Deep Learning for Seismic Imaging and Interpretation
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Updated
Sep 18, 2020 - Python
Deep Learning for Seismic Imaging and Interpretation
Unsupervised (Self-Supervised) Clustering of Seismic Signals Using Deep Convolutional Autoencoders
Earthquake source parameters from P- and S-wave displacement spectra
Preprocessing seismic data: download, format changing, and archiving
Julia language support for geophysical time series data
🔭 Read, parse seismic data from AnyShake Explorer, stream via SeedLink, WebSocket, TCP and archive to database, miniSEED.
A tool for exchanging data between SEG-Y format and NumPy array inside Python environment
3D Fault Segmentation by U-Net
The repository has the PyTorch codes to reproduce the results for our recently accepted paper, "Estimation of Acoustic Impedance from Seismic Data using Temporal Convolutional Network", in SEG Technical Program Expanded Abstracts, 2019.
Machine Learning/ Deep Learning processing Seismic data
🌏 Detecting seismic wave using 3 geophones or accelerometer, pack & send data to AnyShake Observer by RS232 / RS485 serial.
Automatic Microseismic Denoising and Onset Detection using customized thresholding.
List of Seedlink, Earthworm, Winston Wave Server DataCenters. Used in: https://www.src.com.au/ and https://github.com/xspanger3770/GlobalQuake
GMG: An open source geophysical modelling GUI
Seismic inversion
Using convolutional autoencoders to remove random noise from seismic data.
This collection of scripts is designed to assist seismologists and geophysicists in their research and data analysis. Whether you’re processing seismic data, visualizing waveforms, or performing complex analyses, these tools will help streamline your workflow.
Seismic monitoring experiment investigating hydraulic fracturing within the Kaybob-Duvernay horizon in Alberta. Managed by the University of Calgary.
Detecting Earthquake P-Waves using popular STA/LTA Algorithm with visualization and estimations of Seismometer Trajectory in 3D, S-Wave arrival time and much more.
This repository contains MATLAB scripts and sample data for applying denoising method presented in: "Automatic noise-removal/signal-removal based on general cross-validation thresholding in synchrosqueezed domain and its application on earthquake data"
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