Ab'/> Mapping critical areas for migratory songbirds using a fusion of remote sensing and distributional modeling techniques
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Mapping critical areas for migratory songbirds using a fusion of remote sensing and distributional modeling techniques

机译:使用遥感和分布建模技术的融合来映射迁移鸣禽的关键区域

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AbstractOf the 338 species identified as Nearctic-Neotropical migrants occurring in North America, 98.5% have been recorded in Texas. The seasonal migration of these birds is a well-studied natural phenomenon – individuals weighing <15g will cross in the Gulf of Mexico approximately 965km non-stop, completing a total distance of 1900–3200km over the course of 26–80h. The physiologically demanding nature of this feat makes the Texas coastline crucial to the success of these species. We used a fusion of multi-spectral remote sensing data and distributional modeling techniques to generate and evaluate predictive maps identifying critical areas for migratory passerines on the Texas coast. Imagery acquired from Landsat 8 OLI, maps provided by United States Geological Survey and the Texas Department of Transportation, and migratory bird occurrence records from the eBird citizen-contributed database were used to build predictive distribution models using three algorithms. Using the AUC to compare model performance, the Random Forest produced the most accurate distribution model, followed by MaxEnt, and Support Vector Machine (0.98, 0.81, and 0.79, respectively). We interpreted, from Boosted Regression Tree analysis, that elevation is the single most influential factor in determining migrant occupancy, with vegetative biomass the least influential predictor. Our approach here allows conservation biologists a more sophisticated approach to identifying critical areas for migratory passerines across large spatial extents in a short amount of time.Highlights?We used a fusion of techniques to identify critical areas for migratory passerines.?Machine-learning models were applied to migratory songbird distribution on the Texas coast.?All models suggest elevation is the most influential factor affecting distribution.?We incorporated large-scale remote sensing data into species occurrence predictions?Results incite new investigation into environmental requirements of trans-gulf migrants.]]>
机译:<![cdata [ 抽象 德克萨斯州的第98.5%已识别的338种物种中识别的338种。这些鸟类的季节性迁移是一种学习的自然现象 - 体重<15g将在墨西哥湾交叉约965km,在26-80h的过程中完成1900-3200km的总距离。这种壮举的生理苛刻的性质使得德克萨斯海岸线对这些物种的成功至关重要。我们使用了多光谱遥感数据和分布建模技术的融合来生成和评估识别德克萨斯州海岸上的迁徙旁角的关键区域的预测地图。从Landsat 8 Oli获得的图像,由美国地质调查和德克萨斯州交通部提供的地图,以及来自欧伯公民贡献数据库的迁移鸟类发生记录,用于使用三种算法构建预测分配模型。使用AUC进行比较模型性能,随机林产生了最准确的分布模型,其次是MaxEnt,以及支持向量机(分别为0.98,0.81和0.79)。从提升回归树分析中,我们解释了,即升高是确定移民占用率的最具影响力的因素,具有最低影响的预测因素。我们在这里的方法允许保护生物学家采用更复杂的方法来识别越来越多的空间范围内的关键区域。 亮点 我们使用了融合的技术来识别迁移普通的关键区域。 机器学习模型应用于迁移的Songbird分布在德克萨斯州海岸。 所有型号建议高程是影响分布的最有影响力的因素。 我们将大规模的遥感数据纳入物种发生预测 结果煽动新的调查对环境要求的新调查Trans-Gulf移民。 ]]>

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