Click here for the app
Initiated during the 2021 Geothermal Hackathon and now incrementally improved.
Excel tool and method design:
- William (Bill) Cumming
Python app initiator:
- Irene Wallis (Cubic Earth)
App development collaborators:
- Hannah Wood
- Jan Niederau
- Jeff Jex
- Will Middlebrook
Feedback and contributors welcome.
- data = data open sourced for this project
- docs = published papers and original excel method
- environments = environment file for conda users
- figures = plots called by either the streamlit app or other files
- notebooks = ipynb used to build the methods and explore the data
- power_user_class = advanced methods under development
- streamlit -
- Power-Density_streamlit.py = runs streamlit app
- requirements.txt = environment file used by streamlit sharing server
- power_dens.py = primary function for the lognormal power density method
Power density is one of the methods used estimate the capacity of a conventional geothermal resource. It is typically used when there are insufficient data to undertake a numerical simulation.
The lognormal power density excel tool was developed by William (Bill) Cumming in the 90's and documented in the paper linked below.
This method relies on the development of coherent conceptual models of the resource, as described in the following paper.
The subsurface geometries of the P10-P50-P90 reservoir conceptual models are defined by available resource data and analogue reasoning. The potential production area is then defined using these geometries.
Cumming (2009) Geothermal Resource Conceptual Models Using Surface Exploration Data
Where only surface data and geophysical (MT) data are available, a range of possible subsurface resource geometries are possible. The below linked paper provides a continuum of reservoir geometries that may be used by resource teams as templates while they develop their conceptual model alternatives.
The power density is selected based on analogue resources. Wilmarth et al. (2015, 2020+1) compiled a database of power density for conventional geothermal reservoirs. They have provided the latest version of this database for inclusion in the data section of this repo.
Below are two case studies where this power density method was used to estimate resource capacity.