GeoEnergyMath

Energy modeling library

A software library for solving models of geological energy systems using mathematical equations.

Software libraries for solving models described in Mathematical GeoEnergy (Wiley, 2018)

GitHub

8 stars
4 watching
0 forks
Language: Ada
last commit: 9 months ago
Linked from 1 awesome list


Backlinks from these awesome lists:

Related projects:

Repository Description Stars
energyrt/energyrt A tool for building complex energy system models using a simplified R-based approach with multiple optimization languages 22
openeemeter/eemeter Provides tools for calculating energy savings based on standardized models of building energy usage. 220
nrel/rev A tool for estimating renewable energy potential and techno-economic parameters 107
gugarosa/learnergy A Python library providing an easy-to-use implementation of energy-based machine learning algorithms. 65
tum-ens/pygreta Generates high-resolution potential maps and time series for renewable energy sources 40
nrel/geophires-x A geothermal techno-economic simulator framework with built-in models and tools for estimating costs and energy production. 31
transportenergy/database A collection of tools and databases for the International Transport Energy Modeling consortium 24
openenergyplatform/open-mastr A tool to access and process energy data from a German register 87
breakthrough-energy/powersimdata A Python software framework for analyzing and simulating energy systems. 51
oemof/oemof-solph Generates models for energy system analysis and optimization. 303
catalyst-cooperative/pudl Provides analysis-ready energy system data to climate advocates, researchers, policymakers, and journalists. 481
nrel/ochre A Python-based tool for modeling flexible loads in residential buildings 44
niclasmattsson/globalenergygis Automates the generation of input data for energy models using public datasets 64
azure/opendigitaltwins-energygrid Provides a standardized data model for energy grid management and operations 55
powerapi-ng/pyjoules A tool to measure energy consumption of code snippets by leveraging Intel RAPL and NVIDIA GPU technologies. 71