Bearing Capacity of Circular Footing Resting on Recycled Construction Waste Materials using ANN Method

Publish Year: 1403
نوع سند: مقاله ژورنالی
زبان: English
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شناسه ملی سند علمی:

JR_JMAE-15-1_006

تاریخ نمایه سازی: 20 دی 1402

Abstract:

The goal of this research work was to use an Artificial Neural Network (ANN) model to predict the ultimate bearing capacity of circular footing resting on recycled construction waste over loose sand. A series of plate load tests were conducted by varying the thickness of two sizes of recycled construction waste (۵ mm and ۱۰.۶ mm) layer (۰.۴d, ۰.۶d, ۰.۸d, ۱d, and ۱.۲d, d: diameter of footing) prepared at different relative densities (۳۰%, ۵۰%, and ۷۰%) overlaying.  The ultimate bearing capacity obtained for various combinations was used to develop the ANN model. The input parameters of the ANN model were thickness of recycled construction waste layer to diameter of circular footing ratio, angle of internal friction of sand, unit weight of sand, angle of internal friction of recycled construction waste and unit weight of recycled construction waste, and the model's output parameter was ultimate bearing capacity. The FANN-SIGMOD_SYMMETRIC model with topology ۳-۲-۱ provided a higher estimate of the ultimate bearing capacity of circular footing, according to the ANN findings. The sensitivity analysis also revealed that the unit weight of sand and angle of internal friction of sand had insignificant effects on ultimate bearing capacity. The estimated ultimate bearing capacity was most affected by the angle of internal friction of recycled construction waste. The result of multiple linear regression analysis was not as good as the ANN model at predicting the ultimate bearing capacity.

Authors

Anant Saini

Department of Civil Engineering, National Institute of Technology Hamirpur, Himachal Pradesh, India

Jitendra Yadav

Department of Civil Engineering, National Institute of Technology Kurukshetra, Haryana, India

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  • . Arulrajah, A., Piratheepan, J., Disfani, M. M., & Bo, ...
  • . Blayi, R. A., Sherwani, A. F. H., Ibrahim, H. ...
  • . Boger, Z., & Guterman, H. (۱۹۹۷). Knowledge extraction from ...
  • . Cabalar, A. F., Zardikawi, O. A. A., & Abdulnafaa, ...
  • . Cardoso, R., Silva, R. V., Brito, de J., & ...
  • . Chaudhary, V., Yadav, J. S., & Dutta, R. (۲۰۲۳). ...
  • . Daraei, A., Herki, B. M. A., Sherwani, A. F. ...
  • . Daraei, A., Sherwani, A. F. H., Faraj, R. H., ...
  • . Das, S. K., & Basudhar, P. K. (۲۰۰۶). Undrained ...
  • . Dash, S. K., Rajagopal, K., & Krishnaswamy, N. R. ...
  • . Debats, J. M., & Sims, M. (۱۹۹۷). Vibroflotation in ...
  • . Dutta, R. K., Dutta, K., & Jeevanandham, S. (۲۰۱۵). ...
  • . Ganiron, T. U. J. (۲۰۱۵). Recycling Concrete Debris from ...
  • . Garson, G. (۱۹۹۱). Interpreting neural-network connection weights. AI Expert ...
  • . Golewski, G. L. (۲۰۲۲). The Specificity of Shaping and ...
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  • . Golewski, G. L. (۲۰۲۳c). Mechanical properties and brittleness of ...
  • . Golewski, G. L. (۲۰۲۳d). The Phenomenon of Cracking in ...
  • . Gupta, R., & Trivedi, A. (۲۰۰۹). Bearing capacity and ...
  • . Haeri, H., & Sarfarazi, V. (۲۰۱۶). The deformable multilaminate ...
  • . Haeri, H., Shahriar, K., Marji, M. F., & Moarefvand, ...
  • . Henzinger, C., & Heyer, D. (۲۰۱۸). Soil improvement using ...
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  • . Iqbal, M. R., Hashimoto, K., Tachibana, S., & Kawamoto, ...
  • . Islam, A., Fahim Badhon, F., Abedin, Z., Islam, M. ...
  • . Jain, R. K. (۲۰۱۳). A Study on Eco Friendly ...
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  • . Sharma, A., & Sharma, R. K. (۲۰۲۰). Strength and ...
  • . Soni, H., Saini, A., & Yadav, J. S. (۲۰۲۲). ...
  • . Swarna, S., Tezeswi, T. P., & Kumar, S. (۲۰۲۲). ...
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  • . Thakur, A., & Dutta, R. K. (۲۰۲۱). Study of ...
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  • . Yadav, Jitendra Singh. (۲۰۲۰). Feasibility study on utilisation of ...
  • . Zhang, G., Ding, Z., Zhang, R., Chen, C., Fu, ...
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