Seismic internal multiple suppression method with encoder-decoder convolutional network based on data augmentation
LIU Xiaozhou1, HU Tianyue1, LIU Tao2, WEI Zhefeng2, XIE Fei2, AN Shengpei2
1. School of Earth and Space Sciences, Peking University, Beijing 100871, China;
2. SINOPEC Petroleum Exploration and Production Research Institute, Beijing 100083, China
Abstract:Internal multiple suppression is a cutting-edge technology challenge in seismic data denoising,which is of great significance for obtaining high-quality data and understanding the real subsurface structure. Current suppression methods of internal multiples are time-consuming and have high requirements for manual parameter tuning,which may lead to internal multiple leakage when processing data with a low signal-to-noise ratio (SNR). Therefore,this paper proposes an internal multiple suppression method with the encoder-decoder convolutional neural network (CNN) based on data augmentation. First,we estimate the primaries and internal multiples from the raw data by the internal multiple suppression method based on virtual events to obtain primary labels. Then,we establish two augmented training datasets. On the one hand,the internal multiple data are augmented by the change in amplitude,polarity,and travel time of internal multiples in the training samples to raise the generalization ability of the internal multiple suppression network. On the other hand,the Gaussian noise augmented datasets are obtained after different levels of Gaussian noise are added to the raw data,which can improve the anti-noise performance of the network. Finally,a deep encoder-decoder network suitable for internal multiple suppression is built for neural network training and prediction by the combination of the advantages of the denoising CNN (DnCNN) and U-shaped fully connolutional network (U-Net). The tests on synthetic and field data indicate that the proposed method can effectively suppress internal multiples and protect primaries and has strong generalization ability and anti-noise performance,which can significantly improve computational efficiency.
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