马尔可夫链
概率逻辑
故障率
高温合金
计算机科学
算法
材料科学
数学
统计
人工智能
机器学习
复合材料
微观结构
作者
Kaimin Guo,Hongzhuo Liu,Yan Han,Ziyuan Song,Zixu Guo,Dawei Huang,Xiaojun Yan
标识
DOI:10.1002/zamm.202300388
摘要
Abstract One of the most essential tasks in probabilistic damage tolerance assessment is to describe the scatter in crack growth accurately. This study proposes a stochastic model of the crack growth rate, which calculates the critical parameters of a random distribution accurately by combining the Markov chain and data fitting algorithms. The proposed method is validated by the crack growth test data of Ni‐based superalloy GH4710Li at 550°C. The validation results show that the proposed method is a robust and efficient stochastic model for the crack growth rate.
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