This study aimed at applying machine learning (ML) methods to analyze dynamic strength of 3D-printed polypropylene (PP)-based composites. The dynamic strength of additive manufactured PP-based composites with different fillers and printing parameters was investigated by split Hopkinson pressure bars. Based on experimental results, six machine learning approaches were applied to express the relationships between the dynamic strength and materials as well as printing parameters. The performance of the six machine learning algorithms with relatively small training datasets was evaluated. The comparison results showed that artificial neural network could achieve the highest prediction accuracy but with relatively low computational efficiency, w...
Prediction of mechanical properties is an essential part of material design. State-of-the-art simula...
A three layer feed forward artificial neural network (ANN) model having three input neurons, one out...
One of the basic points of Industry 5.0 is to make the industry sustainable. There is a need to deve...
Manufacturing polypropylene (PP) composites to meet customers’ needs is difficult, time-consuming, a...
Polymer composites are employed in a variety of applications due to their distinctive characteristic...
Additive manufacturing (AM) is a revolutionary technology that greatly improves the flexibility of f...
In this study, machine learning algorithms (MLA) were employed to predict and classify the tensile s...
Additive manufacturing (AM) is an attractive technology for the manufacturing industry due to flexib...
High flexural strength of computer-aided manufacturing resin composite blocks (CAD/CAM RCBs) are req...
This project reviews literature on the applications of Machine Learning (ML) in the development of M...
International audience3D-printed continuous ramie fiber reinforced polypropylene composites (CRFRPP)...
The work is devoted for creating a model for approximating the solution by the finite element method...
AbstractIn this study, several machine learning approaches are used for the prediction of the unconf...
Current development of high-performance fiber-reinforced cementitious composites (HPFRCC) mainly rel...
This work represents the first step towards the application of machine learning techniques in the pr...
Prediction of mechanical properties is an essential part of material design. State-of-the-art simula...
A three layer feed forward artificial neural network (ANN) model having three input neurons, one out...
One of the basic points of Industry 5.0 is to make the industry sustainable. There is a need to deve...
Manufacturing polypropylene (PP) composites to meet customers’ needs is difficult, time-consuming, a...
Polymer composites are employed in a variety of applications due to their distinctive characteristic...
Additive manufacturing (AM) is a revolutionary technology that greatly improves the flexibility of f...
In this study, machine learning algorithms (MLA) were employed to predict and classify the tensile s...
Additive manufacturing (AM) is an attractive technology for the manufacturing industry due to flexib...
High flexural strength of computer-aided manufacturing resin composite blocks (CAD/CAM RCBs) are req...
This project reviews literature on the applications of Machine Learning (ML) in the development of M...
International audience3D-printed continuous ramie fiber reinforced polypropylene composites (CRFRPP)...
The work is devoted for creating a model for approximating the solution by the finite element method...
AbstractIn this study, several machine learning approaches are used for the prediction of the unconf...
Current development of high-performance fiber-reinforced cementitious composites (HPFRCC) mainly rel...
This work represents the first step towards the application of machine learning techniques in the pr...
Prediction of mechanical properties is an essential part of material design. State-of-the-art simula...
A three layer feed forward artificial neural network (ANN) model having three input neurons, one out...
One of the basic points of Industry 5.0 is to make the industry sustainable. There is a need to deve...