Deblending of seismic data in the wavelet domain via a convolutional neural network based on data augmentation

Blended acquisition, which allows multiple sources almost simultaneously fired, has become an effective way for accelerating seismic data acquisition. In order to use conventional processing methods for imaging, deblending is necessary for this special acquisition. Convolutional neural network‐based...

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Veröffentlicht in:Geophysical Prospecting 2024-01, Vol.72 (1), p.213-228
Hauptverfasser: Wang, Shaowen, Song, Peng, Tan, Jun, Xia, Dongming, Du, Guoning, Wang, Qianqian
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Sprache:eng
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Zusammenfassung:Blended acquisition, which allows multiple sources almost simultaneously fired, has become an effective way for accelerating seismic data acquisition. In order to use conventional processing methods for imaging, deblending is necessary for this special acquisition. Convolutional neural network‐based deblending methods provide a novel end‐to‐end framework for source separation. We proposed a field‐data‐based augmentation method that uses shuffled deblending noise as the features to be learned and take the inaccurate labels as the output of the network. Synthetic data experiments show that a network trained on data set with the proposed data augmentation method has higher accuracy for deblending even if the labelled data are noisy. Besides, 2D discrete wavelet transform, which has the advantage of multiscale decomposition and dimensionality reduction, is introduced to accelerate the computation of the network. The data augmentation method for data set generation and the computational speedup method for network training/predicting are also applied to field data. The results from synthetic and field data all confirm the performance of our methods.
ISSN:0016-8025
1365-2478
DOI:10.1111/1365-2478.13277