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A Bayesian Regularization Neural Network Model for Fatigue Life Prediction of Concrete

A Bayesian Regularization Neural Network Model for Fatigue Life Prediction of Concrete
Author(s): , ,
Presented at IABSE Congress: Bridges and Structures: Connection, Integration and Harmonisation, Nanjing, People's Republic of China, 21-23 September 2022, published in , pp. 1959-1968
DOI: 10.2749/nanjing.2022.1959
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The fatigue life of concrete is affected by many interwoven factors whose effect is nonlinear. Because of its unique self-learning ability and strong generalization capability, a neural network mod...
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Bibliographic Details

Author(s): (Beijing University of Technology, Beijing, China)
(Beijing University of Technology, Beijing, China)
(Beijing University of Technology, Beijing, China)
Medium: conference paper
Language(s): English
Conference: IABSE Congress: Bridges and Structures: Connection, Integration and Harmonisation, Nanjing, People's Republic of China, 21-23 September 2022
Published in:
Page(s): 1959-1968 Total no. of pages: 10
Page(s): 1959-1968
Total no. of pages: 10
DOI: 10.2749/nanjing.2022.1959
Abstract:

The fatigue life of concrete is affected by many interwoven factors whose effect is nonlinear. Because of its unique self-learning ability and strong generalization capability, a neural network model is proposed to predict concrete behavior in tensile fatigue. Firstly, the average relative impact value was constructed to analyze the importance of parameters affecting fatigue life, such as the maximum stress level Smax, stress ratio R, failure probability P, and static strength f. Then, using the backpropagation neural network improved by Bayesian regularization, S-N curves were obtained for the combinations of R=0,1, 0,2, 0,5; f=5, 6, 7MPa; P=5%, 50%, 95%. Finally, the tensile fatigue results obtained from different testing conditions were compared for compatibility. Besides utilizing the valuable fatigue test data scattered in the literature, insights gained from this work could provide a reference for subsequent fatigue test program design and fatigue evaluation.

Keywords:
concrete neural networks Fatigue life prediction Bayesian regularization
Copyright: © 2022 International Association for Bridge and Structural Engineering (IABSE)
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