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      Mapping National Plant Biodiversity Patterns in South Korea with the MARS Species Distribution Model

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      PLoS ONE
      Public Library of Science

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          Abstract

          Accurate information on the distribution of existing species is crucial to assess regional biodiversity. However, data inventories are insufficient in many areas. We examine the ability of Multivariate Adaptive Regression Splines (MARS) multi-response species distribution model to overcome species’ data limitations and portray plant species distribution patterns for 199 South Korean plant species. The study models species with two or more observations, examines their contribution to national patterns of species richness, provides a sensitivity analysis of different range threshold cutoff approaches for modeling species’ ranges, and presents considerations for species modeling at fine spatial resolution. We ran MARS models for each species and tested four threshold methods to transform occurrence probabilities into presence or absence range maps. Modeled occurrence probabilities were extracted at each species’ presence points, and the mean, median, and one standard deviation (SD) calculated to define data-driven thresholds. A maximum sum of sensitivity and specificity threshold was also calculated, and the range maps from the four cutoffs were tested using independent plant survey data. The single SD values were the best threshold tested for minimizing omission errors and limiting species ranges to areas where the associated occurrence data were correctly classed. Eight individual species range maps for rare plant species were identified that are potentially affected by resampling predictor variables to fine spatial scales. We portray spatial patterns of high species richness by assessing the combined range maps from three classes of species: all species, endangered and endemic species, and range-size rarity of all species, which could be used in conservation planning for South Korea. The MARS model is promising for addressing the common problem of few species occurrence records. However, projected species ranges are highly dependent on the threshold and scale criteria, which should be assessed on a per-project basis.

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          Scale effects in species distribution models: implications for conservation planning under climate change.

          Predictions of future species' ranges under climate change are needed for conservation planning, for which species distribution models (SDMs) are widely used. However, global climate model-based (GCM) output grids can bias the area identified as suitable when these are used as SDM predictor variables, because GCM outputs, typically at least 50x50 km, are biologically coarse. We tested the assumption that species ranges can be equally well portrayed in SDMs operating on base data of different grid sizes by comparing SDM performance statistics and area selected by four SDMs run at seven grid sizes, for nine species of contrasting range size. Area selected was disproportionately larger for SDMs run on larger grid sizes, indicating a cut-off point above which model results were less reliable. Up to 2.89 times more species range area was selected by SDMs operating on grids above 50x50 km, compared to SDMs operating at 1 km2. Spatial congruence between areas selected as range also diverged as grid size increased, particularly for species with ranges between 20000 and 90000 km2. These results indicate the need for caution when using such data to plan future protected areas, because an overly large predicted range could lead to inappropriate reserve location selection.
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            Topographic and Bioclimatic Determinants of the Occurrence of Forest and Grassland in Tropical Montane Forest-Grassland Mosaics of the Western Ghats, India

            The objective of this analysis was to identify topographic and bioclimatic factors that predict occurrence of forest and grassland patches within tropical montane forest-grassland mosaics. We further investigated whether interactions between topography and bioclimate are important in determining vegetation pattern, and assessed the role of spatial scale in determining the relative importance of specific topographic features. Finally, we assessed the role of elevation in determining the relative importance of diverse explanatory factors. The study area consists of the central and southern regions of the Western Ghats of Southern India, a global biodiversity hotspot. Random forests were used to assess prediction accuracy and predictor importance. Conditional inference classification trees were used to interpret predictor effects and examine potential interactions between predictors. GLMs were used to confirm predictor importance and assess the strength of interaction terms. Overall, topographic and bioclimatic predictors classified vegetation pattern with approximately 70% accuracy. Prediction accuracy was higher for grassland than forest, and for mosaics at higher elevations. Elevation was the most important predictor, with mosaics above 2000m dominated largely by grassland. Relative topographic position measured at a local scale (within a 300m neighbourhood) was another important predictor of vegetation pattern. In high elevation mosaics, northness and concave land surface curvature were important predictors of forest occurrence. Important bioclimatic predictors were: dry quarter precipitation, annual temperature range and the interaction between the two. The results indicate complex interactions between topography and bioclimate and among topographic variables. Elevation and topography have a strong influence on vegetation pattern in these mosaics. There were marked regional differences in the roles of various topographic and bioclimatic predictors across the range of study mosaics, indicating that the same pattern of grass and forest seems to be generated by different sets of mechanisms across the region, depending on spatial scale and elevation.
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              Author and article information

              Contributors
              Role: Editor
              Journal
              PLoS One
              PLoS ONE
              plos
              plosone
              PLoS ONE
              Public Library of Science (San Francisco, CA USA )
              1932-6203
              1 March 2016
              2016
              : 11
              : 3
              : e0149511
              Affiliations
              [1 ]Geography Graduate Group, University of California Davis, Davis, California, United States of America
              [2 ]Department of Environmental Science and Policy, University of California Davis, Davis, California, United States of America
              [3 ]Division of Ecosystem Services & Research Planning, National Institute of Ecology, Seocheon-gun, Choongnam, South Korea
              Fondazione Edmund Mach, Research and Innovation Centre, ITALY
              Author notes

              Competing Interests: The authors have declared that no competing interests exist.

              Conceived and designed the experiments: HC JT. Performed the experiments: HC. Analyzed the data: HC JT CS. Contributed reagents/materials/analysis tools: HC JT CS. Wrote the paper: HC JT.

              [¤]

              Current address: Department of Environmental Science and Policy, University of California Davis, Davis, California, United States of America.

              Article
              PONE-D-15-35961
              10.1371/journal.pone.0149511
              4773094
              26930289
              744d679e-342f-44f9-bdff-8b5fc2ed2c92
              © 2016 Choe et al

              This is an open access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.

              History
              : 15 August 2015
              : 2 February 2016
              Page count
              Figures: 3, Tables: 2, Pages: 15
              Funding
              HC appreciates the UC Davis for the Provost's Dissertation Year Fellowship, and South Korean government for the government scholarship. This work was supported by the Korea Environmental Industry and Technology Institute (KEITI;  http://www.keiti.re.kr/en/index.do) grant funded by the Korean government (ME) (No. 416-111-014) and (No. 2014-001-310010). The funders had no role in study design, data collection and analysis, decision to publish, or preparation of the manuscript.
              Categories
              Research Article
              Biology and Life Sciences
              Conservation Biology
              Endangered Species
              Ecology and Environmental Sciences
              Conservation Science
              Conservation Biology
              Endangered Species
              Biology and Life Sciences
              Ecology
              Ecological Metrics
              Species Diversity
              Ecology and Environmental Sciences
              Ecology
              Ecological Metrics
              Species Diversity
              Biology and Life Sciences
              Ecology
              Biodiversity
              Ecology and Environmental Sciences
              Ecology
              Biodiversity
              People and places
              Geographical locations
              Asia
              South Korea
              Ecology and Environmental Sciences
              Conservation Science
              Biology and Life Sciences
              Organisms
              Plants
              Earth Sciences
              Geomorphology
              Topography
              Landforms
              Mountains
              Ecology and Environmental Sciences
              Terrestrial Environments
              Mountains
              Biology and Life Sciences
              Organisms
              Plants
              Vascular Plants
              Custom metadata
              The Second National Ecosystem Survey data are available from digital library ( http://library.me.go.kr/search/Search.Result.ax?sid=21&s=CID&st=DESC). The authors provide the dataset as Supporting Information.

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              Uncategorized

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