Paper
7 December 2023 Application of improved AlexNet for seismic data denoising
Ji Shangran, Shan Wei, Zhao Dan, Yue Yurong, Cui Shaohua
Author Affiliations +
Proceedings Volume 12941, International Conference on Algorithms, High Performance Computing, and Artificial Intelligence (AHPCAI 2023); 129411W (2023) https://doi.org/10.1117/12.3011755
Event: Third International Conference on Algorithms, High Performance Computing, and Artificial Intelligence (AHPCAI 203), 2023, Yinchuan, China
Abstract
We propose an improved AlexNet network model, to address the problems of low denoising performance of traditional LeNet-5 neural networks in removing random noise from seismic data. The network retains the original eight-layer calculation depth and uses ReLU as the Activation function to reduce the convolution core and the number of nodes in the convolution layer, thus obtaining higher noise feature extraction accuracy. The network trains the network with 10000 seismic data, tests the network with 1000 data, and optimizes the network. Experiments were conducted using a wide range of Marousi2 seismic data, and the results showed that the proposed network has good denoising performance. Compared with traditional wavelet algorithms, SVD, and LeNet-5 networks, experimental results show that the proposed network can achieve higher PSNR and SNR values and has better seismic data denoising performance compared to the above networks.
(2023) Published by SPIE. Downloading of the abstract is permitted for personal use only.
Ji Shangran, Shan Wei, Zhao Dan, Yue Yurong, and Cui Shaohua "Application of improved AlexNet for seismic data denoising", Proc. SPIE 12941, International Conference on Algorithms, High Performance Computing, and Artificial Intelligence (AHPCAI 2023), 129411W (7 December 2023); https://doi.org/10.1117/12.3011755
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KEYWORDS
Denoising

Signal to noise ratio

Convolution

Interference (communication)

Wavelets

Education and training

Feature extraction

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