中国地震研究:英文版 · 2019年第1期37-51,共15页

Simultaneous Denoising and Interpolation of Seismic Data via the Deep Learning Method

作者:GAO Han,ZHANG Jie

摘要:Utilizing data from controlled seismic sources to image the subsurface structures and invert the physical properties of the subsurface media is a major effort in exploration geophysics. Dense seismic records with high signal-to-noise ratio (SNR) and high fidelity helps in producing high quality imaging results. Therefore, seismic data denoising and missing traces reconstruction are significant for seismic data processing. Traditional denoising and interpolation methods rarely occasioned rely on noise level estimations, thus requiring heavy manual work to deal with records and the selection of optimal parameters. We propose a simultaneous denoising and interpolation method based on deep learning. For noisy records with missing traces, we adopt an iterative alternating optimization strategy and separate the objective function of the data restoring problem into two sub-problems. The seismic records can be reconstructed by solving a least-square problem and applying a set of pre-trained denoising models alternatively and iteratively. We demonstrate this method with synthetic and field data.

发文机构:University of Science and Technology of China

关键词:DeeplearningConvolutionalneuralnetworkDENOISINGDataINTERPOLATIONITERATIVEALTERNATING

分类号: P[天文地球]

注:学术社仅提供期刊论文索引,查看正文请前往相应的收录平台查阅
相关文章