Machine learning has the potential to enhance damage detection and prediction in materials science. Machine learning also has the ability to produce highly reliable and accurate representations, which can improve the detection and prediction of damage compared to the traditional knowledge-based approaches. These approaches can be used for a wide range of applications, including material design; predicting material properties; identifying hidden relationships; and classifying microstructures, defects, and damage. However, researchers must carefully consider the appropriateness of various machine learning algorithms, based on the available data, material being studied, and desired knowledge outcomes. In addition, the interpretability of certa...
This work aims to evaluate the predictive performance of various Machine Learning algorithms when a...
International audienceMicrostructurally small cracks exhibit large variability in their fatigue crac...
In material science, experiments and high-throughput models often consume a large amount of calendar...
thesisPredicting the growth behavior of microstructurally small fatigue cracks is a practically rele...
Structural health monitoring and assessment (SHMA) is exceptionally essential for preserving and sus...
The relationships between the fatigue crack growth rate ( d a / d N ) and stress intens...
This work aims to evaluate the performance of various machine learning algorithms in the prediction ...
The paper suggests a technique for predicting major cracks and other response characteristics of dif...
Defects in additively manufactured materials are one of the leading sources of uncertainty in mechan...
A key limitation of finite element analysis is accurate modelling of material damage. While addition...
Fatigue cracks are a major defect in metal alloys, and specifically, their study poses defect evalua...
The paper presents a coupled machine learning and pattern recognition algorithm to enable early-stag...
Data-driven algorithms for predicting mechanical properties with small datasets are evaluated in a c...
The dynamic experimental and numerical analysis of cracked beams has been studied with the aim of qu...
How can we monitor the growth of stress corrosion cracks (SCC) in an automated way through ultrasoni...
This work aims to evaluate the predictive performance of various Machine Learning algorithms when a...
International audienceMicrostructurally small cracks exhibit large variability in their fatigue crac...
In material science, experiments and high-throughput models often consume a large amount of calendar...
thesisPredicting the growth behavior of microstructurally small fatigue cracks is a practically rele...
Structural health monitoring and assessment (SHMA) is exceptionally essential for preserving and sus...
The relationships between the fatigue crack growth rate ( d a / d N ) and stress intens...
This work aims to evaluate the performance of various machine learning algorithms in the prediction ...
The paper suggests a technique for predicting major cracks and other response characteristics of dif...
Defects in additively manufactured materials are one of the leading sources of uncertainty in mechan...
A key limitation of finite element analysis is accurate modelling of material damage. While addition...
Fatigue cracks are a major defect in metal alloys, and specifically, their study poses defect evalua...
The paper presents a coupled machine learning and pattern recognition algorithm to enable early-stag...
Data-driven algorithms for predicting mechanical properties with small datasets are evaluated in a c...
The dynamic experimental and numerical analysis of cracked beams has been studied with the aim of qu...
How can we monitor the growth of stress corrosion cracks (SCC) in an automated way through ultrasoni...
This work aims to evaluate the predictive performance of various Machine Learning algorithms when a...
International audienceMicrostructurally small cracks exhibit large variability in their fatigue crac...
In material science, experiments and high-throughput models often consume a large amount of calendar...