Huge News!Announcing our $40M Series B led by Abstract Ventures.Learn More
Socket
Sign inDemoInstall
Socket

tcpypi

Package Overview
Dependencies
Maintainers
1
Alerts
File Explorer

Advanced tools

Socket logo

Install Socket

Detect and block malicious and high-risk dependencies

Install

tcpypi

tcpyPI: Tropical cyclone potential intensity calculations in Python

  • 1.3.5
  • PyPI
  • Socket score

Maintainers
1

tcpyPI: Potential Intensity Calculations in Python

tcpyPI, 'pyPI' for short, is a set of scripts and notebooks that compute and validate tropical cyclone (TC) potential intensity (PI) calculations in Python. It is a fully documented and improved port of the Bister and Emanuel 2002 algorithm (hereafter BE02) which was originally written in FORTRAN---and then MATLAB---by Prof. Kerry Emanuel (MIT). Kerry's original MATLAB code (pcmin.m) is found at:

The goals in developing and maintaining pyPI are to:

  • supply a freely available validated Python potential intensity calculator,
  • carefully document the BE02 algorithm and its Python implementation, and to
  • demonstrate and encourage the use of potential intensity theory in tropical cyclone climatology analysis.

If you have any questions, comments, or feedback, please contact the developer or open an Issue in the repository. A paper detailing pyPI is published at Geoscientific Model Development.

Citation

pyPI was developed by Daniel Gilford and has been archived on Zenodo:

DOI

If you use pyPI in your work, please include the citations:

Gilford, D. M.: pyPI (v1.3): Tropical Cyclone Potential Intensity Calculations in Python, Geosci. Model Dev., 14, 2351–2369, https://doi.org/10.5194/gmd-14-2351-2021, 2021.

and

Gilford, D. M. 2020: pyPI: Potential Intensity Calculations in Python, pyPI v1.3. Zenodo. http://doi.org/10.5281/zenodo.3985975

Full pyPI Description

Please read pyPI_Users_Guide_v1.3.pdf for a full overview and details on pyPI. The description includes the pyPI background, a PI computation derivation, validation against the commonly-used MATLAB algorithm (pcmin), and a set of sample analyses.

Getting Started

pyPI requires Python version 3.7+ to run. It was written and tested with Python 3.7.6. To get pyPI up and running on your system, clone the repository and ensure that you have the required dependencies.

Installation

Is packaged using the python package manager pip.

PyPI version

To install tcpypi from the command line:

pip install tcpypi

tcpyPI Dependencies

Not required by tcpyPI---but highly recommended!---is the versatility in calculating PI over large datasets provided by xarray. Dependancy versions and the associated tcpyPI updates are handled by Dependabot.

Python Implementation of "pc_min" (BE02 PI Calculator)

pi.py is the Python function which directly computes PI given atmospheric and ocean state variables (akin to the BE02 algorithm MATLAB implementation pc_min.m). Given input vector columns of environmental atmospheric temperatures (T) and mixing ratios (R) on a pressure grid (P), sea surface temperatures (SST), and mean sea-level pressures (MSL), the algorithm outputs potential intensity, the outflow level, the outflow temperature, and the minimum central pressure, and a flag that shows the status of the completed PI calculation. pyPI is an improvement on pcmin in that it handles missing values depending on user input flags.

Users who want to apply the PI calculation to a set of local environmental conditions need only to download pi.py, organize their data appropriately, and call the function to return outputs, e.g.:

(VMAX,PMIN,IFL,TO,LNB)=pi(SST,MSL,P,T,R)

Running a pyPI Sample

Included in the pyPI release is a sample script run_sample.py which runs global sample data from MERRA2 (in 2004) through pi.py, vectorizes the output, and performs several simple analyses. To run, simply:

python run_sample.py

and examine the outputs locally produced in full_sample_output.nc.

File Descriptions

Key files
  • pi.py - The primary function of pyPI, that computes and outputs PI (and associated variables) given atmospheric and ocean state variables.
  • run_sample.py - Example script that computes PI and accompanying analyses over the entire sample dataset
Data
  • sample_data.nc - Sample atmospheric and ocean state variable data and BE02 MATLAB output data; values are monthly averages over the globe from MERRA2 in 2004.
  • mdr.pk1 - Python pickled dictionary containing Main Development Region definitions from Gilford et al. (2017)
  • raw_sample_output.nc - Sample outputs from pi.py only created by run_sample.py
  • full_sample_output.nc - Full set of sample outputs from pi.py as well as sample analyses such as PI decomposition
Validation and Testing Notebooks
Misc.
  • utilities.py - Set of functions used in the pyPI codebase
  • constants.py - Set of meteorological constants used in the pyPI codebase
  • reference_calculations.m - Script used to generate sample BE02 MATLAB outout data from original MERRA2 files monthly mean; included for posterity and transperancy
  • pc_min.m - Original BE02 algorithm from MATLAB, adapted and used to produce analyses of Gilford et al. (2017; 2019)
  • clock_pypi.ipynb - Notebook estimating the time it takes to run pyPI on a laptop

Author

  • Daniel M. Gilford, PhD - Creation, Development, & Maintenance - GitHub

Contributor(s)

  • Daniel Rothenberg, PhD - Numba Optimization & Sample Code - GitHub

License

This project is licensed under the MIT License - see the LICENSE file for details

Acknowledgments

  • Kerry Emanuel (MIT) - Development of potential intensity theory; encouragement and permission to pursue Python implementation
  • Susan Solomon (MIT), Paul O'Gorman (MIT), Allison Wing (FSU) - Helpful conversations, advice, and suggestions on TC PI research
  • Dan Chavas (Purdue), Jonathan Lin (MIT), Raphael Rousseau-Rizzi (MIT) - Feedback on pyPI code and documentation

FAQs


Did you know?

Socket

Socket for GitHub automatically highlights issues in each pull request and monitors the health of all your open source dependencies. Discover the contents of your packages and block harmful activity before you install or update your dependencies.

Install

Related posts

SocketSocket SOC 2 Logo

Product

  • Package Alerts
  • Integrations
  • Docs
  • Pricing
  • FAQ
  • Roadmap
  • Changelog

Packages

npm

Stay in touch

Get open source security insights delivered straight into your inbox.


  • Terms
  • Privacy
  • Security

Made with ⚡️ by Socket Inc