期刊文献+
共找到1篇文章
< 1 >
每页显示 20 50 100
Assessing compressive strengths of mortar and concrete from digital images by machine learning techniques
1
作者 Amit SHIULY Debabrata DUTTA Achintya MONDAL 《Frontiers of Structural and Civil Engineering》 SCIE EI CSCD 2022年第3期347-358,共12页
Compressive strength is the most important metric of concrete quality.Various nondestructive and semi-destructive tests can be used to evaluate the compressive strength of concrete.In the present study,a new image-bas... Compressive strength is the most important metric of concrete quality.Various nondestructive and semi-destructive tests can be used to evaluate the compressive strength of concrete.In the present study,a new image-based machine learning method is used to predict concrete compressive strength,including evaluation of six different models.These include support-vector machine model and various deep convolutional neural network models,namely AlexNet,GoogleNet,VGG19,ResNet,and Inception-ResNet-V2.In the present investigation,cement mortar samples were prepared using each of the cement:sand ratios of 1:3,1:4,and 1:5,and using the water:cement ratios of 0.35 and 0.55.Cement concrete was prepared using the cement:sand:coarse aggregate ratios of 1:5:10,1:3:6,1:2:4,1:1.5:3 and 1:1:2,using the water:cement ratio of 0.5 for all samples.The samples were cut,and several images of the cut surfaces were captured at various zoom levels using a digital microscope.All samples were then tested destructively for compressive strength.The images and corresponding compressive strength were then used to train machine learning models to allow them to predict compressive strength based upon the image data.The Inception-ResNet-V2 models exhibited the best predictions of compressive strength among the models tested.Overall,the present findings validated the use of machine learning models as an efficient means of estimating cement mortar and concrete compressive strengths based on digital microscopic images,as an alternative nondestructive/semi-destructive test method that could be applied at relatively less expense. 展开更多
关键词 support vector machine deep convolutional neural network MICROSCOPE digital image curing period
原文传递
上一页 1 下一页 到第
使用帮助 返回顶部