Department of Biological Sciences, Rutgers University , Newark, NJ , USA.
Nicholas School of Environmental Science, Duke University , Durham, NC , USA.
PeerJ. 2014 Aug 19;2:e504. doi: 10.7717/peerj.504. eCollection 2014.
Setting conservation goals and management objectives relies on understanding animal habitat preferences. Models that predict preferences combine location data from tracked animals with environmental information, usually at a spatial resolution determined by the available data. This resolution may be biologically irrelevant for the species in question. Individuals likely integrate environmental characteristics over varying distances when evaluating their surroundings; we call this the scale of selection. Even a single characteristic might be viewed differently at different scales; for example, a preference for sheltering under trees does not necessarily imply a fondness for continuous forest. Multi-scale preference is likely to be particularly evident for animals that occupy coarsely heterogeneous landscapes like savannahs. We designed a method to identify scales at which species respond to resources and used these scales to build preference models. We represented different scales of selection by locally averaging, or smoothing, the environmental data using kernels of increasing radii. First, we examined each environmental variable separately across a spectrum of selection scales and found peaks of fit. These 'candidate' scales then determined the environmental data layers entering a multivariable conditional logistic model. We used model selection via AIC to determine the important predictors out of this set. We demonstrate this method using savannah elephants (Loxodonta africana) inhabiting two parks in southern Africa. The multi-scale models were more parsimonious than models using environmental data at only the source resolution. Maps describing habitat preferences also improved when multiple scales were included, as elephants were more often in places predicted to have high neighborhood quality. We conclude that elephants select habitat based on environmental qualities at multiple scales. For them, and likely many other species, biologists should include multiple scales in models of habitat selection. Species environmental preferences and their geospatial projections will be more accurately represented, improving management decisions and conservation planning.
设定保护目标和管理目标依赖于对动物栖息地偏好的理解。预测偏好的模型将跟踪动物的位置数据与环境信息相结合,通常使用可用数据确定的空间分辨率。对于所讨论的物种,该分辨率可能与生物学无关。个体在评估周围环境时可能会在不同的距离上整合环境特征;我们称之为选择尺度。即使是单个特征在不同的尺度上也可能有不同的看法;例如,对在树下遮荫的偏好不一定意味着对连续森林的喜爱。对于像热带稀树草原这样占据粗粒异质景观的动物来说,多尺度偏好可能特别明显。我们设计了一种识别物种对资源做出反应的尺度的方法,并使用这些尺度构建偏好模型。我们通过使用半径不断增大的核来局部平均或平滑环境数据,从而表示不同的选择尺度。首先,我们在一系列选择尺度上分别检查每个环境变量,并找到拟合度的峰值。这些“候选”尺度随后确定进入多变量条件逻辑模型的环境数据层。我们通过 AIC 进行模型选择,以确定该集合中重要的预测因子。我们使用栖息在南非两个公园的热带稀树草原大象(Loxodonta africana)来演示这种方法。与仅使用源分辨率的环境数据的模型相比,多尺度模型更简洁。当包含多个尺度时,描述栖息地偏好的地图也得到了改善,因为大象更经常出现在预测具有高邻里质量的地方。我们得出的结论是,大象根据多个尺度的环境质量选择栖息地。对于它们,以及可能的许多其他物种,生物学家应该在栖息地选择模型中包含多个尺度。物种的环境偏好及其地理空间投影将得到更准确的表示,从而改善管理决策和保护规划。