w2w

Climate integration tool

Tool to integrate WUDAPT climate zone data into the Weather Research and Forecasting (WRF) model

A python tool that ingests WUDAPT information into WRF.

GitHub

40 stars
5 watching
16 forks
Language: Jupyter Notebook
last commit: 13 days ago
Linked from 1 awesome list


Backlinks from these awesome lists:

Related projects:

Repository Description Stars
panodata/dwdweather2 Library to access and manipulate weather data from the Deutscher Wetterdienst. 72
tuw-geo/ecmwf_models Provides tools for accessing and processing ECMWF reanalysis data 38
gis4wrf/gis4wrf A toolkit to facilitate Advanced Research Weather Forecasting modeling workflows with QGIS pre-processing and visualization capabilities. 166
ecmwf/climetlab Provides an interface to weather and climate data for scientific analysis in Python 374
ecmwfcode4earth/deepr Project aimed at downscaling global climate data to higher resolutions using deep learning techniques. 22
wrf-model/wrf A numerical weather prediction modeling system developed in Fortran 1,256
wswup/gridwxcomp Compares weather station data with gridded climate datasets hosted on Google Earth Engine 17
ecmwf/ecmwf-opendata A Python package to simplify the download of ECMWF open meteorological data from various servers. 181
earthobservations/wetterdienst Provides access to open weather data from various sources 364
ecmwf/ecpoint-calibrate A tool for calibrating and verifying numerical weather prediction model outputs against point observations. 21
ncar/wrf-python Provides diagnostic and interpolation routines for WRF-ARW model output 409
ecmwf-lab/ai-models An experimental framework for running AI-based weather forecasting models 402
ecmwf/atlas A parallel data structure library for numerical weather prediction and climate modeling. 118
akrherz/iem Provides a comprehensive system for ingesting and processing weather data from multiple sources, generating products, and maintaining a web presence. 142
ecmwfcode4earth/challenges_2020 A collaborative effort to develop innovative weather- and climate-related software using machine learning and cloud computing. 49