Fatigue cracks are a major defect in metal alloys, and specifically, their study poses defect evaluation challenges in aluminum aircraft alloys. Existing inline inspection tools exhibit measurement uncertainties. The physical-based methods for crack growth prediction utilize stress analysis models and the crack growth model governed by Paris’ law. These models, when utilized for long-term crack growth prediction, yield sub-optimum solutions and pose several technical limitations to the prediction problems. The metaheuristic optimization algorithms in this study have been conducted in accordance with neural networks to accurately forecast the crack growth rates in aluminum alloys. Through experimental data, the performance of the hybrid meta...
This purpose of this research was to identify fatigue crack growth and predict failure for 7075-T6 a...
Defects in additively manufactured materials are one of the leading sources of uncertainty in mechan...
The fatigue or durability life of a few critical structural metallic components often sets the safe ...
The relationships between the fatigue crack growth rate ( d a / d N ) and stress intens...
In this paper, the dynamic neural modeling of fatigue crack growth process in ductile alloys is stud...
Linear-elastic fracture mechanics based technique was used to measure the fracture toughness in term...
In the aerospace and aviation sectors, the damage tolerance concept has been applied widely so that ...
Lightweight materials are in constant progress due to the new requirements of mobility. At the same ...
A new recurrent neural model for crack growth process of aluminium alloy is developed in this work. ...
Very little success has been reported in the literature in developing diagnostic systems trained on ...
Machine learning has the potential to enhance damage detection and prediction in materials science. ...
Artificial neural networks (ANN) are extensively utilized in structural health monitoring. Neverthel...
The paper presents a coupled machine learning and pattern recognition algorithm to enable early-stag...
Half of the mechanical failures are due to fatigue loading associated with it. Fatigue in structure ...
The current financial climate is driving a move towards increased use of computer modelling techniqu...
This purpose of this research was to identify fatigue crack growth and predict failure for 7075-T6 a...
Defects in additively manufactured materials are one of the leading sources of uncertainty in mechan...
The fatigue or durability life of a few critical structural metallic components often sets the safe ...
The relationships between the fatigue crack growth rate ( d a / d N ) and stress intens...
In this paper, the dynamic neural modeling of fatigue crack growth process in ductile alloys is stud...
Linear-elastic fracture mechanics based technique was used to measure the fracture toughness in term...
In the aerospace and aviation sectors, the damage tolerance concept has been applied widely so that ...
Lightweight materials are in constant progress due to the new requirements of mobility. At the same ...
A new recurrent neural model for crack growth process of aluminium alloy is developed in this work. ...
Very little success has been reported in the literature in developing diagnostic systems trained on ...
Machine learning has the potential to enhance damage detection and prediction in materials science. ...
Artificial neural networks (ANN) are extensively utilized in structural health monitoring. Neverthel...
The paper presents a coupled machine learning and pattern recognition algorithm to enable early-stag...
Half of the mechanical failures are due to fatigue loading associated with it. Fatigue in structure ...
The current financial climate is driving a move towards increased use of computer modelling techniqu...
This purpose of this research was to identify fatigue crack growth and predict failure for 7075-T6 a...
Defects in additively manufactured materials are one of the leading sources of uncertainty in mechan...
The fatigue or durability life of a few critical structural metallic components often sets the safe ...