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Modeling species distribution dynamics with SpatioTemoral Exploratory Models: Discovering patterns and processes of broad-scale avian migrations

机译:用空型探索模型建模物种分发动态:发现广泛禽迁移的模式和过程

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The distributions of animal populations are not static. During regular migratory movements species exploit different habitats. This spatiotemporal variation needs to be accounted for when modeling a species' distribution and is essential for developing conservation strategies for widespread species, and especially for migratory species. Attempts to design conservation landscapes across large regions based on models of distributions in a single season or a small region may not fully reflect the limiting factors that are driving population declines. Our goal is to predict and explore patterns of species’ occurrence and local habitat usage across broad landscapes. We use data from eBird (http://www.ebird.org), an online citizen science bird-monitoring project and environmental descriptions from continent-wide covariates linked through observation location and time. These covariates include remotely sensed habitat information from the National Land Cover Database and vegetation phenology from MODIS. We model species occurrence with the SpatioTemporal Exploratory Model (STEM), an ensemble model designed to adapt to non-stationary spatiotemporal processes. This is accomplished by creating a large ensemble of local models, each restricted to a local spatial and temporal region. Within each region a user specified predictive model associates the predictors with the response. Patterns modeled locally “scale up” via ensemble averaging to larger scales. Here we analyze eBird data to study broad-scale movements of bird populations throughout the year. We use STEM built with decision trees to adapt to a wide variety avian migration patterns without requiring a detailed understanding of the underlying dynamic local processes. We demonstrate how eBird data are capable of resolving the changing distributions of birds through their migrations. Then we illustrate how seasonal variation in habitat association can be identified and explored. These tools provide valuable information for generating hypotheses and making inference about the processes driving dynamic species distributional patterns.
机译:动物种群的分布不是静态的。在普通的候徒运动期间,物种利用不同的栖息地。在建模物种分布时需要考虑这种时空变化,对于开发普遍物种的保护策略至关重要,特别适用于迁徙物种。试图根据单个赛季或小区域的分布模型来设计跨大地区的保护景观可能完全反映驾驶人口下降的限制因素。我们的目标是预测和探索各种景观的物种发生和地方栖息地使用模式。我们使用来自eBird(http://www.ebird.org)的数据,这是一个在线公民科学鸟类监测项目和通过观察位置和时间链接的大陆协变者的环境描述。这些协变量包括来自Modis国家土地覆盖数据库和植被候选的远程感知的栖息地信息。我们使用时空探索模型(Stew),设计了一种旨在适应非静止时空流程的集合模型。这是通过创建一个局部模型的大型集合来实现的,每个集合限于局部空间和时间区域。在每个区域内,用户指定的预测模型将预测器与响应相关联。通过整体平均到更大的尺度,本地建模的模式“缩放”。在这里,我们分析了难以研究全年鸟类群体的广泛运动。我们使用Decisiol树构造的Step来适应各种各样的禽类迁移模式,而无需详细了解底层的动态本地进程。我们展示了抗eir数据如何通过迁移解决鸟类的变化。然后我们说明了可以识别和探索栖息地协会的季节性变化。这些工具提供了用于生成假设的有价值的信息,并对驱动动态物种分配模式的过程推断。

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