Science Score: 59.0%
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○CITATION.cff file
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✓.zenodo.json file
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✓DOI references
Found 5 DOI reference(s) in README -
✓Academic publication links
Links to: pubmed.ncbi, ncbi.nlm.nih.gov, sciencedirect.com, springer.com, mdpi.com -
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2 of 15 committers (13.3%) from academic institutions -
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○Scientific vocabulary similarity
Low similarity (10.8%) to scientific vocabulary
Repository
Future Technology Transformation models
Basic Info
Statistics
- Stars: 13
- Watchers: 8
- Forks: 1
- Open Issues: 42
- Releases: 3
Metadata Files
README.md
FTT StandAlone
Future Technology Transformation
This repository contains a family of Future Technology Transformation (FTT) models. Models that are included are:
- FTT:Power (Mercure, 2012) - data up to 2018, update to 2021 expected in June
- FTT:Heat (Knobloch et al, 2017) data up to 2020
- FTT:Industrial heat under construction
- FTT:Transport (Mercure et al, 2018) - data up to 2022
- FTT:Freight (under review) - data up to 2023
- FTT:Hydrogen (under construction)
Theoretical background
The FTT family of models are based on evolutionary economics. The uptake of new technologies typically follows an S-curve, which can be represented well with evolutionary dynamics (Mercure et al, 2012). The core equations for all of the models in the model family are coupled logistic equations of the Lotka-Volterra family, also known as the predator-prey equations. These equations are used to determine the evolution of the shares of various technologies in the models. Each model contains between ~10 to 25 technologies competing for market share.
FTT and E3ME
This repository contains the public standalone version of FTT, written in Python. A FORTRAN version of the model family is often used together with a macro-economic model as: E3ME-FTT. This model is managed by Cambridge Econometrics, and informs some of the inputs for the standalone model. In specific, energy demand is an output from the coupled model.
Installation
- Run the installceconda3.9externalusers.cmd script in _Pythoninstallation to install the prerequisite packages. On top of Anaconda's standard packages, bottle and paste are required. You can install these two packages with pip. Paste is being deprecated. If you cannot install paste, you can remove calls to paste in the Backend_FTT.py.
Running the model
- You can run the front-end of the model in your browser by double clicking FTTStandAlone_Launcher.cmd. Select the models to run and scenarios and explore the output.
- The first time you run the model, csv input files will be created. This takes a few additional minutes.
- Alternatively, you can run the model from the run_file.py script. Output is saved to a pickle file in the Output folder. Select the models and scenarios from the settings.ini file.
- Create new scenarios by adding a new folder in the Inputs folder. Data is read in first from this folder, and missing data is read from the S0 baseline folder.
References
- Heat: Knobloch, F., Pollitt H., Chewpreecha U., Daioglou V. and Mercure J-F. (2018) Simulating the deep decarbonisation of residential heating for limiting global warming to 1.5C, Energy Efficiency 12, Issue 2, pp 521550.
- Power: Mercure (2012): A global model of the power sector with induced technological change and natural resource depletion. Energy Policy 48.
- Power: Nijsse et al. (2023): The momentum of the solar energy transition . Nature Communications 14
- Passenger transport: Mercure, J-F., Lam, A., Billington, S. and Pollitt, H. (2018) Integrated assessment modelling as a positive science: private passenger road transport policies to meet a climate target well below 2C, Climatic Change, November 2018, Volume 151, Issue 2, pp 109129.
- Steel: Vercoulen, P.; Lee, S.; Han, X.; Zhang, W.; Cho, Y.; Pang, J. (2023) 'Carbon-Neutral Steel Production and Its Impact on the Economies of China, Japan, and Korea: A Simulation with E3ME-FTT:Steel. Energies 16, 4498. https://doi.org/10.3390/en16114498
Owner
- Name: Climate Policy Assessment Community of Models
- Login: cpmodel
- Kind: organization
- Location: United States of America
- Repositories: 1
- Profile: https://github.com/cpmodel
The community of Models includes CPAT, Mindset and FTT
GitHub Events
Total
- Create event: 37
- Commit comment event: 2
- Release event: 1
- Issues event: 15
- Watch event: 3
- Delete event: 35
- Issue comment event: 38
- Push event: 291
- Pull request review comment event: 41
- Pull request review event: 68
- Pull request event: 58
Last Year
- Create event: 37
- Commit comment event: 2
- Release event: 1
- Issues event: 15
- Watch event: 3
- Delete event: 35
- Issue comment event: 38
- Push event: 293
- Pull request review comment event: 41
- Pull request review event: 68
- Pull request event: 60
Committers
Last synced: 10 months ago
Top Committers
| Name | Commits | |
|---|---|---|
| Femke Nijsse | f****e@p****t | 204 |
| cormacmlynch | 1****h | 52 |
| Rosie Hayward | 1****1 | 36 |
| Ian Burton | i****0@e****k | 32 |
| Rosie Hayward | 1****n | 30 |
| Rishi Sahastrabuddhe | r****1@g****m | 18 |
| Chris Thoung | ct@c****m | 12 |
| AEdwards476 | a****6@e****k | 11 |
| Aicha Kharazi | k****9@g****m | 4 |
| Jamie Pirie | C****P | 3 |
| Pim Vercoulen | pv@c****m | 3 |
| aileenlam28 | 6****8 | 2 |
| Jamie Pirie | 1****n | 1 |
| dbastidas | d****c@g****m | 1 |
| ghardadi | g****i@g****m | 1 |
Committer Domains (Top 20 + Academic)
Issues and Pull Requests
Last synced: 10 months ago
All Time
- Total issues: 83
- Total pull requests: 296
- Average time to close issues: 5 months
- Average time to close pull requests: 17 days
- Total issue authors: 14
- Total pull request authors: 21
- Average comments per issue: 0.67
- Average comments per pull request: 0.85
- Merged pull requests: 195
- Bot issues: 0
- Bot pull requests: 0
Past Year
- Issues: 9
- Pull requests: 66
- Average time to close issues: 3 months
- Average time to close pull requests: about 1 month
- Issue authors: 4
- Pull request authors: 6
- Average comments per issue: 0.0
- Average comments per pull request: 0.86
- Merged pull requests: 39
- Bot issues: 0
- Bot pull requests: 0
Top Authors
Issue Authors
- Femkemilene (58)
- cormacmlynch (8)
- rh-camecon (3)
- pv-camecon (3)
- rhayward1 (2)
- PVercoulen-CE (1)
- QuentinLETERRIER (1)
- ldxib2 (1)
- ct-camecon (1)
- gressyde (1)
- rishids01 (1)
- jp-camecon (1)
- AEdwards476 (1)
- jk694exe (1)
Pull Request Authors
- Femkemilene (133)
- arpangolechha (30)
- cormacmlynch (29)
- rishids01 (26)
- ldxib2 (23)
- varunaga13 (8)
- rhayward1 (8)
- Shruti-d1 (7)
- jp-camecon (5)
- ct-camecon (4)
- PurpleHycinth (4)
- jk694exe (4)
- AEdwards476 (3)
- PVercoulen-CE (2)
- rh-camecon (2)