Project the calibrated models within biomod2 into new space or time
For all the models currently implemented, biomod2 is able to project potential distributions of species in other areas, other resolutions or other time scales.
BIOMOD_Projection(modeling.output, new.env, proj.name, xy.new.env = NULL, selected.models = 'all', binary.meth = NULL, filtered.meth = NULL, compress = TRUE, build.clamping.mask = TRUE, ...)
modeling.output |
|
new.env |
A set of explanatory variables onto which models will be projected . It could be a |
proj.name |
a character defining the projection name (a new folder will be created with this name) |
xy.new.env |
optional coordinates of new.env data. Ignored if new.env is a |
selected.models |
'all' when all models have to be used to render projections or a subset vector of modelling.output models computed (accessing with the slot @models.computed of your |
binary.meth |
a vector of a subset of models evaluation method computed before (see |
filtered.meth |
a vector of a subset of models evaluation method computed before (see |
compress |
Boolean or character, the compression format of objects stored on your hard drive. May be one of ‘TRUE’, ‘FALSE’, ‘xz’ or ‘gzip’ (see |
build.clamping.mask |
if TRUE, a clamping mask will be saved on hard drive different (see details) |
... |
Additional arguments (see details section) |
Projections are done for all selected models, that means (by default) for all evaluation run, and pseudo absences selections if applicable. This projections may be used later to compute ensemble forecasting.
If build.clamping.mask
is set to TRUE
a file (same type than new.env
arg) will be saved in your projection folder. This mask will identifies locations where predictions are uncertain because the values of the variables are outside the range used for calibrating the models. The ‘build.clamping.mask’ values correspond to the number of variables that are out of their calibrating/training range. (see vignette for more details)
... may be :
silent
:logical, if TRUE, console outputs are turned off
do.stack
: logical, if TRUE, attempt to save all projections in a unique object i.e RasterStack
. If FALSE or if objects are too heavy to be load all together in memory, projections will be stored into separated files.
keep.in.memory
:logical, if FALSE only the link pointing to a hard drive copy of projections are stored in output object. That can be useful to prevent memory issues.
output.format
:whether ‘.RData’, ‘.grd’ or ‘.img’ defining projections saving format (on hard drive). If new.env
argument is under table format (data.frame
or matrix
), the only choice you have is ‘.RData’
omit.na
:logical, if TRUE (default), all not fully referenced environmental points will get a NA as prediction. If FALSE, models that can produce predictions with incomplete data will return a prediction value for this points.
on_0_1000
:logical, if TRUE (default), 0 - 1 probabilities are converted into a 0 - 1000 integer scale. This implies a lot of memory saving. User that want to comeback on a 0 - 1 scale latter will just have to divide all projections by 1000
Returns the projections for all selected model ("BIOMOD.projection.out"
object), and stored in the hard drive on the specific directory names by the name of the projection. The data is a 4-dimensions array (see ...) if new.env is a matrix
or a data.frame
. It is a rasterStack if new.env is a rasterStack
and or several rasterLayers if the rasterStack
is too large.
A new folder is also created on your hard drive. This folder contains the created projection object (basic one and binary and filtered ones if selected). The object are loaded with the load
function. The loaded object can be then plotted and analyzed.
Wilfried Thuiller, Damien Georges
# species occurrences DataSpecies <- read.csv(system.file("external/species/mammals_table.csv", package="biomod2"), row.names = 1) head(DataSpecies) # the name of studied species myRespName <- 'GuloGulo' # the presence/absences data for our species myResp <- as.numeric(DataSpecies[,myRespName]) # the XY coordinates of species data myRespXY <- DataSpecies[,c("X_WGS84","Y_WGS84")] # Environmental variables extracted from BIOCLIM (bio_3, bio_4, bio_7, bio_11 & bio_12) myExpl = raster::stack( system.file( "external/bioclim/current/bio3.grd", package="biomod2"), system.file( "external/bioclim/current/bio4.grd", package="biomod2"), system.file( "external/bioclim/current/bio7.grd", package="biomod2"), system.file( "external/bioclim/current/bio11.grd", package="biomod2"), system.file( "external/bioclim/current/bio12.grd", package="biomod2")) # 1. Formatting Data myBiomodData <- BIOMOD_FormatingData(resp.var = myResp, expl.var = myExpl, resp.xy = myRespXY, resp.name = myRespName) # 2. Defining Models Options using default options. myBiomodOption <- BIOMOD_ModelingOptions() # 3. Doing Modelisation myBiomodModelOut <- BIOMOD_Modeling( myBiomodData, models = c('SRE','RF'), models.options = myBiomodOption, NbRunEval=1, DataSplit=70, models.eval.meth = c('TSS'), do.full.models = FALSE) # 4.1 Projection on current environemental conditions myBiomodProjection <- BIOMOD_Projection(modeling.output = myBiomodModelOut, new.env = myExpl, proj.name = 'current', selected.models = 'all', binary.meth = 'TSS', compress = FALSE, build.clamping.mask = FALSE) ## Not run: # 4.2 Projection on future environemental conditions myExplFuture = raster::stack(system.file("external/bioclim/future/bio3.grd",package="biomod2"), system.file("external/bioclim/future/bio4.grd",package="biomod2"), system.file("external/bioclim/future/bio7.grd",package="biomod2"), system.file("external/bioclim/future/bio11.grd",package="biomod2"), system.file("external/bioclim/future/bio12.grd",package="biomod2")) myBiomodProjectionFuture <- BIOMOD_Projection(modeling.output = myBiomodModelOut, new.env = myExplFuture, proj.name = 'future', selected.models = 'all', binary.meth = 'TSS', compress = FALSE, build.clamping.mask = TRUE) # print summary and plot projections myBiomodProjectionFuture plot(myBiomodProjectionFuture) ## End(Not run)
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