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An R package that is user-friendly and facilitates running model ensembles, sensitivity analysis, calibration and output processing.

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LakeEnsemblR

R-CMD-check codecov Project Status: Active – The project has reached a stable, usable state and is being actively developed. DOI Citation Badge

Tools for running an ensemble of lake models using standardised input data. Lake models currently incorporated are Freshwater Lake Model (FLake), General Lake Model (GLM), General Ocean Turbulence Model (GOTM) (lake-branch), Simstrat, and MyLake.

You can find example setups here: https://github.com/aemon-j/LER_examples.

Check out our published paper here.

In v1.1, some changes occurred in the configuration file. If you want to adapt your existing setup, see: https://github.com/aemon-j/LakeEnsemblR/wiki/From-v1.0-to-v1.1

Installation

Prior to installing the package, you will need to install the packages which run the models and the tools for manipulating model data from GitHub. It is recommended to do this each time before testing to ensure all packages are up-to-date as parallel development might be ongoing.

#install.packages("remotes")
remotes::install_github("GLEON/rLakeAnalyzer")
remotes::install_github("aemon-j/GLM3r", ref = "v3.1.1")
remotes::install_github("USGS-R/glmtools", ref = "ggplot_overhaul")
remotes::install_github("aemon-j/FLakeR", ref = "inflow")
remotes::install_github("aemon-j/GOTMr")
remotes::install_github("aemon-j/gotmtools")
remotes::install_github("aemon-j/SimstratR")
remotes::install_github("aemon-j/MyLakeR")

Following this you can install LakeEnsemblR from Github with:

# install.packages("remotes")
remotes::install_github("aemon-j/LakeEnsemblR")

Should you run into unexpected installation issues, please have a look at this page: https://github.com/aemon-j/LakeEnsemblR/wiki/Installation-issues

Visualize

You can download PyNcView, a cross-platform NetCDF viewer, for viewing the NetCDF output.

Example model run


# Load LakeEnsemblR
library(LakeEnsemblR)

# Copy template folder
template_folder <- system.file("extdata/feeagh", package= "LakeEnsemblR")
dir.create("example") # Create example folder
file.copy(from = template_folder, to = "example", recursive = TRUE)
setwd("example/feeagh") # Change working directory to example folder

# Set config file & models
config_file <- "LakeEnsemblR.yaml"
model <- c("FLake", "GLM", "GOTM", "Simstrat", "MyLake")

# Example run
# 1. Export settings - creates directories with all model setups and exports settings from the LER configuration file
export_config(config_file = config_file, model = model)

# 2. Run ensemble lake models
run_ensemble(config_file = config_file, model = model)

Post-processing


# Load libraries for post-processing
library(gotmtools)
library(ggplot2)

## Plot model output using gotmtools/ggplot2
# Extract names of all the variables in netCDF
ncdf <- "output/ensemble_output.nc"
vars <- gotmtools::list_vars(ncdf)
vars # Print variables

p1 <- plot_heatmap(ncdf)
p1
# Change the theme and increase text size for saving
p1 <- p1 +
  theme_classic(base_size = 24) + 
  scale_colour_gradientn(limits = c(0, 21),
                         colours = rev(RColorBrewer::brewer.pal(11, "Spectral")))
# Save as a png file
ggsave("output/ensemble_heatmap.png", p1,  dpi = 300,width = 384,height = 280, units = "mm")

Plot Ensemble output

# Plot ensemble mean at 0.9m
model = c("FLake", "GLM", "GOTM", "Simstrat", "MyLake")
plot_ensemble(ncdf = ncdf, model = model, var = "temp", depth = 0.9)

# Load watertemp from netCDF file as a list
wtemp <- load_var(ncdf = ncdf, var = "temp", return = "list")
names(wtemp)

# Plot residual diagnostic plots
plots <- plot_resid(var_list = wtemp) # Plot residuals - returns a list of plots
names(plots) #

# Plot residuals vs. depth ("res_depth")
plots[[2]]

# Analyse the netCDF output
out <- analyse_ncdf(ncdf, model = model, spin_up = 0)
names(out)
str <- out[["strat"]]
str[str$year == 2010, ]
stats <- out[["stats"]]
stats

See the vignette for further examples.

How do I setup LakeEnsemblR for my lake?

Head on over to our Wiki for guides on how to set up your lake for LakeEnsemblR

How do I contribute new code back to the LakeEnsemblR project?

In order to contribute to this code, we recommend the following workflow:

  1. "fork" this repository to your own personal github account

  2. clone the github repository to your computer:

    $git clone <git@github.com:{username}/LakeEnsemblR.git>

  3. modify code or add new functionality, save the code

  4. add the repository master to a remote master called "upstream"

    $cd LakeEnsemblR

    $git remote add upstream <git@github.com:aemon-j/LakeEnsemblR.git>

  5. before pushing your changes to your repository, pull in the current version of the aemon-j master:

    $git fetch upstream

  6. merge these differences with your own "master" version:

    $git merge upstream/master

  7. push your changes to your github repository, in addition to changes made by pulling in the aemon-j master:

    $git push

  8. submit a pull request to aemon-j master using your account at github.com

Information for macOS users

To ensure that all model binaries work, we advise you to install the specific macOS packages (currently in a separated branch):

remotes::install_github("aemon-j/GLM3r", ref = "macOS")
remotes::install_github("aemon-j/FLakeR", ref = "macOS")
remotes::install_github("aemon-J/GOTMr", ref = "macOS")
remotes::install_github("aemon-j/SimstratR", ref = "macOS")

Unfortunately, this means your version of GLM will differ compared to the one included in the executables for Windows and Linux. GLM on macOS will be version 3.2.0a8 (most recent one on January 13, 2022), Windows/Linux use 3.1.1.

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An R package that is user-friendly and facilitates running model ensembles, sensitivity analysis, calibration and output processing.

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