Sohl Terry L
Earth Resources Observation and Science (EROS) Center, U.S. Geological Survey, Sioux Falls, South Dakota, United States of America.
PLoS One. 2014 Nov 5;9(11):e112251. doi: 10.1371/journal.pone.0112251. eCollection 2014.
Species distribution models often use climate data to assess contemporary and/or future ranges for animal or plant species. Land use and land cover (LULC) data are important predictor variables for determining species range, yet are rarely used when modeling future distributions. In this study, maximum entropy modeling was used to construct species distribution maps for 50 North American bird species to determine relative contributions of climate and LULC for contemporary (2001) and future (2075) time periods. Species presence data were used as a dependent variable, while climate, LULC, and topographic data were used as predictor variables. Results varied by species, but in general, measures of model fit for 2001 indicated significantly poorer fit when either climate or LULC data were excluded from model simulations. Climate covariates provided a higher contribution to 2001 model results than did LULC variables, although both categories of variables strongly contributed. The area deemed to be "suitable" for 2001 species presence was strongly affected by the choice of model covariates, with significantly larger ranges predicted when LULC was excluded as a covariate. Changes in species ranges for 2075 indicate much larger overall range changes due to projected climate change than due to projected LULC change. However, the choice of study area impacted results for both current and projected model applications, with truncation of actual species ranges resulting in lower model fit scores and increased difficulty in interpreting covariate impacts on species range. Results indicate species-specific response to climate and LULC variables; however, both climate and LULC variables clearly are important for modeling both contemporary and potential future species ranges.
物种分布模型通常利用气候数据来评估动植物物种的当代和/或未来分布范围。土地利用和土地覆盖(LULC)数据是确定物种分布范围的重要预测变量,但在模拟未来分布时很少被使用。在本研究中,利用最大熵模型构建了50种北美鸟类的物种分布图,以确定气候和LULC对当代(2001年)和未来(2075年)时期的相对贡献。物种出现数据用作因变量,而气候、LULC和地形数据用作预测变量。结果因物种而异,但总体而言,2001年的模型拟合度测量表明,当模型模拟中排除气候或LULC数据时,拟合度明显较差。气候协变量对2001年模型结果的贡献高于LULC变量,尽管这两类变量都有很大贡献。被认为适合2001年物种出现的区域受到模型协变量选择的强烈影响,当排除LULC作为协变量时,预测的范围明显更大。2075年物种分布范围的变化表明,由于预计的气候变化导致的总体分布范围变化比由于预计的LULC变化导致的变化要大得多。然而,研究区域的选择影响了当前和预测模型应用的结果,实际物种分布范围的截断导致模型拟合分数较低,并且解释协变量对物种分布范围的影响变得更加困难。结果表明物种对气候和LULC变量有特定的响应;然而,气候和LULC变量显然对于模拟当代和潜在的未来物种分布范围都很重要。