Cubic meter compressive strength prediction of concrete

Zhen Gong , Yimin Zhang , Youjian Hu , Yan Yu , Yanbin Yuan , Hua Li

Journal of Wuhan University of Technology Materials Science Edition ›› 2016, Vol. 31 ›› Issue (3) : 590 -593.

PDF
Journal of Wuhan University of Technology Materials Science Edition ›› 2016, Vol. 31 ›› Issue (3) : 590 -593. DOI: 10.1007/s11595-016-1414-8
Cementitious Materials

Cubic meter compressive strength prediction of concrete

Author information +
History +
PDF

Abstract

In order to improve the prediction accuracy of compressive strength of concrete,103 groups of concrete data were collected as the samples.We selected seven kinds of ingredients from the concrete samples, using Grid-SVM, PSO-SVM, and GA-SVM models to establish the prediction model of cubic meter compressive strength of concrete.The experimental results show that SVM model based on Grid optimization algorithm,SVM model based on Particle swarm optimization algorithm,SVM model based on Genetic optimization algorithm mean square error respectively are 0.001, 0.489 8, and 0.304 2, correlation coefficients are 0.994 8, 0.994 6, and 0.993 0. It is shown that cubic meter compressive strength prediction method based on Grid-SVM model is the best optimization algorithm.

Keywords

cubic meter compressive strength prediction / PSO-SVM / GA-SVM / Grid-SVM

Cite this article

Download citation ▾
Zhen Gong, Yimin Zhang, Youjian Hu, Yan Yu, Yanbin Yuan, Hua Li. Cubic meter compressive strength prediction of concrete. Journal of Wuhan University of Technology Materials Science Edition, 2016, 31(3): 590-593 DOI:10.1007/s11595-016-1414-8

登录浏览全文

4963

注册一个新账户 忘记密码

References

[1]

Mech J D. Analysis of Support Vector Regression for Approximation of Complex Engineering Analyses[J]. Journal of Mechanical Design, 2005, 127(6): 1077-1087.

[2]

Yang C C. On the Relationship Between Pore Structure and Chloride Diffusivity from Accelerated Chloride Migration Test in Cement-based Materials[J]. Cement and Concrete Research, 2006, 36(7): 1304-1311.

[3]

Wang Q, Qiu Y, Xu Y, et al. Experiment Research on Mechanical Properties of HRBF500 Concrete Beam After Fire[J]. Jourmal of Building Structure, 2012, 33(2): 50-55.

[4]

Liu F Q, Gardner L, Yang H. bPost-fire Behaviour of Reinforced Concrete Stub Columns Confined by Circular Steel Tubes[J]. Journal of Constructional Steel Research, 2014, 102(6): 82-103.

[5]

Huo J S, Zhang J G, Wang Z W, et al. Effects of Sustained Axial Load and Cooling Phrase on Post-fire Behaviour of Reinforced Concrete Stub Columns[J]. Fire Safety Journal, 2013, 59: 76-87.

[6]

Song T Y, Han L H, Yu H X. Concrete Filled Steel Tube Stub Columns under Combined Temperature and Loading[J]. Journal of Constructional Steel Research, 2010, 66: 369-384.

[7]

Xu C, Shao Y, Xu Lingyu. Experimental Study on Tensile Behavior of Cement Paste, Mortar and Concrete under High Strain Rates[J]. Journal of Wuhan University of Technology, 2015, 30(6): 1268-1273.

[8]

You Mingqing. Application of Unified Strength Theory to Rock[J]. Journal of Rock Mechanics and Engineering, 2013, 32(2): 258-265.

[9]

Liu D-h, Yuan S-c, Zhang J-h, et al. Optimization Design of Particle Swarm with Self-adaptive Parameter Adjusting[J]. Transactions of Chinese Society for Agriculture Machinery, 2008, 39(9): 134-137.

[10]

Fernander M, Caballero J. Genetic Algorithm Optimization in Drug Design QSAR:bayesian-regularized Genetic Neutral Networks and Genetic Algorithm Optimized Support Vectors Machines[J]. Mol Drivers, 2011, 15: 269-289.

[11]

Jia R, Hong Gang. Application of Particle Swarm Optimization-Least Square Support Vector Machine Algorithm in Mechanical Fault Diagnosid of High-Voltage Circuit Breaker[J]. Power System Technology, 2015, 34(3): 197-201.

[12]

Liu J, Shi L-qing. Regression Prediction of Mine Infow Based on SVM With Grid Search POs Optimization[J]. Coal Technology, 2015, 34(8): 183-187.

AI Summary AI Mindmap
PDF

93

Accesses

0

Citation

Detail

Sections
Recommended

AI思维导图

/