Deformation Prediction of Deep Excavation Using Support Vector Machine

Article Preview

Abstract:

Support Vector Machine (SVM) is a new pattern recognition method developed in recent years on the foundation of statistical learning theory. It wins popularity due to many attractive features and emphatically performance in the fields of nonlinear and high dimensional pattern recognition. Due to the complexity of the deep excavation, deformation prediction problem has not been a good solution. In the paper the support vector machine model was proposed to predict the deep excavation deformation. On the basis of deep excavation displacement data measured with real time series, the model of deep excavation displacement with time was built by SVM. Typical deformation data of deep excavation is used as learning and test samples. Comparison analysis is made between calculated values generated by SVM method and observed values. The result shows this method is feasible and effective.

You might also be interested in these eBooks

Info:

Periodical:

Pages:

66-69

Citation:

Online since:

February 2012

Export:

Price:

[1] Wang Xudong, Zhao Jianping, Yu Chuang, Artificial neural networks in the deep pit deformation prediction, Journal of Nanjing University of Technology, 2002, 24(5), pp.73-76.

Google Scholar

[2] Zhao Min, Yan Shao Bing, Zhu Min. Deep excavation deformation of neural network, Industrial Buildings, 2006, 36,pp.596-599.

Google Scholar

[3] John C. Platt. Sequential Minimal Optimization: A Fast Algorithm for training Support Vector machines, Technical Report MSR-TR-98-14, and April, 21, (1998).

DOI: 10.7551/mitpress/1130.003.0016

Google Scholar

[4] Keerthi K, Lin C J. A asymptotic behaviors of support vector machines with Gaussian kernel. Neural Computation, 2003, 153 (3): 1667-1689.

DOI: 10.1162/089976603321891855

Google Scholar

[5] ZHAO Hongbo, the nonlinear behavior of rock mechanics study of support vector machines, ​​Wuhan, Wuhan Institute of Rock and Soil Mechanics, (2003).

Google Scholar