Faculty of Engineering and Applied Science, Memorial University, St. John's, NL, Canada A1B3X5.
Risk Anal. 2010 Mar;30(3):400-20. doi: 10.1111/j.1539-6924.2009.01352.x. Epub 2010 Feb 15.
There is a need for accurate modeling of mechanisms causing material degradation of equipment in process installation, to ensure safety and reliability of the equipment. Degradation mechanisms are stochastic processes. They can be best described using risk-based approaches. Risk-based integrity assessment quantifies the level of risk to which the individual components are subjected and provides means to mitigate them in a safe and cost-effective manner. The uncertainty and variability in structural degradations can be best modeled by probability distributions. Prior probability models provide initial description of the degradation mechanisms. As more inspection data become available, these prior probability models can be revised to obtain posterior probability models, which represent the current system and can be used to predict future failures. In this article, a rejection sampling-based Metropolis-Hastings (M-H) algorithm is used to develop posterior distributions. The M-H algorithm is a Markov chain Monte Carlo algorithm used to generate a sequence of posterior samples without actually knowing the normalizing constant. Ignoring the transient samples in the generated Markov chain, the steady state samples are rejected or accepted based on an acceptance criterion. To validate the estimated parameters of posterior models, analytical Laplace approximation method is used to compute the integrals involved in the posterior function. Results of the M-H algorithm and Laplace approximations are compared with conjugate pair estimations of known prior and likelihood combinations. The M-H algorithm provides better results and hence it is used for posterior development of the selected priors for corrosion and cracking.
需要准确地模拟导致工艺装置中设备材料劣化的机制,以确保设备的安全可靠性。劣化机制是随机过程。最好使用基于风险的方法来描述它们。基于风险的完整性评估量化了各个组件所承受的风险水平,并提供了以安全和经济有效的方式减轻这些风险的手段。结构劣化的不确定性和可变性可以通过概率分布来最佳建模。先验概率模型提供了劣化机制的初始描述。随着更多检查数据的可用,这些先验概率模型可以进行修订,以获得代表当前系统的后验概率模型,并可用于预测未来的故障。在本文中,基于拒绝抽样的 Metropolis-Hastings (M-H) 算法用于开发后验分布。M-H 算法是一种马尔可夫链蒙特卡罗算法,用于生成后验样本序列,而无需实际了解归一化常数。在生成的马尔可夫链中忽略瞬态样本,根据接受标准拒绝或接受稳态样本。为了验证后验模型的估计参数,使用解析拉普拉斯逼近方法计算后验函数中涉及的积分。M-H 算法的结果和拉普拉斯逼近与已知先验和似然组合的共轭对估计进行了比较。M-H 算法提供了更好的结果,因此用于后验开发腐蚀和裂纹的选定先验。