Litcius/Paper detail

A Self-Supervised Deep Learning Method for Seismic Data Deblending Using a Blind-Trace Network

Shirui Wang, Wenyi Hu, Pengyu Yuan, Xuqing Wu, Qunshan Zhang, Prashanth Nadukandi, German Ocampo Botero, Jiefu Chen

2022IEEE Transactions on Neural Networks and Learning Systems30 citationsDOI

Abstract

The simultaneous-source technology for high-density seismic acquisition is a key solution to efficient seismic surveying. It is a cost-effective method when blended subsurface responses are recorded within a short time interval using multiple seismic sources. A following deblending process, however, is needed to separate signals contributed by individual sources. Recent advances in deep learning and its data-driven approach toward feature engineering have led to many new applications for a variety of seismic processing problems. It is still a challenge, though, to collect enough labeled data and avoid model overfitting and poor generalization performance over different datasets with a low resemblance from each other. In this article, we propose a novel self-supervised learning method to solve the deblending problem without labeled training datasets. Using a blind-trace deep neural network and a carefully crafted blending loss function, we demonstrate that the individual source-response pairs can be accurately separated under three different blended-acquisition designs.

Topics & Concepts

OverfittingComputer scienceTRACE (psycholinguistics)GeneralizationArtificial intelligenceArtificial neural networkDeep learningProcess (computing)Key (lock)Feature (linguistics)Supervised learningMachine learningPattern recognition (psychology)Data miningMathematicsComputer securityOperating systemPhilosophyMathematical analysisLinguisticsSeismic Imaging and Inversion TechniquesSeismic Waves and AnalysisSeismology and Earthquake Studies