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Ensemble modeling to predict habitat suitability for a large-scale disturbance specialist

机译:集合模型预测大型干扰专家的栖息地适宜性

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摘要

To conserve habitat for disturbance specialist species, ecologists must identify where individuals will likely settle in newly disturbed areas. Habitat suitability models can predict which sites at new disturbances will most likely attract specialists. Without validation data from newly disturbed areas, however, the best approach for maximizing predictive accuracy can be unclear (Northwestern U.S.A.). We predicted habitat suitability for nesting Black-backed Woodpeckers (Picoides arcticus; a burned-forest specialist) at 20 recently (≤6 years postwildfire) burned locations in Montana using models calibrated with data from three locations in Washington, Oregon, and Idaho. We developed 8 models using three techniques (weighted logistic regression, Maxent, and Mahalanobis D2 models) and various combinations of four environmental variables describing burn severity, the north–south orientation of topographic slope, and prefire canopy cover. After translating model predictions into binary classifications (0 = low suitability to unsuitable, 1 = high to moderate suitability), we compiled “ensemble predictions,” consisting of the number of models (0–8) predicting any given site as highly suitable. The suitability status for 40% of the area burned by eastside Montana wildfires was consistent across models and therefore robust to uncertainty in the relative accuracy of particular models and in alternative ecological hypotheses they described. Ensemble predictions exhibited two desirable properties: (1) a positive relationship with apparent rates of nest occurrence at calibration locations and (2) declining model agreement outside surveyed environments consistent with our reduced confidence in novel (i.e., “no-analogue”) environments. Areas of disagreement among models suggested where future surveys could help validate and refine models for an improved understanding of Black-backed Woodpecker nesting habitat relationships. Ensemble predictions presented here can help guide managers attempting to balance salvage logging with habitat conservation in burned-forest landscapes where black-backed woodpecker nest location data are not immediately available. Ensemble modeling represents a promising tool for guiding conservation of large-scale disturbance specialists.
机译:为了保护干扰专家物种的栖息地,生态学家必须确定个人可能在新干扰地区定居的地方。生境适应性模型可以预测新扰动下的哪些地点最有可能吸引专家。但是,如果没有来自新受干扰地区的验证数据,则使预测准确性最大化的最佳方法尚不清楚(美国西北部)。我们使用根据华盛顿,俄勒冈和爱达荷州三个地点的数据校准的模型预测了最近蒙大拿州20处(森林火灾后≤6年)被烧黑背啄木鸟(Picoides arcticus;森林砍伐专家)栖息地的适宜性。我们使用三种技术(加权逻辑回归,Maxent和Mahalanobis D 2 模型)以及描述烧伤严重性,地形坡度的南北向和预火顶盖的四个环境变量的各种组合开发了8个模型覆盖。将模型预测结果转换为二元分类(0 =低适应性至不适合,1 =高至中等适应性)后,我们编制了“整体预测”,其中包括预测任何给定地点非常适合的模型数量(0–8)。在各个模型中,蒙大拿州东部野火燃烧的区域的40%的适宜性状态在各个模型中是一致的,因此对于特定模型的相对准确性以及它们描述的替代生态假设的不确定性具有鲁棒性。集合预测显示出两个理想的属性:(1)与标定位置的嵌套出现的明显速率呈正相关;(2)被调查环境外部的模型一致性下降,这与我们对新颖(即“无模拟”)环境的信心降低一致。在模型之间存在分歧的领域表明,未来的调查可以在哪些方面帮助验证和完善模型,以更好地了解黑背啄木鸟筑巢栖息地之间的关系。此处提出的整体预测可以帮助指导管理人员在不立即获得黑背啄木鸟巢位置数据的烧森林景观中尝试平衡打捞伐木与栖息地保护。集合建模是指导大型干扰专家保护工作的有前途的工具。

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