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首页> 外文期刊>Journal of nuclear engineering and radiation science >Estimation of Flow-Accelerated Corrosion Rate in Nuclear Piping System
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Estimation of Flow-Accelerated Corrosion Rate in Nuclear Piping System

机译:核管道系统流动加速腐蚀速率的估计

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摘要

Flow-accelerated corrosion (FAC) is a life-limiting factor for the piping network of the primary heat transport system (PHTS) in CANDU reactors. The pipe wall thinning caused by FAC is monitored by carrying out periodic in-service inspections (ISI) to ensure the fitness-for-service of the piping system. Accurate prediction of the lifetime of various components in the PHTS piping network requires estimation of FAC thinning rate. The traditional Bayesian inference techniques commonly employed for parameter estimation are computationally costly. This paper presents an inexpensive and intuitive simulation-based Bayesian approach to FAC rate estimation, called approximate Bayesian computation using Markov chain Monte Carlo (ABC-MCMC). ABC-MCMC is a likelihood-free Bayesian computation scheme that generates samples directly from an approximate posterior distribution by simulating data sets from a forward model. The efficiency of ABC-MCMC is demonstrated by presenting a comparison with a likelihood-based Bayesian computation scheme, Metropolis-Hastings (MH) algorithm, using a practical data-based example. Furthermore, an innovative step has been proposed for reducing the Markov chain burn-in time in the proposed scheme. To indicate the need of a Bayesian approach in quantifying the uncertainties related to the FAC model parameters, results from the linear regression method, a common industrial approach, are also presented in this study. The numerical results show a notable reduction in computational time, suggesting that ABC-MCMC is an efficient alternative to the traditional Bayesian inference methods, specifically for handling noisy degradation data.
机译:流动加速的腐蚀(FAC)是蜡烛反应器中主要热传输系统(PHTS)的管道网络的寿命因子。通过在服务周期性检查(ISI)中监测由FAC引起的管壁变薄,以确保管道系统的适应性。 PHTS管道网络中各种组件的寿命的精确预测需要估计FAC稀释率。通常用于参数估计的传统贝叶斯推理技术是计算昂贵的。本文介绍了使用Markov Chain Monte Carlo(ABC-MCMC)的近似贝叶斯计算的FAC速率估计的廉价和直观的仿真探测方法。 ABC-MCMC是一种无奇怪贝叶斯计算方案,通过模拟来自前向模型的数据集直接从近似后部分布产生样本。通过呈现与基于可能性的贝叶斯计算方案,Metropolis-Hastings(MH)算法的比较来证明ABC-MCMC的效率,使用实际基于数据的示例。此外,已经提出了一种在提出的方案中减少马尔可夫链燃烧时间的创新步骤。为了表示需要贝叶斯方法,在量化与FAC模型参数相关的不确定性方面,本研究还提出了一种普遍的工业方法的线性回归方法的结果。数值结果表明计算时间显着降低,表明ABC-MCMC是传统贝叶斯推理方法的有效替代方案,专门用于处理噪声的降级数据。

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