AbstractThe objective of this paper was to predict the failure load in single lap adhesive joints subjected to tensile loading by using artificial neural networks. Experimental data obtained from the literature cover the single lap adhesive joints with various geometric models under the tensile loading. The data are arranged in a format such that two input parameters cover the length and width of bond area in single lap adhesive joints and the corresponding output is the ultimate failure load. An artificial neural network model was developed to estimate relationship between failure loads by using geometric dimensions of bond area as input data. A three-layer feedforward artificial neural network that utilized Levenberg–Marquardt learning al...
WOS: 000278072500006The aim of this study is to investigate the improvement of an artificial neural ...
Electronic packaging has been developed with high resolution and fine interconnection pitches. Non-c...
This study presents a model for estimating the fatigue life of magnesium and aluminium non-penetrate...
The objective of this paper was to predict the failure load in single lap adhesive joints subjected ...
AbstractThe objective of this paper was to predict the failure load in single lap adhesive joints su...
Adhesively bonded joints have an advantage in joining dissimilar engineering materials due to their ...
© 2022 Elsevier Ltd. All rights reserved. This is the accepted manuscript version of an article whic...
The aerospace, automotive and marine industries have witnessed a rapid increase of using adhesive bo...
The scope of this study is to examine the development of an artificial neural network (ANN) method f...
The scope of this study is to examine the development of an artificial neural network (ANN) method f...
The classical method of optimising structures for strength is computationally expensive due to the r...
In this study, a static shear force and fatigue life prediction model was developed using artificial...
In this study, a static shear force and fatigue life prediction model was developed using artificial...
The aim of this study is to investigate the improvement of an artificial neural network (ANN) method...
Mechanical joining and adhesive bonding provide convenience for manufacturing of complex structures,...
WOS: 000278072500006The aim of this study is to investigate the improvement of an artificial neural ...
Electronic packaging has been developed with high resolution and fine interconnection pitches. Non-c...
This study presents a model for estimating the fatigue life of magnesium and aluminium non-penetrate...
The objective of this paper was to predict the failure load in single lap adhesive joints subjected ...
AbstractThe objective of this paper was to predict the failure load in single lap adhesive joints su...
Adhesively bonded joints have an advantage in joining dissimilar engineering materials due to their ...
© 2022 Elsevier Ltd. All rights reserved. This is the accepted manuscript version of an article whic...
The aerospace, automotive and marine industries have witnessed a rapid increase of using adhesive bo...
The scope of this study is to examine the development of an artificial neural network (ANN) method f...
The scope of this study is to examine the development of an artificial neural network (ANN) method f...
The classical method of optimising structures for strength is computationally expensive due to the r...
In this study, a static shear force and fatigue life prediction model was developed using artificial...
In this study, a static shear force and fatigue life prediction model was developed using artificial...
The aim of this study is to investigate the improvement of an artificial neural network (ANN) method...
Mechanical joining and adhesive bonding provide convenience for manufacturing of complex structures,...
WOS: 000278072500006The aim of this study is to investigate the improvement of an artificial neural ...
Electronic packaging has been developed with high resolution and fine interconnection pitches. Non-c...
This study presents a model for estimating the fatigue life of magnesium and aluminium non-penetrate...