Predicting concrete properties using Neural Networks (NN) with Principal Component Analysis (PCA) technique

被引:0
作者
机构
[1] Geometrical Laboratory, Civil Engineering Department, University of Blida
[2] Civil Engineering Department, University of Sherbrooke
[3] Department of Informatics, University of Sherbrooke
[4] Civil Engineering Department, University of Chlef
来源
Kenai, S. (sdkenai@yahoo.com) | 1600年 / Techno-Press卷 / 10期
关键词
Additives; Concrete; Correlation; Neural Networks; Prediction; Principal Component Analysis;
D O I
10.12989/cac.2012.10.6.557
中图分类号
学科分类号
摘要
This paper discusses the combined application of two different techniques, Neural Networks (NN) and Principal Component Analysis (PCA), for improved prediction of concrete properties. The combination of these approaches allowed the development of six neural networks models for predicting slump and compressive strength of concrete with mineral additives such as blast furnace slag, fly ash and silica fume. The Back-Propagation Multi-Layer Perceptron (BPMLP) with Bayesian regularization was used in all these models. They are produced to implement the complex nonlinear relationship between the inputs and the output of the network. They are also established through the incorporation of a huge experimental database on concrete organized in the form Mix-Property. Thus, the data comprising the concrete mixtures are much correlated to each others. The PCA is proposed for the compression and the elimination of the correlation between these data. After applying the PCA, the uncorrelated data were used to train the six models. The predictive results of these models were compared with the actual experimental trials. The results showed that the elimination of the correlation between the input parameters using PCA improved the predictive generalisation performance models with smaller architectures and dimensionality reduction. This study showed also that using the developed models for numerical investigations on the parameters affecting the properties of concrete is promising.
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页码:557 / 573
页数:16
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共 32 条
  • [1] Bellamine F.H., Elkamel A., Model order reduction using neural network principal component analysis and generalized dimensional analysis, Eng. Comp. Int. J. Comp.-Aid Eng. Soft., 25, 5, pp. 443-463, (2008)
  • [2] Bentz D.P., A review of early-age properties of cement-based materials, Cement and Concrete Research, 38, 2, pp. 196-204, (2008)
  • [3] Bilim C., Atis C.D., Tanyildizi H., Karahan O., Predicting the compressive strength of ground granulated blast furnace slag concrete using artificial neural network, Adv. Eng. Softw., 40, 5, pp. 334-340, (2009)
  • [4] Bishop C.M., Neural networks and their applications, Rev. Sci. Instrum., 65, 6, pp. 1803-1832, (1994)
  • [5] Bolomey J., Granulation and prediction of probable strength of concrete (in French), Trav., 19, 30, pp. 228-232, (1995)
  • [6] Boukhatem B., Design of a Computer Integrated System for the Knowledge of Concrete with Cement Additions (SAICBA), (2011)
  • [7] Design of Normal Concrete Mixes, (1988)
  • [8] Chanvillard G., D'Aloia L., Prediction of early age concrete compressive strength: Application of the equivalent time method, Bull. LPC, 193, pp. 39-51, (1994)
  • [9] Waller V., Naproux P., De Larrard F., Contribution des fumées de silice et des cendres volantes silico-alumineuses à la résistance en compression du béton quantification, Bulletin des Laboratoires des Ponts et Chaussees, 0, 208, pp. 53-65, (1997)
  • [10] Dreyfus G., Martinez J.M., Samuelides M., Gordon M.B., Badran F., Thiria S., Herault L., Neural Networks: Methodologie and Application, (2002)