WAVELET NEURAL NETWORK PREDICTION METHOD OF DEFORMATION MONITORING DATA
Pan Guorong 1, 2) ; and Gu Chuan 1)
1)Department of Surveying and Geoinformatics of Tongji Uni., Shanghai 2000922)Key Laboratory of Modern Engineering Surveying of SBSM, Shanghai 200092
Abstract In order to improve the precision and reliability of prediction of deformation monitoring data, the wavelet neural network which combines wavelet analysis and artificial neural network is used in deformation monitoring data processing. The prediction result with this method is compared with that by use of other prediction methods, and it is concluded that through the wavelet neural network better prediction result can be obtained.
Key words :
deformation monitoring
wavelet analysis
artificial neural network
wavelet neural network
deformation prediction
Received: 01 January 1900
Corresponding Authors:
Pan Guorong
Cite this article:
Pan Guorong,and Gu Chuan . WAVELET NEURAL NETWORK PREDICTION METHOD OF DEFORMATION MONITORING DATA[J]. , 2007, 27(4): 47-50.
Pan Guorong,and Gu Chuan . WAVELET NEURAL NETWORK PREDICTION METHOD OF DEFORMATION MONITORING DATA[J]. jgg, 2007, 27(4): 47-50.
URL:
http://www.jgg09.com/EN/ OR http://www.jgg09.com/EN/Y2007/V27/I4/47
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