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Toward community predictions: Multi‐scale modelling of mountain breeding birds' habitat suitability, landscape preferences, and environmental drivers

机译:对社区预测:山育鸟类栖息地适用性,景观偏好和环境司机的多规模建模

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Across a large mountain area of the western Swiss Alps, we used occurrence data (presence‐only points) of bird species to find suitable modelling solutions and build reliable distribution maps to deal with biodiversity and conservation necessities of bird species at finer scales. We have performed a multi‐scale method of modelling, which uses distance, climatic, and focal variables at different scales (neighboring window sizes), to estimate the efficient scale of each environmental predictor and enhance our knowledge on how birds interact with their complex environment. To identify the best radius for each focal variable and the most efficient impact scale of each predictor, we have fitted univariate models per species. In the last step, the final set of variables were subsequently employed to build ensemble of small models (ESMs) at a fine spatial resolution of 100?m and generate species distribution maps as tools of conservation. We could build useful habitat suitability models for the three groups of species in the national red list. Our results indicate that, in general, the most important variables were in the group of bioclimatic variables including “Bio11” (Mean Temperature of Coldest Quarter), and “Bio 4” (Temperature Seasonality), then in the focal variables including “Forest”, “Orchard”, and “Agriculture area” as potential foraging, feeding and nesting sites. Our distribution maps are useful for identifying the most threatened species and their habitat and also for improving conservation effort to locate bird hotspots. It is a powerful strategy to improve the ecological understanding of the distribution of bird species in a dynamic heterogeneous environment.
机译:在西瑞士阿尔卑斯州的大型山区,我们使用了鸟类的发生数据(仅限点数),找到合适的建模解决方案,并建立可靠的分销地图,以处理粮食较好的鳞片的生物多样性和保护必需品。我们已经执行了一种模拟的多种建模方法,它使用不同尺度(相邻窗口尺寸)的距离,气候和焦点变量来估计每个环境预测因子的有效规模,并增强我们对鸟类如何与复杂环境进行互动的知识。为了确定每个焦点变量的最佳半径以及每个预测因子的最有效的冲击量表,我们每种物种都拟合了单变量的模型。在最后一步中,随后使用最终变量集以在100μm的精细空间分辨率下构建小型模型(ESMS)的集合,并生成物种分布图作为保护工具。我们可以为全国红色列表中的三组种类构建有用的栖息地适用性模型。我们的结果表明,一般而言,最重要的变量在一群生物恐引变量中,包括“Bio11”(最冷的季度的平均温度)和“生物4”(温度季节性),然后在包括“森林”的焦点变量中,“果园”和“农业区”作为潜在的觅食,喂养和筑巢地点。我们的分销地图对于识别最受威胁的物种及其栖息地有助于改善鸟类热点的养护工作。提高动态异构环境中鸟类分布的生态理解是一种强大的策略。

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