Machine learning models are built to predict the strain values for which edge cracking occurs in hole expansion tests. The samples from this test play the role of sheet metal components to be manufactured, in which edge cracking often occurs associated with a uniaxial tension stress state at the critical edges of components. For the construction of the models, a dataset was obtained experimentally for rolled ferritic carbon steel sheets of different qualities and thicknesses. Two types of tests were performed: tensile and hole expansion tests. In the tensile test, the yield stress, the tensile strength, the strain at maximum load and the elongation after fracture were determined in the rolling and transverse directions. In the hole expansio...
In automotive manufacturing, high strength materials, and aluminum alloys are widely used to address...
Designing thin‐walled structural members is a complex process due to the possibility of multiple ins...
The goal of this research is to investigate, develop and validate analytical and numerical tools tha...
This work aims to evaluate the performance of various machine learning algorithms in the prediction ...
One of the main issues in sheet metal forming operations design is the determination of formability ...
The forming limit curve (FLC) is used to model the onset of sheet metal instability during forming p...
The study presents a Machine Learning (ML)-based framework designed to forecast the stress-strain re...
Due to the poor formability of zirconium alloy, crack is one of its most common failure modes when t...
The ongoing demand for bigger and more efficient ships pushes their designs towards the strength lim...
This work aims to evaluate the predictive performance of various Machine Learning algorithms when a...
AbstractTwo distinct implementations of the Mohr–Coulomb failure model are used in conjunction with ...
thesisPredicting the growth behavior of microstructurally small fatigue cracks is a practically rele...
Sheets’ buckling instability, also known as oil canning, is an issue that characterizes the resistan...
Tearing concerns in sheet metal forming can be predicted based on the strain and stress in the mater...
Machine learning has the potential to enhance damage detection and prediction in materials science. ...
In automotive manufacturing, high strength materials, and aluminum alloys are widely used to address...
Designing thin‐walled structural members is a complex process due to the possibility of multiple ins...
The goal of this research is to investigate, develop and validate analytical and numerical tools tha...
This work aims to evaluate the performance of various machine learning algorithms in the prediction ...
One of the main issues in sheet metal forming operations design is the determination of formability ...
The forming limit curve (FLC) is used to model the onset of sheet metal instability during forming p...
The study presents a Machine Learning (ML)-based framework designed to forecast the stress-strain re...
Due to the poor formability of zirconium alloy, crack is one of its most common failure modes when t...
The ongoing demand for bigger and more efficient ships pushes their designs towards the strength lim...
This work aims to evaluate the predictive performance of various Machine Learning algorithms when a...
AbstractTwo distinct implementations of the Mohr–Coulomb failure model are used in conjunction with ...
thesisPredicting the growth behavior of microstructurally small fatigue cracks is a practically rele...
Sheets’ buckling instability, also known as oil canning, is an issue that characterizes the resistan...
Tearing concerns in sheet metal forming can be predicted based on the strain and stress in the mater...
Machine learning has the potential to enhance damage detection and prediction in materials science. ...
In automotive manufacturing, high strength materials, and aluminum alloys are widely used to address...
Designing thin‐walled structural members is a complex process due to the possibility of multiple ins...
The goal of this research is to investigate, develop and validate analytical and numerical tools tha...