# A blended wavefield separation method for seismic exploration based on improved GoogLeNet

**Authors:** ZhiQiang Gan, XiangE Sun, Alberto Marchisio, Alberto Marchisio, Alberto Marchisio, Alberto Marchisio

PMC · DOI: 10.1371/journal.pone.0304207 · PLOS ONE · 2024-06-25

## TL;DR

This paper introduces a new method using an improved GoogLeNet to separate mixed seismic signals, improving the efficiency and accuracy of oil and gas exploration.

## Contribution

A novel data deblending method based on an improved GoogLeNet for seismic exploration is proposed.

## Key findings

- The improved GoogLeNet model effectively separates mixed wavefields from blended seismic data.
- The method achieves high-quality signal separation even in the presence of strong background noise.
- Experimental results confirm the model's ability to quickly extract useful seismic signals.

## Abstract

Simultaneous acquisition is a construction method that has been proposed in recent years to meet the requirements of ultra-large-scale and high-precision seismic exploration. Such method is highly efficient and can significantly reduce exploration costs by saving manpower and material resources, being extensively used in offshore exploration and several foreign seismic exploration projects. The data deblending step is a significant part of the operation of simultaneous acquisition, which directly affects the acquired data quality, and is a key factor for the success of oil and gas exploration. The simultaneous use of multiple seismic sources can generate blended noise with a random distribution in non-shot-gather datasets. However, the useful signal exhibits strong coherence, making it possible to separate the non-used wavefield from the blended data. Although the blended noise is randomly distributed in non-shot-gather datasets, it also has characteristics that are different from normal ambient noise, and its kinematic and dynamical characteristics are almost similar to the useful signal. As such, traditional filtering methods are not applicable, especially in the case of strong background noise. In the present study, simultaneous acquisition was introduced, the principle of data deblending using CNN was analyzed, and a data deblending method based on an improved version of GoogLeNet was established. The experimental results show that the trained network model could quickly and effectively separate the mixed wavefield from blended data, and achieve the expected useful signal.

## Full-text entities

- **Diseases:** ML (MESH:C537366)
- **Chemicals:** oil (MESH:D009821), PONE-D-24-02777A (-)
- **Species:** Homo sapiens (human, species) [taxon 9606]

## Full text

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## Figures

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## References

13 references — full list in the complete paper: https://tomesphere.com/paper/PMC11198824/full.md

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Source: https://tomesphere.com/paper/PMC11198824