PyESD
Downscaler
A Python package for downscaling climate variables using machine learning and reanalysis datasets.
Python Package for Empirical Statistical Downscaling. pyESD is under active development and all colaborators are welcomed. The purpose of the package is to downscale any climate variables e.g. precipitation and temperature using predictors from reanalysis datasets (eg. ERA5) to point scale. pyESD adopts many ML and AL as the transfer function.
47 stars
5 watching
11 forks
Language: Python
last commit: 16 days ago
Linked from 1 awesome list
deep-learningdownscalingensemble-machine-learningmachine-learningprecipitationsckit-learntensorflow2
Related projects:
Repository | Description | Stars |
---|---|---|
arcticsnow/topopyscale | A Python library for downscaling climate data to hillslope scale using topography-based methods | 41 |
pangeo-data/scikit-downscale | Tools for enhancing climate model simulations through statistical postprocessing and downscaling techniques | 185 |
btschwertfeger/python-cmethods | A collection of bias correction techniques for climate data analysis | 60 |
projectdrawdown/solutions | An open-source software conversion of Project Drawdown's climate models into a Python-based framework for analyzing and predicting global warming solutions | 218 |
pacificclimate/climdown | A package that provides statistical downscaling routines to refine coarse-scale climate model output at fine spatial resolutions. | 67 |
ecmwfcode4earth/deepr | Project aimed at downscaling global climate data to higher resolutions using deep learning techniques. | 22 |
santandermetgroup/downscaler | Provides tools and methods for bias correction and daily downscaling of climate data | 104 |
spencerahill/aospy | Automates computations involving gridded climate data and manages results | 84 |
xarray-contrib/xeofs | Tools for dimensionality reduction in climate science data analysis | 107 |
observingclouds/pysonde | A tool for converting and post-processing atmospheric sounding data from radiosonde files to netCDF format. | 8 |
ag14774/diffdist | Enables backpropagation in distributed settings and facilitates model parallelism using differentiable communication between processes | 61 |
carbonplan/cmip6-downscaling | Provides tools and data for downscaling CMIP6 climate models to daily timescales | 178 |
yzhao062/suod | A Python framework for accelerating large-scale unsupervised outlier detection in heterogeneous datasets | 380 |
climateimpactlab/downscalecmip6 | Makes CMIP6 climate model data more applicable for understanding climate impacts on humans and society by applying bias correction and downsampling techniques | 136 |
drckf/paysage | An unsupervised learning and generative models library for Python, focusing on probabilistic models and efficient computation. | 119 |