DDPM Solar Radiation model
A deep learning model for solar radiation nowcasting using modified MCVD model, a kind of DDPM model for video generation. The model predicts clearsky index and converts it to solar radiation for up to 6 or 36 time steps ahead.
Below is an example of DDPM generation process for 1-hour solar radiation prediction (6 time steps). The total iteration is 1000 steps, and every 50 steps are shown in the gif.
Overview
This repository contains two trained models (1hr & 6hr) for solar radiation forecasting:
- 1hr DDPM Model: Predicts solar radiation up to 1 hour ahead (6 time steps)
- 6hr DDPM Model: Predicts solar radiation up to 6 hours ahead (36 time steps).
The model uses multiple input sources:
- Himawari satellite data: Clearsky index calculated from Himawari satellite data
- WRF Prediction: Clearsky index from WRF's solar irradiation prediction
- Topography: Static topographical features
Installation
- Clone the repository & install Git LFS:
git lfs install
git clone <repository-url>
cd Diffusion_SolRad
git lfs pull
git lfs ls-files # confirm whether models weights & sample data are downloaded
- Install dependencies:
pip install -r requirements.txt
Requirements
- Python 3.x
- PyTorch 2.4.0
- NumPy 1.26.4
- einops 0.8.0
Usage
Basic Inference
Run solar radiation prediction using the pre-trained models:
python inference.py --pred-hr [1hr/6hr] --pred-mode [DDPM/DDIM] --basetime 202504131100
Command Line Arguments
pred-mode: Choose betweenDDPMorDDIMsampling methods (default:DDPM)pred-hr: Choose between1hror6hrprediction models (default:1hr)--basetime: Timestamp for input data in format YYYYMMDDHHMM (default:202504131100)
Example
# DDIM sampling method for 1-hour prediction
python inference.py --pred-hr 1hr --pred-mode DDIM --basetime 202507151200
Sample Data
The repository includes sample data files:
sample_202504131100.npzsample_202504161200.npzsample_202507151200.npz
Model Weights
Pre-trained weights are available for both models:
model_weights/ft06_01hr/weights.ckptmodel_weights/ft36_06hr/weights.ckpt
License
This project is released under the MIT License.
Inference Providers
NEW
This model isn't deployed by any Inference Provider.
๐
Ask for provider support
