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enmSdmX

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

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<strong>Tools for modeling niches and distributions of species </strong>

<img align="right" src="enmSdmX.png" height="223"/>

enmSdmX is a set of tools in <b>R</b> for implementing species distribution models (SDMs) and ecological niche models (ENMs), including: bias correction, spatial cross-validation, model evaluation, raster interpolation, biotic velocity (speed and direction of movement of a "mass" represented by a raster), and tools for using spatially imprecise records. The heart of the package is a set of "training" functions which automatically optimize model complexity based number of available occurrences. These algorithms include MaxEnt, MaxNet, boosted regression trees/gradient boosting machines (BRT), generalized additive models (GAM), generalized linear models (GLM), natural splines (NS), and random forests (RF). To enhance interoperability with other packages, the package does not create any new classes. The package works with PROJ6 geodetic objects and coordinate reference systems.

Installation

You can install this package from CRAN using:

install.packages('enmSdmX', dependencies = TRUE)

Alternatively, you can install the development version of this package using:

remotes::install_github('adamlilith/enmSdmX', dependencies = TRUE)

You may need to install the remotes package first.

Functions

Using spatially imprecise records

Data preparation

Bias correction

Model training

Model prediction

Model evaluation

Niche overlap and comparison

Functions for rasters

Coordinate reference systems

Geographic utility functions

Data

Citation

Smith, A.B., Murphy, S.J., Henderson, D., and Erickson, K.D. 2023. Including imprecisely georeferenced specimens improves accuracy of species distribution models and estimates of niche breadth. <i>Global Ecology and Biogeography</i> In press. [<b><a href='http://dx.doi.org/10.1101/2021.06.10.447988'>open access pre-print</a></b> | <a href='https://doi.org/10.1111/geb.13628'>published article</a></b>]

<b>Abstract</b>

<b>Aim</b> Museum and herbarium specimen records are frequently used to assess the conservation status of species and their responses to climate change. Typically, occurrences with imprecise geolocality information are discarded because they cannot be matched confidently to environmental conditions and are thus expected to increase uncertainty in downstream analyses. However, using only precisely georeferenced records risks undersampling of the environmental and geographical distributions of species. We present two related methods to allow the use of imprecisely georeferenced occurrences in biogeographical analysis.

<b>Innovation</b> Our two procedures assign imprecise records to the (1) locations or (2) climates that are closest to the geographical or environmental centroid of the precise records of a species. For virtual species, including imprecise records alongside precise records improved the accuracy of ecological niche models projected to the present and the future, especially for species with c. 20 or fewer precise occurrences. Using only precise records underestimated loss of suitable habitat and overestimated the amount of suitable habitat in both the present and the future. Including imprecise records also improves estimates of niche breadth and extent of occurrence. An analysis of 44 species of North American <i>Asclepias</i> (Apocynaceae) yielded similar results.

<b>Main conclusions</b> Existing studies examining the effects of spatial imprecision typically compare outcomes based on precise records against the same records with spatial error added to them. However, in real-world cases, analysts possess a mix of precise and imprecise records and must decide whether to retain or discard the latter. Discarding imprecise records can undersample the geographical and environmental distributions of species and lead to mis-estimation of responses to past and future climate change. Our method, for which we provide a software implementation in the enmSdmX package for <b>R</b>, is simple to use and can help leverage the large number of specimen records that are typically deemed "unusable" because of spatial imprecision in their geolocation.