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Development of the pyrealm package, providing an integrated toolbox for modelling plant productivity, growth and demography using Python.

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The pyrealm package

codecov DOI Test and build

The pyrealm package provides a toolbox implementing some key models for estimating plant productivity, growth and demography in Python 3. The outputs of different models can be then easily fed into other models within pyrealm to allow productivity estimates to be fed forward into estimation of net primary productivity, growth and ultimately plant community demography.

The pyrealm package currently includes:

  • The P Model for estimating optimal rates of plant photosynthesis given the balance between carbon capture and water loss. This includes recent extensions to incorporate the effects of water stress, slow acclimation processes, models of C3/C4 competition and carbon isotope fractionation.
  • The T Model of the allocation of gross primary productivity to estimate net primary productivity and hence plant growth.
  • The SPLASH model for calculating soil moisture and actual evapotranspiration.
  • A suite of core physics functions and other utilities used to support the modules above.

For more details, see the package website: https://pyrealm.readthedocs.io/.

TODO Need to link here to a roadmap for the package and therefore create that roadmap along with the a feature set to aim for in version 1.0.0.

Using pyrealm

The pyrealm package requires Python 3.9 or greater. We make released versions available via PyPi and also generate DOIs for each release via Zenodo. You can install the most recent release using pip:

pip install pyrealm

You can now get started using pyrealm. For example, to calculate the estimated gross primary productivity of a C3 plant in a location, start a Python interpreter, using python, python3 or ipython depending on your installation, and run:

import numpy as np
from pyrealm.pmodel import PModelEnvironment, PModel

# Calculate the photosynthetic environment given the conditions
env = PModelEnvironment(
    tc=np.array([20]), vpd=np.array([1000]),
    co2=np.array([400]), patm=np.array([101325.0])
)

# Calculate the predictions of the P Model for a C3 plant
pmodel_c3 = PModel(env)

# Estimate the GPP from the model given the absorbed photosynthetically active light
pmodel_c3.estimate_productivity(fapar=1, ppfd=300)

# Report the GPP in micrograms of carbon per m2 per second.
pmodel_c3.gpp

This should give the following output:

array([76.42544948])

The package website provides worked examples of using pyrealm, for example to:

These worked examples also show how pyrealm can be used within Python scripts or Jupyter notebooks and how to use pyrealm with large datasets loaded using numpy or xarray with pyrealm classes and functions.

Citing pyrealm

The pyrealm repository can be cited following the information in the citation file. If you are using pyrealm in research, it is better to cite the DOI of the specific release from Zenodo.

Developing pyrealm

If you are interested in contributing to the development of pyrealm, please read the guide for contributors. Please do also read the code of conduct for contributing to this project.

Support and funding

Development of the prealm package has been supported by the following grants and institutions:

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