Inicio  /  Aerospace  /  Vol: 9 Par: 10 (2022)  /  Artículo
ARTÍCULO
TITULO

Prediction of Crack Growth Life at Elevated Temperatures with Neural Network-Based Learning Schemes

Songsong Lu    
Binchao Liu    
Rong Yang    
Qiuyi Wang and Rui Bao    

Resumen

Applying the machine learning (ML) technique in the modelling of crack growth (CG) behavior is a potential way to improve the efficiency and precision of CG assessment. However, research in this field at elevated temperatures is limited, although a lot of achievements have been obtained in CG assessment at room temperature. Neutral network (NN)-based methods to model the CG at elevated temperatures were therefore investigated in this paper. An ?indirect? method (NNK method) assessing the CG by modelling and integrating the crack growth rate (CGR) was established. A ?direct? method (ENNIL method) was built by further developing the NN-based increment learning scheme. The NNK method shows high accuracy in CG prediction with relatively short CG life, while the ENNIL method gives perfectly predicted results for cases with relatively long CG life. The combination of these two methods may be an effective way to further improve CG assessment at elevated temperatures.

 Artículos similares

       
 
Xiaojie Jiao, Cheng Cheng, Yubing Song, Gang Wang and Linjuan He    
The rock deformation and failure characteristics and mechanisms are very important for stability evaluation and hazard control in rock engineering. The process of rock deformation and failure is often accompanied by temperature changes. It is of great si... ver más
Revista: Applied Sciences

 
Guangwei Chen, Waiching Tang, Shuo Chen, Shanyong Wang and Hongzhi Cui    
Engineered cementitious composite (ECC) is a unique material, which can significantly contribute to self-healing based on ongoing hydration. However, it is difficult to model and predict the self-healing performance of ECC. Although different machine lea... ver más
Revista: Applied Sciences

 
Kasumi Morita, Masashi Mouri, Riccardo Fincato and Seiichiro Tsutsumi    
This paper investigates the fatigue cyclic deformation behavior of mid-carbon steel. Uniaxial tensile loading tests and fatigue tests under constant and multi-step amplitude loading steps are performed to characterize the influence of loading history. Th... ver más

 
Jingxia Yue, Jiankang Lei, Yordan Garbatov and Ke Yang    
Many studies have shown that the linear elastic fracture mechanics (LEFM) method based on the stress intensity factor range (?K) has limitations that cannot be ignored. Due to neglecting the influence of plastic deformation near the crack tip, LEFM shows... ver más

 
Gang Lei, Guanqing Wang, Jianjun Luo, Fucai Hua and Xiaonan Gong    
In view of the actual gap between the theoretical solution and the measured value of the range of the surrounding rock loose zone excavated by blasting, the formation process and influencing factors of the surrounding rock loose zone after blasting are a... ver más
Revista: Applied Sciences