Toy Dataset for Emulating the Fire Weather Index (FWI) Using Deep Learning Techniques
收藏NIAID Data Ecosystem2026-05-02 收录
下载链接:
https://zenodo.org/record/15075366
下载链接
链接失效反馈官方服务:
资源简介:
This dataset includes .nc files designed to replicate a toy example for emulating the Fire Weather Index (FWI) using deep learning techniques. Additionally, .h5 files containing 40 years of pre-trained models are provided for FWI emulation.
Predictands:
yTrain.nc: A 5-year ERA5-Land computed FWI dataset used to train a toy example deep learning model.
yTest.nc: A 3-year ERA5-Land computed FWI dataset used for prediction.
Predictors:
t2m_Train.nc: A 5-year ERA5-Land daily mean surface temperature dataset used as a predictor to train a deep learning model.
hurs_Train.nc: A 5-year ERA5-Land daily mean relative humidity dataset used as a predictor to train a deep learning model.
sfcwind_Train.nc: A 5-year ERA5-Land daily mean wind speed dataset used as a predictor to train a deep learning model.
Preprocessed Predictors:
xTest_stand.Rdata: A dataset containing pre-prepared predictor sets for use with a 40-year pre-trained deep learning model.
Deep Learning Models:
dense_P1.h5: A 40-year pre-trained Fully Connected Dense (FCD) model, stored in HDF5 format.
unet_P1.h5: A 40-year pre-trained U-Net model, stored in HDF5 format.
创建时间:
2025-03-24



