A Novel SVM-Based Method for Seismic First-Arrival Detecting
暂无分享,去创建一个
First arrivals detecting on seismic record is important at all times. A novel support vector machine (SVM)-based method for seismic first-arrival pickup is proposed in this research. Firstly, the multi-resolution wavelet decomposition is used to de-noise the seismic record. And then, feature vectors are extracted from the denoise data. Finally, both SVM and artificial neural network (ANN) models are employed to train and predict the feature vectors. Experimental results demonstrate that the SVM model gives better accuracy than the ANN model. It is promising that the novel method is very prospective.
[1] Zou Xiaobo,et al. Distinguishing different cultivar apples by electronic nose based on support vector machine , 2007 .
[2] Zhang Xuegong,et al. INTRODUCTION TO STATISTICAL LEARNING THEORY AND SUPPORT VECTOR MACHINES , 2000 .
[3] Corinna Cortes,et al. Support-Vector Networks , 1995, Machine Learning.
[4] Dai Xu. Seismic signal detection and first arrival pickup based on mutual information , 2007 .