--- language: en tags: - seismic - earthquake - phase-picking - deep-learning - pytorch license: mit datasets: - PS_Alaska metrics: - f1-score - precision - recall --- # PhaseNet-TF Alaska: Advanced Seismic Arrival Time Detection ## Model Description PhaseNet-TF is an advanced deep learning model for automatic seismic phase picking (P-wave, S-wave, and PS-wave detection) using spectrogram-based image segmentation approaches. The model leverages DeepLabV3Plus architecture to detect seismic arrivals with high accuracy, especially for weak and noisy signals from ocean-bottom seismometers and weak phases such as slab interface refracted PS and SP waves. This Alaska version is specifically trained on the PS_Alaska dataset for P and S phases. ## Available Versions This repository contains two versions of the PhaseNet-TF Alaska model: ### 🔄 Iteration 1 - **Model File**: `alaska_iter1.bin` - **Config**: `config_iter1.json` ### 🔄 Iteration 2 - **Model File**: `alaska_iter2.bin` - **Config**: `config_iter2.json` ## Model Architecture - **Backbone**: DeepLabV3Plus with ResNet34 encoder - **Input**: 3-component seismic waveforms converted to 6-channel spectrograms (real + imaginary) - **Output**: Probability maps for P, S, PS phases and noise - **Sampling Rate**: 40 Hz (dt_s = 0.025s) - **Window Length**: 4800 points (120 seconds) - **Spectrogram Size**: 64 × 4800 (frequency × time) - **Input Channels**: 6 (3 real + 3 imaginary spectrogram channels) - **Output Classes**: 4 (noise, P, S, PS) ## Citation If you use this model in your research, please cite: ```bibtex @article{jie2025background, title={Background Seismicity and Aftershocks of the 2020-2021 Large Earthquakes at the Alaska Peninsula Revealed by a Deep-learning-based Catalog}, author={Jie, Yaqi and Wei, Songqiao Shawn and Zhu, Weiqiang and Freymueller, Jeffrey Todd and Elliott, Julie}, journal={Authorea Preprints}, year={2025}, publisher={Authorea} } ``` ## License This model is licensed under the MIT License.