高放库更可靠概率安全评估输入参数分布的顺序贝叶斯更新模块

Youn-Myoung Lee, D. Cho
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引用次数: 0

摘要

引入贝叶斯方法,改进了放射性废物处置库概率安全评价中输入参数先验分布的置信度。利用马尔可夫链蒙特卡罗算法开发了一个基于GoldSim的模块,并通过GSTSPA (GoldSim总系统性能评估)实现,GSTSPA是一个用于放射性储存库系统通用/场址特定安全评估的GoldSim模板。在本研究中,全面解释了先验分布的顺序贝叶斯更新,并将其作为对储存库进行可靠安全性评估的基础。用假设的似然函数更新了与破裂岩石介质中核素输运相关的几个选定参数的先验分布到三个序列后验分布。为了说明目的,通过对概念储存库的概率安全评估来演示该过程。通过本研究表明,观测数据不足可以增强通常可用的输入参数值的先验分布的可信度,而输入参数值通常是不确定的。这特别适用于储存库系统内部和周围的核素行为,这通常表现出较长的时间跨度和较宽的建模领域。
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Sequential Bayesian Updating Module of Input Parameter Distributions for More Reliable Probabilistic Safety Assessment of HLW Radioactive Repository
A Bayesian approach was introduced to improve the belief of prior distributions of input parameters for the probabilistic safety assessment of radioactive waste repository. A GoldSim-based module was developed using the Markov chain Monte Carlo algorithm and implemented through GSTSPA (GoldSim Total System Performance Assessment), a GoldSim template for generic/site-specific safety assessment of the radioactive repository system. In this study, sequential Bayesian updating of prior distributions was comprehensively explained and used as a basis to conduct a reliable safety assessment of the repository. The prior distribution to three sequential posterior distributions for several selected parameters associated with nuclide transport in the fractured rock medium was updated with assumed likelihood functions. The process was demonstrated through a probabilistic safety assessment of the conceptual repository for illustrative purposes. Through this study, it was shown that insufficient observed data could enhance the belief of prior distributions for input parameter values commonly available, which are usually uncertain. This is particularly applicable for nuclide behavior in and around the repository system, which typically exhibited a long time span and wide modeling domain.
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