This library provides the codes to prepare and analyse probabilistic ashfall forecasts using Latin Hypercube Sampling and Numerical Weather Prediction Model ensembles. Producing the probabilistic forecasts requires an ashfall forecasting model like HYSPLIT. Details on this work can be found here.
cd ashfall_forecasts
conda env create -f environment.yml
conda activate lhs
python setup.py develop
python -m ipykernel install --user --name lhs
pip install kernda
kernda -o -y /path/to/jupyter/kernels/lhs/kernel.json
To find the path of your kernel.json file you can run:
jupyter --paths