BioCro
BioCro is a model that predicts plant growth over time given
crop-specific parameters and environmental data as input.
It uses models of key physiological and biophysical processes
underlying plant growth (Humphries and
Long, 1995), and has previously been used for predicting biomass
yield and leaf area index of switchgrass and miscanthus (Miguez et al.,
2009). In 2022, BioCro was reorganized to take a truly modular
approach to modeling (Lochocki et al.,
2022) and a new soybean model was developed (Matthews et al.,
2022).
BioCro has also been integrated into a suite of tools that link the
model directly to crop trait and yield data (LeBauer et al., 2013). The
Predictive Ecosystem Analyzer (PEcAn) couples BioCro
to the Biofuel
Ecophysiological Traits and Yields database.
See References below for a full list of
scientific publications using the BioCro framework.
An example
The run_biocro()
function accepts initial values,
parameters, climate variables, and sets of modules to run. It returns
the results in a data frame.
library(BioCro)
library(lattice)
result <- with(soybean, {run_biocro(
initial_values,
parameters,
soybean_weather$'2002',
direct_modules,
differential_modules,
ode_solver
)})
xyplot(Stem + Leaf ~ TTc, data = result, type='l', auto = TRUE)
There are parameters and modules for soybean (Glycine max),
miscanthus (Miscanthus x giganteus), and willow
(Saliceae salix).
Installation
Requirements
- The R environment version
3.6.0 or greater.
- On Windows, a version of Rtools
appropriate for your version of R.
- On Linux, gcc and g++ version 4.9.3 or greater (consult
documentation for your distribution for installation instructions).
- On MacOS, Xcode.
Installation steps
- Obtain a local copy of this repository, making sure to include the
Git submodule code. This can be accomplished using either of two
methods:
- If you are new to Git, the easiest way to get a local copy is to
install GitHub Desktop and use the “Open with GitHub Desktop” option in
the “Code” dropdown on the GitHub page for this repository.
- Alternatively, clone the repository using Git on the command line in
the usual fashion by running
git clone https://github.com/biocro/biocro
The repository
contains a Git submodule, so you will need to take the additional step
of running git submodule update --init
to obtain it.
- Install the BioCro R package using one of the following sets of
comands. These assume that the source files are in a directory named
“biocro” residing in a parent directory located at
“path_to_source_code_parent_directory”.
To install from the command line:
cd path_to_source_code_parent_directory
R CMD INSTALL biocro
To install from within R:
setwd('path_to_source_code_parent_directory')
install.packages('biocro', repos=NULL, type='SOURCE')
Making contributions
Please see the contribution guidelines before submitting changes.
These may be found in Chapter One of the Developer’s Manual on
the public BioCro Documentation web
site.
Software Documentation
See the public BioCro
Documentation web site. There will be found not only the usual
package documentation, but also documentation of the C++ code, including
notes on the biological models used in BioCro and their implementation.
Also included is documentation for BioCro package developers and
maintainers.
There is also a separate page
that documents all of the quantities used by the Standard BioCro Module
Library.
License
The BioCro
R package is licensed under the MIT license,
while the BioCro C++ framework is licensed under version 3 or greater of
the GNU Lesser General Public License (LGPL). This scheme allows people
to freely develop models for any use (public or private) under the MIT
license, but any changes to the framework that assembles and solves
models must make source code changes available to all users under the
LGPL. See LICENSE.note
for more details.
Citing BioCro
Appropriate references for BioCro are Miguez et
al. (2009) and Lochocki et
al. (2022), with details given below. To cite the package itself,
use citation('BioCro')
in R to get details for the current
installed version.
References
- Humphries
S and Long SP (1995) WIMOVAC: a software package for modelling the
dynamics of plant leaf and canopy photosynthesis. Computer Applications
in the Biosciences 11(4): 361-371.
- Miguez
FE, Zhu XG, Humphries S, Bollero GA, Long SP (2009) A
semimechanistic model predicting the growth and production of the
bioenergy crop Miscanthus × giganteus: description, parameterization and
validation. Global Change Biology Bioenergy 1: 282-296.
- LeBauer D, Wang D,
Richter K, Davidson C, Dietze M (2013) Facilitating feedbacks
between field measurements and ecosystem models. Ecological Monographs
83(2): 133-154.
- Wang D, Jaiswal D,
Lebauer DS, Wertin TM, Bollero GA, Leakey ADB, Long SP (2015) A
physiological and biophysical model of coppice willow (Salix spp.)
production yields for the contiguous USA in current and future climate
scenarios. Plant, Cell & Environment 38(9): 1850-1865.
- Larsen S, Jaiswal D,
Bentsen NS, Wang D, Long SP (2015) Comparing predicted yield and
yield stability of willow and Miscanthus across Denmark. GCB Bioenergy
8(6): 1061-1070.
- Jaiswal D, de Souza
AP, Larsen S, LeBauer D, Miguez FE, Sparovek G, Bollero G, Buckeridge
MS, Long SP (2017) Brazilian sugarcane ethanol as an expandable
green alternative to crude oil use. Nature Climate Change 7(11):
788-792.
- Lochocki
EB, Rohde S, Jaiswal D, Matthews ML, Miguez FE, Long SP, McGrath JM
(2022) BioCro II: a software package for modular crop growth
simulations. in silico Plants 4(1): diac003.
- Matthews
ML, Marshall-Colón A, McGrath JM, Lochocki EB, Long SP (2022)
Soybean-BioCro: a semi-mechanistic model of soybean growth. in
silico Plants 4(1): diab032.
- He Y, Jaiswal D, Liang
XZ, Sun C, Long SP (2022) Perennial biomass crops on marginal land
improve both regional climate and agricultural productivity. GCB
Bioenergy 14(5): 558-571.
- He Y, Matthews
ML (2023) Seasonal climate conditions impact the effectiveness of
improving photosynthesis to increase soybean yield. Field Crops Research
296: 108907.
- Holland B, Matthews ML,
Bota P, Sweetlove LJ, Long SP, diCenzo GC (2023) A genome-scale
metabolic reconstruction of soybean and Bradyrhizobium diazoefficiens
reveals the cost–benefit of nitrogen fixation. New Phytologist 240(2):
744-756.