kenya_clews_gsa

Sectoral interactions and primary drivers in integrated CLEWs modeling: Insights from Kenya

https://github.com/robertodawid/kenya_clews_gsa

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Repository

Sectoral interactions and primary drivers in integrated CLEWs modeling: Insights from Kenya

Basic Info
  • Host: GitHub
  • Owner: robertodawid
  • License: mit
  • Language: Jupyter Notebook
  • Default Branch: main
  • Size: 1.16 MB
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Created 12 months ago · Last pushed 12 months ago
Metadata Files
Readme License Citation

README.md

Sectoral interactions and primary drivers in integrated CLEWs modeling: Insights from Kenya

This repository contains the workflow used to conduct a Global Sensitivity Analysis on an Energy System Optimization model (ESOMs) developed in OSeMOSYS [^1]. The model was developed using the Climate Land Energy Water Systems (CLEWs) [^2] framework.

Create a new environment in Conda

The attached *.yml will allow you to create a new environment in Conda. The new environment has been tested and is working on Windows.
conda env create -f env.yml

Acknowledgements

The original version of the computational workflow that was extended for this work was developed by Will Usher under the Climate Compatible Growth programme, which is funded by UK aid from the UK government. The views expressed herein do not necessarily reflect the UK governments official policies. Usher W, Barnes T, Moksnes N and Niet T. Global sensitivity analysis to enhance the transparency and rigour of energy system optimisation modelling [version 1; peer review: 1 approved, 2 approved with reservations]. Open Res Europe 2023, 3:30 DOI

[^1]: Howells, M., Rogner, H., Strachan, N., Heaps, C., Huntington, H., Kypreos, S., ... & Roehrl, A. (2011). OSeMOSYS: the open source energy modeling system: an introduction to its ethos, structure and development. Energy Policy, 39(10), 5850-5870. [^2]: Howells, M., Hermann, S., Welsch, M. et al. Integrated analysis of climate change, land-use, energy and water strategies. Nature Clim Change 3, 621626 (2013). https://doi.org/10.1038/nclimate1789

Owner

  • Name: Roberto David Heredia
  • Login: robertodawid
  • Kind: user
  • Location: Stockholm, Sweden
  • Company: KTH Royal Institute of Technology

Energy Systems

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Dependencies

requirements.txt pypi
  • otoole >=1.0.4