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Predict Damage Percentage in Test Specimens Using Improved Artificial Neural Network
This paper presents an improved artificial neural network to predict the damage percentage in the test sample. The main objective is to show that the presence of holes and more generally of notches and other connection gaps lead to a weakening of the structure due to local overstresses, called stress concentrations. It is therefore good to avoid them, as much as possible. When the presence of stress concentrators is inevitable, it is necessary to know the stress concentration factor associated with each geometry, a notion introduced in this problem, in order to dimension the structures. Large holes result in high stress concentration factors. This behavior clearly shows that the presence of holes in a specimen is a place of stress concentration which can lead to the initiation and propagation of cracks. In this study, using an improved artificial neural network (ANN) model, we aim to predict the damage percentage in test samples with higher accuracy and reliability. This improved ANN integrates state-of-the-art algorithms (Arithmetic Optimization Algorithm-AOA, Balancing Composition Motion Optimization-BCMO and Jaya Algorithm), refined training methodologies and an extensive dataset of stress values of different sizes to ensure a more comprehensive and robust understanding of damage prediction, thereby contributing to more accurate assessments of the structural integrity and reliability of tested samples.
Predict Damage Percentage in Test Specimens Using Improved Artificial Neural Network
This paper presents an improved artificial neural network to predict the damage percentage in the test sample. The main objective is to show that the presence of holes and more generally of notches and other connection gaps lead to a weakening of the structure due to local overstresses, called stress concentrations. It is therefore good to avoid them, as much as possible. When the presence of stress concentrators is inevitable, it is necessary to know the stress concentration factor associated with each geometry, a notion introduced in this problem, in order to dimension the structures. Large holes result in high stress concentration factors. This behavior clearly shows that the presence of holes in a specimen is a place of stress concentration which can lead to the initiation and propagation of cracks. In this study, using an improved artificial neural network (ANN) model, we aim to predict the damage percentage in test samples with higher accuracy and reliability. This improved ANN integrates state-of-the-art algorithms (Arithmetic Optimization Algorithm-AOA, Balancing Composition Motion Optimization-BCMO and Jaya Algorithm), refined training methodologies and an extensive dataset of stress values of different sizes to ensure a more comprehensive and robust understanding of damage prediction, thereby contributing to more accurate assessments of the structural integrity and reliability of tested samples.
Predict Damage Percentage in Test Specimens Using Improved Artificial Neural Network
Lecture Notes in Civil Engineering
Benaissa, Brahim (editor) / Capozucca, Roberto (editor) / Khatir, Samir (editor) / Milani, Gabriele (editor) / Oulad Brahim, Abdelmoumin (author) / Capozucca, Roberto (author) / Magagnini, Erica (author) / Khatir, Bochra (author) / Khatir, Abdelwahhab (author)
International Conference of Steel and Composite for Engineering Structures ; 2023 ; Lecce, Italy
Proceedings of the International Conference of Steel and Composite for Engineering Structures ; Chapter: 11 ; 105-116
2024-03-31
12 pages
Article/Chapter (Book)
Electronic Resource
English
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