Crack propagation analyses are fundamental for all mechanical structures for which safety must be guaranteed, e. g. as for the aviation and aerospace fields. The estimation of life for structures in presence of defects is a process inevitably affected by numerous and unavoidable uncertainty and variability sources, whose effects need to be quantified to avoid unexpected failures or excessive conservativism. In this work, residual fatigue life prediction models have been created through neural networks for the purpose of performing probabilistic life predictions of damaged structures in real-time and under stochastically varying input parameters. In detail, five different neural network architectures have been compared in terms of accuracy, ...
The modelling of fatigue using machine learning (ML) has been gaining traction in the engineering co...
Real-time failure diagnosis and prognosis play key roles in prognostics and health management of cri...
A key issue affecting the performances of every human-conceived engineering system is its degradatio...
Crack propagation analyses are fundamental for all mechanical structures for which safety must be gu...
AbstractMost of the studies available in the literature about sequential Monte-Carlo sampling algori...
The application of interval set techniques to the quantification of uncertainty in a neural network ...
Artificial neural networks (ANN) are extensively utilized in structural health monitoring. Neverthel...
Abstract. Recently, a model of fatigue damage dynamics h a s been reported, which allows the damage ...
A method for the prediction of the residual life of a component subject to structural degradation wh...
Defects in additively manufactured materials are one of the leading sources of uncertainty in mechan...
This paper concerns the use of neural networks for predicting the residual life of machines and comp...
The modelling of fatigue using machine learning (ML) has been gaining traction in the engineering co...
Real-time failure diagnosis and prognosis play key roles in prognostics and health management of cri...
A key issue affecting the performances of every human-conceived engineering system is its degradatio...
Crack propagation analyses are fundamental for all mechanical structures for which safety must be gu...
AbstractMost of the studies available in the literature about sequential Monte-Carlo sampling algori...
The application of interval set techniques to the quantification of uncertainty in a neural network ...
Artificial neural networks (ANN) are extensively utilized in structural health monitoring. Neverthel...
Abstract. Recently, a model of fatigue damage dynamics h a s been reported, which allows the damage ...
A method for the prediction of the residual life of a component subject to structural degradation wh...
Defects in additively manufactured materials are one of the leading sources of uncertainty in mechan...
This paper concerns the use of neural networks for predicting the residual life of machines and comp...
The modelling of fatigue using machine learning (ML) has been gaining traction in the engineering co...
Real-time failure diagnosis and prognosis play key roles in prognostics and health management of cri...
A key issue affecting the performances of every human-conceived engineering system is its degradatio...