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Potential and limitations of multi-temporal earth observation data to improve model results of tree species distribution in Mexico

机译:多时间地球观测数据的潜力和限制改善墨西哥树种分布模型结果

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The study explored the potential of multi-temporal remote sensing data for distribution modeling of selected tree species belonging to the genera Pinus spp. (pine) and Quercus spp. (white oak) in Mexico. Several environmental predictor data sets at 1 km2 spatial resolution were used in combination with the Maxent algorithm (Phillips et al., 2004), namely (1) phenological metrics derived from the Terra-MODIS 16-day vegetation indices product MOD13A2 averaged over the seven years of the study period from 2001 to 2007, (2) topographic data (elevation, slope, and aspect) of the SRTM mission, and (3) a series of bioclimatic variables (WorldClim, Hijmans et al., 2005) derived from monthly temperature and rainfall values. Different model scenarios were compared and showed that remote sensing data contributed significantly to discover habitat characteristics even within similar climatic conditions. Moreover, a sharper delineation of the predicted areas and better exclusion of regions that had suffered land cover change was possible. The improved distribution maps can contribute to long-term and sustainable conservation planning and management of biodiversity hotspots.
机译:该研究探索了属于Genera Pinus SPP的所选树种分布建模的多时间遥感数据的潜力。 (杉木)和栎属SPP。 (白色橡木)在墨西哥。几个环境预测数据集以1 km2空间分辨率与MaxEnt算法(Phillips等,2004)组合使用,即(1)衍生自Terra-Modis 16日植被指数的鉴别素质标准产品Mod13A2在七个方面平均从2001年到2007年的研究期间,(2)SRTM任务的地形数据(升高,坡度和方面),(3)一系列生物恐星变量(WorldClim,Hijmans等,2005)来自每月温度和降雨量。比较了不同的模型情景,并表明遥感数据甚至在类似的气候条件下发现栖息地特征。此外,对预测领域的更尖锐的描绘和更好地排除遭受覆盖覆盖变化的地区。改进的分销图可以有助于长期和可持续的保护计划和生物多样性热点管理。

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