2009
DOI: 10.1111/j.1472-4642.2009.00567.x
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Using species distribution models to predict new occurrences for rare plants

Abstract: Aim  To evaluate a suite of species distribution models for their utility as predictors of suitable habitat and as tools for new population discovery of six rare plant species that have both narrow geographical ranges and specialized habitat requirements.Location  The Rattlesnake Creek Terrane (RCT) of the Shasta‐Trinity National Forest in the northern California Coast Range of the United States.Methods  We used occurrence records from 25 years of US Forest Service botanical surveys, environmental and remotely… Show more

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Cited by 384 publications
(258 citation statements)
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“…This can be particularly problematic when studying invasive species [163]. Despite the limitations, SDM approaches have been used for species delimitation [164], to study the past distributions of species [165], to identify potential new areas of occurrence [166], and to project environmental niches into future conditions [167]. Whilst SDMs can predict areas where environmental conditions are broadly suitable there is now broad recognition that their application is limited, especially for making projections under rapidly changing conditions, by the lack of incorporation of ecological processes including intraspecific competition, dispersal, and interactions with other species [56,[168][169][170].…”
Section: Pattern-based Modelsmentioning
confidence: 99%
“…This can be particularly problematic when studying invasive species [163]. Despite the limitations, SDM approaches have been used for species delimitation [164], to study the past distributions of species [165], to identify potential new areas of occurrence [166], and to project environmental niches into future conditions [167]. Whilst SDMs can predict areas where environmental conditions are broadly suitable there is now broad recognition that their application is limited, especially for making projections under rapidly changing conditions, by the lack of incorporation of ecological processes including intraspecific competition, dispersal, and interactions with other species [56,[168][169][170].…”
Section: Pattern-based Modelsmentioning
confidence: 99%
“…The outputs of these models are maps of occurrence probabilities across an area of interest. Applications of model output include targeting field surveys to detect unknown populations Williams et al 2009) and using model outputs as a foundation for conservation planning (van Manen et al 2005;Murray-Smith et al 2009). …”
Section: Introductionmentioning
confidence: 99%
“…Beger & Possingham 2008, Williams et al 2009). The ability of each exposure index to explain the presence or absence of 10 common algal genera was tested using generalised linear models (GLMs), specifically a binomial GLM with a logit link function.…”
Section: Methodsmentioning
confidence: 99%