外推法
巴黎法
极限学习机
算法
机器学习
强度因子
非线性系统
计算机科学
人工智能
断裂力学
人工神经网络
结构工程
数学
工程类
裂缝闭合
数学分析
物理
量子力学
作者
Hongxun Wang,Weifang Zhang,Fuqiang Sun,Wei Zhang
出处
期刊:Materials
[Multidisciplinary Digital Publishing Institute]
日期:2017-05-18
卷期号:10 (5): 543-543
被引量:87
摘要
The relationships between the fatigue crack growth rate ( d a / d N ) and stress intensity factor range ( Δ K ) are not always linear even in the Paris region. The stress ratio effects on fatigue crack growth rate are diverse in different materials. However, most existing fatigue crack growth models cannot handle these nonlinearities appropriately. The machine learning method provides a flexible approach to the modeling of fatigue crack growth because of its excellent nonlinear approximation and multivariable learning ability. In this paper, a fatigue crack growth calculation method is proposed based on three different machine learning algorithms (MLAs): extreme learning machine (ELM), radial basis function network (RBFN) and genetic algorithms optimized back propagation network (GABP). The MLA based method is validated using testing data of different materials. The three MLAs are compared with each other as well as the classical two-parameter model ( K * approach). The results show that the predictions of MLAs are superior to those of K * approach in accuracy and effectiveness, and the ELM based algorithms show overall the best agreement with the experimental data out of the three MLAs, for its global optimization and extrapolation ability.
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