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摘要:
In this study,deep-neural-network(DNN)-and artificial-neural-network(ANN)-based models along with regression models have been developed to estimate the pressure,bending and elongation values of ground-brick(GB)-added mortar samples.This study is aimed at utilizing GB as a mineral additive in concrete in the ratios 0.0%,2.5%,5.0%,7.5%,10.0%,12.5%and 15.0%.In this study,756 mortar samples were produced for 84 different series and were cured in tap water(W),5%sodium sulphate solution(SS5)and 5%ammonium nitrate solution(AN5)for 7 days,28 days,90 days and 180 days.The developed DNN models have three inputs and two hidden layers with 20 neurons and one output,whereas the ANN models have three inputs,one output and one hidden layer with 15 neurons.Twenty-five previously obtained experimental sample datasets were used to train these developed models and to generate the regression equation.Fifty-nine non-training-attributed datasets were used to test the models.When these test values were attributed to the trained DNN,ANN and regression models,the brick-dust pressure as well as the bending and elongation values have been observed to be very close to the experimental values.Although only a small fraction(30%)of the experimental data were used for training,both the models performed the estimation process at a level that was in accordance with the opinions of experts.The fact that this success has been achieved using very little training data shows that the models have been appropriately designed.In addition,the DNN models exhibited better performance as compared with that exhibited by the ANN models.The regression model is a model whose performance is worst and unacceptable;further,the prediction error is observed to be considerably high.In conclusion,ANN-and DNN-based models are practical and effective to estimate these values.
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篇名 Estimating the Properties of Ground-Waste-Brick Mortars Using DNN and ANN
来源期刊 工程与科学中的计算机建模(英文) 学科 工学
关键词 Deep NEURAL network artificial NEURAL networks ground-brick pressure bending elongation.
年,卷(期) 2019,(1) 所属期刊栏目
研究方向 页码范围 207-228
页数 22页 分类号 TG1
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节点文献
Deep
NEURAL
network
artificial
NEURAL
networks
ground-brick
pressure
bending
elongation.
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引文网络交叉学科
相关学者/机构
期刊影响力
工程与科学中的计算机建模(英文)
月刊
1526-1492
江苏省南京市浦口区东大路2号东大科技园A
出版文献量(篇)
299
总下载数(次)
1
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0
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