The effect of mean stress is a significant factor in design for fatigue, especially under high cycle service conditions. The incorporation of mean stress effect in random loading fatigue problems using the frequency domain method is still a challenge. The problem is due to the fact that all cycle by cycle mean stress effects are aggregated during the Fourier transform process into a single zero frequency content. Artificial neural network (ANN) has great scope for non-linear generalization. This paper presents artificial neural network methods for including the effect of mean stress in the frequency domain approach for predicting fatigue damage. The materials considered in this work are metallic alloys. The results obtained present the ANN ...
Artificial neural networks (ANN) are extensively utilized in structural health monitoring. Neverthel...
The aim of this investigation was determining the fatigue behaviour of welded aluminium joints and s...
The aim of this paper is for classification for fatigue feature extraction parameters based on road ...
Random vibration fatigue loading occurs in automotive, aerospace, offshore and indeed in many struct...
The use of artificial intelligence especially based on artificial neural networks (ANN) is now preva...
There has been a lot of work done on the analysis of Gaussian loading analysis perhaps because its o...
In the aerospace and aviation sectors, the damage tolerance concept has been applied widely so that ...
The applicability of artificial neural networks (ANN) in predicting the strain-life fatigue properti...
An artificial neural network has been proved to be a sufficient tool for modelling fatigue life of m...
This study presents a model for estimating the fatigue life of magnesium and aluminium non-penetrate...
This article presents a study devoted to predicting the fatigue behavior of two different materials:...
The modelling of fatigue using machine learning (ML) has been gaining traction in the engineering co...
Fatigue damage estimation using neural networks is described in the paper. Attention is focused on t...
This thesis presents several developments in frequency domain fatigue analysis for dynamically sensi...
This study presents a model for estimating the fatigue life of magnesium and aluminium non-penetrate...
Artificial neural networks (ANN) are extensively utilized in structural health monitoring. Neverthel...
The aim of this investigation was determining the fatigue behaviour of welded aluminium joints and s...
The aim of this paper is for classification for fatigue feature extraction parameters based on road ...
Random vibration fatigue loading occurs in automotive, aerospace, offshore and indeed in many struct...
The use of artificial intelligence especially based on artificial neural networks (ANN) is now preva...
There has been a lot of work done on the analysis of Gaussian loading analysis perhaps because its o...
In the aerospace and aviation sectors, the damage tolerance concept has been applied widely so that ...
The applicability of artificial neural networks (ANN) in predicting the strain-life fatigue properti...
An artificial neural network has been proved to be a sufficient tool for modelling fatigue life of m...
This study presents a model for estimating the fatigue life of magnesium and aluminium non-penetrate...
This article presents a study devoted to predicting the fatigue behavior of two different materials:...
The modelling of fatigue using machine learning (ML) has been gaining traction in the engineering co...
Fatigue damage estimation using neural networks is described in the paper. Attention is focused on t...
This thesis presents several developments in frequency domain fatigue analysis for dynamically sensi...
This study presents a model for estimating the fatigue life of magnesium and aluminium non-penetrate...
Artificial neural networks (ANN) are extensively utilized in structural health monitoring. Neverthel...
The aim of this investigation was determining the fatigue behaviour of welded aluminium joints and s...
The aim of this paper is for classification for fatigue feature extraction parameters based on road ...