The fatigue life evaluation of metallic materials plays an important role in ensuring the safety and long service life of metal structures. To further improve the accuracy and efficiency of the ultra-high-cycle fatigue life prediction of metallic materials, a new prediction method using machine learning was proposed. The training database contained the ultra-high-cycle fatigue life of different metallic materials obtained from fatigue tests, and two fatigue life prediction models were constructed based on the gradient boosting (GB) and random forest (RF) algorithms. The mean square error and the coefficient of determination were applied to evaluate the performance of the two models, and their advantages and application scenarios were also d...
Welding alloy 617 with other metals and alloys has been receiving significant attention in the last ...
This paper introduces a simple framework for accurately predicting the fatigue lifetime of notched c...
The applicability of artificial neural networks (ANN) in predicting the strain-life fatigue properti...
The accurate prediction of fatigue performance is of great engineering significance for the safe and...
In the aerospace engineering, many metal parts produced using Additive Manufacturing (AM) technique ...
Few machine learning (ML) models were applied for very-high-cycle fatigue (VHCF) analysis and these ...
In this paper, a new method for fatigue life prediction under multiaxial stress-strain conditions is...
Based on continuum damage mechanics, a probabilistic method of predicting high-cycle fatigue life fo...
Few machine learning models are applied to investigate the influence of defect features on very high...
Accurate prediction of the fatigue strength of steels is vital, due to the extremely high cost (and ...
In this research a machine learning model for predicting the rotating bending fatigue strength and t...
Non-destructive evaluation (NDE) of fatigue damage in metals is crucial for ensuring high product pe...
Since 1990s various methods have been proposed by researchers to estimate the fatigue strengths of m...
The relationships between the fatigue crack growth rate ( d a / d N ) and stress intens...
In this study, fatigue life predictions for the various metal matrix composites, R ratios, notch geo...
Welding alloy 617 with other metals and alloys has been receiving significant attention in the last ...
This paper introduces a simple framework for accurately predicting the fatigue lifetime of notched c...
The applicability of artificial neural networks (ANN) in predicting the strain-life fatigue properti...
The accurate prediction of fatigue performance is of great engineering significance for the safe and...
In the aerospace engineering, many metal parts produced using Additive Manufacturing (AM) technique ...
Few machine learning (ML) models were applied for very-high-cycle fatigue (VHCF) analysis and these ...
In this paper, a new method for fatigue life prediction under multiaxial stress-strain conditions is...
Based on continuum damage mechanics, a probabilistic method of predicting high-cycle fatigue life fo...
Few machine learning models are applied to investigate the influence of defect features on very high...
Accurate prediction of the fatigue strength of steels is vital, due to the extremely high cost (and ...
In this research a machine learning model for predicting the rotating bending fatigue strength and t...
Non-destructive evaluation (NDE) of fatigue damage in metals is crucial for ensuring high product pe...
Since 1990s various methods have been proposed by researchers to estimate the fatigue strengths of m...
The relationships between the fatigue crack growth rate ( d a / d N ) and stress intens...
In this study, fatigue life predictions for the various metal matrix composites, R ratios, notch geo...
Welding alloy 617 with other metals and alloys has been receiving significant attention in the last ...
This paper introduces a simple framework for accurately predicting the fatigue lifetime of notched c...
The applicability of artificial neural networks (ANN) in predicting the strain-life fatigue properti...