Abstract:Abstract:Research purposes: In order to remove the noise of metro tunnel deformation monitoring data which affected by environmental factors and increase the extrapolated predictive ability of deformation data, a new prediction method based on discrete wavelets and a modified support vector machine (SVM) is proposed.
Research conclusions:(1) The noise of tunnel deformation data can be removed by discrete wavelet analysis and the low frequency effective information can be acquired. (2) A dynamic on-line sliding window technique is introduced. Additionally, the final training samples and the training samples of the tunnel deformation prediction model could be determined by utilizing the two orders of sliding windows which aiming at dynamically adjusting and updating the number of samples. This could improve data utilization rate. (3) The performance of prediction model has been validated with Shanghai metro deformation data under steady state and unsteady state. The results show that this method has good de-noising effect and high precision. Also, the prediction model could be transferred to engineering application and may give references to the construction of tunnel prediction model.
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