Learning the blending spikes using sparse dictionaries

Author:

Chen Yangkang1,Zu Shaohuan1,Chen Wei23,Zhang Mi4,Guan Zhe5

Affiliation:

1. School of Earth Sciences, Zhejiang University, Hangzhou, Zhejiang Province 310027, China

2. Key Laboratory of Exploration Technology for Oil and Gas Resources of Ministry of Education, Yangtze University, Daxue Road No. 111, Caidian District, Wuhan 430100, China

3. Hubei Cooperative Innovation Center of Unconventional Oil and Gas, Daxue Road No.111, Caidian District, Wuhan 430100, China

4. State Key Laboratory of Petroleum Resources and Prospecting, China University of Petroleum, Fuxue Road 18th Beijing 102200, China

5. Applied Physics Program, Rice University, Houston, TX 77005, USA

Abstract

SUMMARYDeblending plays an important role in preparing high-quality seismic data from modern blended simultaneous-source seismic acquisition. State-of-the-art deblending is based on the sparsity-constrained iterative inversion. Inversion-based deblending assumes that the ambient noise level is low and the data misfit during iterative inversion accounts for the random ambient noise. The traditional method becomes problematic when the random ambient noise becomes extremely strong and the inversion iteratively fits the random noise instead of the signal and blending interference. We propose a constrained inversion model that takes the strong random noise into consideration and can achieve satisfactory result even when strong random noise exists. The principle of this new method is that we use sparse dictionaries to learn the blending spikes and thus the learned dictionary atoms are able to distinguish between blending spikes and random noise. The separated signal and blending spikes can then be better fitted by the iterative inversion framework. Synthetic and field data examples are used to demonstrate the performance of the new approach.

Funder

Zhejiang University

National Natural Science Foundation of China

Yangtze University

Ministry of Education

Publisher

Oxford University Press (OUP)

Subject

Geochemistry and Petrology,Geophysics

Reference46 articles.

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3. Simultaneous source separation by sparse Radon transform;Akerberg,2008

4. A new look at marine simultaneous sources;Beasley;Leading Edge,2008

5. A 3D simultaneous source field test processed using alternating projections: a new active separation method;Beasley;Geophys. Prospect.,2012

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