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Harbour porpoise habitat preferences: robust spatio-temporal inferences from opportunistic data

机译:港口海豚栖息地的喜好:机会数据的可靠时空推断

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摘要

Statistical habitat modelling is often flagged as a cost-effective decision tool for species management. However, data that can produce predictions with the desired precision are difficult to collect, especially for species with spatially extensive and dynamic distributions. Data from platforms of opportunity could be used to complement or help design dedicated surveys, but robust inference from such data is challenging. Furthermore, regression models using static covariates may not be sufficient for animals whose habitat preferences change dynamically with season, environmental conditions or foraging strategy. More flexible models introduce difficulties in selecting parsimonious models. We implemented a robust model-averaging framework to dynamically predict harbour porpoise Phocoena phocoena occurrence in a strongly tidal and topographically complex site in southwest Wales using data from a temporally intensive platform of opportunity. Spatial and temporal environmental variables were allowed to interact in a generalized additive model (GAM). We used information criteria to examine an extensive set of 3003 models and average predictions from the best 33. In the best model, 3 main effects and 2 tensor-product interactions explained 46 % of the deviance. Model-averaged predictions indicated that harbour porpoises avoided or selected steeper slopes depending on the tidal flow conditions; when the tide started to ebb, occurrence was predicted to increase 3-fold at steeper slopes.
机译:统计栖息地建模通常被标记为物种管理的一种具有成本效益的决策工具。但是,很难产生能够以期望的精度进行预测的数据,特别是对于具有空间广泛且动态分布的物种而言。来自机会平台的数据可用于补充或帮助设计专门的调查,但是从此类数据中得出可靠的推论具有挑战性。此外,使用静态协变量的回归模型可能不足以适应生境偏好随季节,环境条件或觅食策略而动态变化的动物。更加灵活的模型在选择简约模型时会遇到困难。我们实施了一个稳健的模型平均框架,以动态地使用机会密集型时空平台中的数据,动态预测威尔士西南部强烈潮汐和地形复杂的地点海豚海豚的发生。允许时空环境变量在广义加性模型(GAM)中进行交互。我们使用信息标准检查了3003个模型的广泛集合,并根据最佳33个模型进行了平均预测。在最佳模型中,3个主效应和2个张量-乘积相互作用解释了46%的偏差。模型平均预测表明,根据潮汐流动条件,港口海豚避免或选择了更陡峭的坡度。当潮水开始退潮时,预计在较陡峭的斜坡上发生率将增加3倍。

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