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R-CMD-check codecov CRAN_Status_Badge lifecycle DOI:10.1111/2041-210X.13076

NLMR

NLMR is an R package for simulating neutral landscape models (NLM). Designed to be a generic framework like NLMpy, it leverages the ability to simulate the most common NLM that are described in the ecological literature. NLMR builds on the advantages of the raster package and returns all simulation as RasterLayer objects, thus ensuring a direct compatibility to common GIS tasks and a flexible and simple usage. Furthermore, it simulates NLMs within a self-contained, reproducible framework.

Installation

NLMR is not available on CRAN at the moment (see #95). The only way to install NLMR at the moment is:

# install.packages("remotes")
remotes::install_github("cran/RandomFieldsUtils")
remotes::install_github("cran/RandomFields")
remotes::install_github("ropensci/NLMR")

Windows users need to install RTools first. Rtools provides a compiler and some helpers to compile code for R in Windows. Download Rtools from here: https://cran.r-project.org/bin/windows/Rtools/ and select the appropriate Rtools version (4.0 with R 4.x.x)

Install Rtools in a directory with no fancy characters in its path, e.g. C:\R\Rtools is safe. To install, right click on the Rtools40.exe and select “Run as administrator”. During the installation make sure to select “Add Rtools to PATH”. Otherwise, accept all defaults for everything else.

Example

Each neutral landscape models is simulated with a single function (all starting with nlm_) in NLMR, e.g.:

random_cluster <- NLMR::nlm_randomcluster(nrow = 100,
                                      ncol = 100,
                                      p    = 0.5,
                                      ai   = c(0.3, 0.6, 0.1),
                                      rescale = FALSE)

random_curdling <- NLMR::nlm_curds(curds = c(0.5, 0.3, 0.6),
                              recursion_steps = c(32, 6, 2))


midpoint_displacememt <- NLMR::nlm_mpd(ncol = 100,
                                 nrow = 100,
                                 roughness = 0.61)

Overview

NLMR supplies 15 NLM algorithms, with several options to simulate derivatives of them. The algorithms differ from each other in spatial auto-correlation, from no auto-correlation (random NLM) to a constant gradient (planar gradients):

Function Description Crossreference Reference
nlm_curds Simulates a randomly curdled or wheyed neutral landscape model. Random curdling recursively subdivides the landscape into blocks. At each level of the recursion, a fraction of these blocks is declared as habitat while the remaining stays matrix. When option q is set, it simulates a wheyed curdling model, where previously selected cells that were declared matrix during recursion, can now contain a proportion of habitat cells Figure 1a,p O’Neill, Gardner, and Turner (1992); Keitt (2000)
nlm_distancegradient Simulates a distance gradient neutral landscape model. The gradient is always measured from a rectangle that one has to specify in the function (parameter origin) Figure 1b Etherington, Holland, and O’Sullivan (2015)
nlm_edgegradient Simulates a linear gradient orientated neutral model. The gradient has a specified or random direction that has a central peak, which runs perpendicular to the gradient direction Figure 1c Travis and Dytham (2004); Schlather et al. (2015)
nlm_fbm Simulates neutral landscapes using fractional Brownian motion (fBm). fBm is an extension of Brownian motion in which the amount of spatial autocorrelation between steps is controlled by the Hurst coefficient H Figure 1d Schlather et al. (2015)
nlm_gaussianfield Simulates a spatially correlated random fields (Gaussian random fields) model, where one can control the distance and magnitude of spatial autocorrelation Figure 1e Schlather et al. (2015)
nlm_mosaicfield Simulates a mosaic random field neutral landscape model. The algorithm imitates fault lines by repeatedly bisecting the landscape and lowering the values of cells in one half and increasing the values in the other half. If one sets the parameter infinite to TRUE, the algorithm approaches a fractal pattern Figure 1f Schlather et al. (2015)
nlm_neigh Simulates a neutral landscape model with land cover classes and clustering based on neighbourhood characteristics. The cluster are based on the surrounding cells. If there is a neighbouring cell of the current value/type, the target cell will more likely turned into a cell of that type/value Figure 1g Scherer et al. (2016)
nlm_percolation Simulates a binary neutral landscape model based on percolation theory. The probability for a cell to be assigned habitat is drawn from a uniform distribution Figure 1h Gardner et al. (1989)
nlm_planargradient Simulates a planar gradient neutral landscape model. The gradient is sloping in a specified or (by default) random direction between 0 and 360 degree Figure 1i Palmer (1992)
nlm_mosaictess Simulates a patchy mosaic neutral landscape model based on the tessellation of a random point process. The algorithm randomly places points (parameter germs) in the landscape, which are used as the centroid points for a voronoi tessellation. A higher number of points therefore leads to a more fragmented landscape Figure 1k Gaucherel (2008), Method 1
nlm_mosaicgibbs Simulates a patchy mosaic neutral landscape model based on the tessellation of an inhibition point process. This inhibition point process starts with a given number of points and uses a minimisation approach to fit a point pattern with a given interaction parameter (0 ‐ hardcore process; 1 ‐ Poisson process) and interaction radius (distance of points/germs being apart) Figure 1l Gaucherel (2008), Method 2
nlm_random Simulates a spatially random neutral landscape model with values drawn a uniform distribution Figure 1m With and Crist (1995)
nlm_randomcluster Simulates a random cluster nearest‐neighbour neutral landscape. The parameter ai controls for the number and abundance of land cover classes and p controls for proportion of elements randomly selected to form clusters Figure 1n Saura and Martínez-Millán (2000)
nlm_mpd Simulates a midpoint displacement neutral landscape model where the parameter roughness controls the level of spatial autocorrelation Figure 1n Peitgen and Saupe (1988)
nlm_randomrectangularcluster Simulates a random rectangular cluster neutral landscape model. The algorithm randomly distributes overlapping rectangles until the landscape is filled Figure 1o Gustafson and Parker (1992)

See also

NLMR was split during its development process - to have a minimal dependency version for simulating neutral landscape models and an utility toolbox to facilitate workflows with raster data. If you are interested in merging, visualizing or further handling neutral landscape models have a look at the landscapetools package.

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