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首页> 外文期刊>Ecological Modelling >Integration of distance, direction and habitat into a predictive migratory movement model for blue-winged teal (Anas discors)
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Integration of distance, direction and habitat into a predictive migratory movement model for blue-winged teal (Anas discors)

机译:将距离,方向和栖息地整合到蓝翅蓝绿色预测性迁徙运动模型中(Anas discors)

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摘要

Historically, the migration of birds has been poorly understood in comparison to other life stages during the annual cycle. The goal of our research is to present a novel approach to predict the migratory movement of birds. Using a blue-winged teal case study, our process incorporates not only constraints on habitat (temperature, precipitation, elevation, and depth to water table), but also approximates the likely bearing and distance traveled from a starting location. The method allows for movement predictions to be made from unsampled areas across large spatial scales. We used USGS' Bird Banding Laboratory database as the source of banding and recovery locations. We used recovery locations from banding sites with multiple within-30-day recoveries were used to build core maximum entropy models. Because the core models encompass information regarding likely habitat, distance, and bearing, we used core models to project (or forecast) probability of movement from starting locations that lacked sufficient data for independent predictions. The final model for an unsampled area was based on an inverse-distance weighted averaged prediction from the three nearest core models. To illustrate this approach, three unsampled locations were selected to probabilistically predict where migratory blue-wing teals would stopover. These locations, despite having little or none data, are assumed to have populations. For the blue-winged teal case study, 104 suitable locations were identified to generate core models. These locations ranged from 20 to 228 within-30-day recoveries, and all core models had AUC scores greater than 0.80. We can infer based on model performance assessment, that our novel approach to predicting migratory movement is well-grounded and provides a reasonable approximation of migratory movement.
机译:从历史上看,与年度周期中的其他生命阶段相比,人们对鸟类的迁移知之甚少。我们研究的目标是提出一种新颖的方法来预测鸟类的迁徙。使用蓝翼蓝绿色案例研究,我们的过程不仅考虑到栖息地的限制(温度,降水,海拔和地下水位深度),而且还估算了从起始位置可能经过的方位角和距离。该方法允许从跨大空间尺度的未采样区域进行运动预测。我们使用了USGS的鸟类绑带实验室数据库作为绑带和恢复地点的来源。我们使用了带状站点的恢复位置,并在30天内进行了多次恢复,以建立核心最大熵模型。由于核心模型包含有关可能的栖息地,距离和方位的信息,因此我们使用核心模型来预测(或预测)从缺少足够独立数据进行预测的起始位置移动的概率。未采样区域的最终模型基于来自三个最接近核心模型的反距离加权平均预测。为了说明这种方法,选择了三个未采样的位置来概率性地预测迁徙蓝翼蓝绿色将在何处停留。尽管数据很少或没有数据,但这些位置被假定为具有种群。对于蓝翼蓝绿色案例研究,确定了104个合适的位置以生成核心模型。这些位置在30天内的恢复范围从20到228不等,并且所有核心模型的AUC得分均大于0.80。基于模型性能评估,我们可以推断出,我们用于预测迁徙运动的新颖方法是有充分根据的,并且可以合理地近似出迁徙运动。

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