典型文献
Development of deep neural network model to predict the compressive strength of FRCM confined columns
文献摘要:
The present study describes a reliability analysis of the strength model for predicting concrete columns confinement influence with Fabric-Reinforced Cementitious Matrix(FRCM).through both physical models and Deep Neural Network model(artificial neural network(ANN)with double and triple hidden layers).The database of 330 samples collected for the training model contains many important parameters,i.e.,section type(circle or square),corner radius rc,unconfined concrete strength fco,thickness nt,the elastic modulus of fiber Ef,the elastic modulus of mortar Em.The results revealed that the proposed ANN models well predicted the compressive strength of FRCM with high prediction accuracy.The ANN model with double hidden layers(APDL-1)was shown to be the best to predict the compressive strength of FRCM confined columns compared with the ACI design code and five physical models.Furthermore,the results also reveal that the unconfined compressive strength of concrete,type of fiber mesh for FRCM,type of section,and the corner radius ratio,are the most significant input variables in the efficiency of FRCM confinement prediction.The performance of the proposed ANN models(including double and triple hidden layers)had high precision with R higher than 0.93 and RMSE smaller than 0.13,as compared with other models from the literature available.
文献关键词:
中图分类号:
作者姓名:
Khuong LE-NGUYEN;Quyen Cao MINH;Afaq AHMAD;Lanh Si HO
作者机构:
Department of Civil Engineering,University of Transport Technology,Hanoi 100000,Vietnam;Faculty of Arts and Design,University of Canberra,Bruce ACT 2617,Australia;Department of Civil Engineering,University of Engineering and Technology,Taxila 47080,Pakistan;Graduate School of Advanced Science and Engineering,Hiroshima University,Hiroshima 739-8527,Japan
文献出处:
引用格式:
[1]Khuong LE-NGUYEN;Quyen Cao MINH;Afaq AHMAD;Lanh Si HO-.Development of deep neural network model to predict the compressive strength of FRCM confined columns)[J].结构与土木工程前沿,2022(10):1213-1232
A类:
fco
B类:
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AB值:
0.486223
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