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Title: | Estimations the Combined Flexural-Torsional Strength for Prestressed Concrete Beams Using Artificial Neural Networks |
Authors: | Zayan, Hend Mahmoud, Akram S. |
Keywords: | Generalized regression Neural network Prestressed Reinforced concrete beams Torsion. |
Issue Date: | 22-Mar-2022 |
Abstract: | When considering modern concrete structures, the significant role of torsional behaviour is recognised in engineers' design considerations. In this paper, the practical efficiency of dissimilar Artificial Neural Networks ANNs in predicting the combined torsional strength of concrete prestressed beams is evaluated. The experimental data database on 345 rectangular pretensioned prestressed concrete (PC) and reinforced concrete (RC) beams often published in research literature had been used to establish an ANN model. The input parameters affecting torsional strength selected were moment, shear, distance, height, pre-stressed reinforcing steel strength, eccentricity, transverse steel ratio, longitudinal steel ratio, rapture strength, yielding conventional steel tension and compressive strength of concrete. Each specification parameter was grouped into a neural network and the combined torsional strength of the prestressed concrete beam. The ANN models are designed and validated for any production and assessed across several layers of negative feedback. This study indicates that artificial neural networks have been reasonable correlated predictions of the ultimate torsional strength of prestressed concrete beams about 92%. The analysis concluded that an ANN model measured the combined torsional strength by considering the importance factor |
URI: | http://localhost:8080/xmlui/handle/123456789/1800 |
Appears in Collections: | هندسة السدود والموارد المائية |
Files in This Item:
File | Description | Size | Format | |
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Estimations the Combined Flexural-Torsional Strength for Prestressed Concrete Beams Using Artificial Neural Networks.pdf | 9.89 kB | Adobe PDF | View/Open |
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