进行蒙特卡洛(MC)采样,然后通过机械T-H代码计算系统响应来完成。该过程需要大量的计算工作才能获得准确的估算值。因此,有序地对模型中的不确定性进行采样的有效方法是有序的。在本文中,为了提高随机采样的效率,本文考虑了最近开发的子集模拟(SS)方法。该方法最初是为解决结构可靠性问题而开发的,其思想是将较小的故障概率表示为某些中间事件的较大条件概率的乘积:通过适当选择条件条件事件,可以将条件概率设为足够大以允许使用少量样本进行精确估计。基于Metropolis算法的马尔可夫链蒙特卡洛(MCMC)仿真用于有效生成条件样本,否则这将是一项不平凡的任务。rn本文开发了该方法,用于有效估计紧急被动设备功能失效的可能性气冷快堆(GFR)的简单稳态模型中的衰变除热系统。通过与常用的标准蒙特卡洛模拟(MCS)进行比较,证明了该方法的效率。

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