Krishu K Thapa1, Bhupinderjeet Singh1, Supriya Savalkar1, Alan Fern2, Kirti Rajagopalan1, Ananth Kalyanaraman1
Predicting the SWE value for multiple SNOTEL locations in the Western US using the Attention Models
-
Spatial_Attention.py - This file has the code for the spatial attention implementation along with training and testing. The data is loaded from the
SDL.py
file inside theDataLoader
folder. -
Temporal_Attention.py - This file has the code for the temporal attention implementation along with training and testing. The data is loaded from the
TDL.py
file inside theDataLoader
folder.
- Data: This has all the data we have used in our model implementation for the
SNOTEL
locations. - SDL.py: This is the data loader file for the spatial model. It returns the training and testing data for the Spatial Attention model.
- TDL.py: This is the data loader file for the temporal model. It returns the training and testing data for the Temporal Attention model.
- feature_prep.py: This file processes all the raw data and generates the processed csv files of data which are used by the data loaders for spatial and attention model.
If you use our idea in your research, please cite:
Thapa, Krishu & Singh, Bhupinderjeet & Savalkar, Supriya & Fern, Alan & Rajagopalan, Kirti & Kalyanaraman, Ananth. (2024). Attention-Based Models for Snow-Water Equivalent Prediction. Proceedings of the AAAI Conference on Artificial Intelligence. 38. 22969-22975. 10.1609/aaai.v38i21.30337. https://doi.org/10.1609/aaai.v38i21.30337