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Skip to Search Results- 3Finite element analysis
- 1Convolutional neural network
- 1Critical limit strain
- 1Deep learning
- 1Deformational capacity
- 1Full-field stress prediction
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A New Material Characterization Approach for Evaluating the Deformational Capacity of Onshore Pipelines
DownloadSpring 2019
The buckling instability phenomenon in shell structures is inherently influenced by a variety of parameters which may exhibit direct nonlinear relationships with the resultant stress and consequent deformation in the structure, as well as complex interrelationships, under various loading...
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Development and Applications of Mechanics- and Data-based Capacity Models for Intact/Corroded Prestressed Concrete Bridge Girders
DownloadFall 2022
Prestressed concrete (PC) highway bridges represent an integral part of the transportation network and contribute significantly to socio-economic development. However, highway bridges are susceptible to Deterioration and thus exhibit structural deficiency after years of service, especially in the
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A finite element-convolutional neural network model (FE-CNN) for stress field analysis around arbitrary inclusions
Download2023-11-01
Rezasefat, Mohammad, Hogan, James D.
stress analysis such as structural engineering, material design, failure analysis, and multi-scale modeling.