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Abundance distributions for tree species in Great Britain: A two-stage approach to modeling abundance using species distribution modeling and random forest

机译:英国树木物种的丰度分布:使用物种分布建模和随机森林的两阶段建模丰度的方法

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Abstract High-quality abundance data are expensive and time-consuming to collect and often highly limited in availability. Nonetheless, accurate, high-resolution abundance distributions are essential for many ecological applications ranging from species conservation to epidemiology. Producing models that can predict abundance well, with good resolution over large areas, has therefore been an important aim in ecology, but poses considerable challenges. We present a two-stage approach to modeling abundance, combining two established techniques. First, we produce ensemble species distribution models (SDMs) of trees in Great Britain at a fine resolution, using much more common presence?¢????absence data and key environmental variables. We then use random forest regression to predict abundance by linking the results of the SDMs to a much smaller amount of abundance data. We show that this method performs well in predicting the abundance of 20 of 25 tested British tree species, a group that is generally considered challenging for modeling distributions due to the strong influence of human activities. Maps of predicted tree abundance for the whole of Great Britain are provided at 1 km 2 resolution. Abundance maps have a far wider variety of applications than presence-only maps, and these maps should allow improvements to aspects of woodland management and conservation including analysis of habitats and ecosystem functioning, epidemiology, and disease management, providing a useful contribution to the protection of British trees. We also provide complete R scripts to facilitate application of the approach to other scenarios.
机译:摘要高质量的丰度数据收集起来既昂贵又费时,并且可用性常常受到很大限制。但是,准确,高分辨率的丰度分布对于从物种保护到流行病学的许多生态应用都是必不可少的。因此,能够很好地预测丰度并在大面积上具有良好分辨率的生产模型已成为生态学的重要目标,但带来了巨大挑战。我们结合两种已建立的技术,提出了一种对丰度进行建模的两阶段方法。首先,我们使用更常见的缺勤数据和关键环境变量,以高分辨率创建英国树木的整体物种分布模型(SDM)。然后,我们通过将SDM的结果链接到数量少得多的丰度数据,使用随机森林回归来预测丰度。我们表明,该方法在预测25种经过测试的英国树种中的20种的丰度方面表现良好,由于人类活动的强烈影响,通常认为该树种对于建模分布具有挑战性。以1 km 2的分辨率提供了整个英国的预计树木丰满度地图。丰度图的应用范围比仅存在图要广泛得多,这些图应允许对林地管理和保护方面进行改进,包括对栖息地和生态系统功能的分析,流行病学和疾病管理,为保护野生动植物提供有益的贡献。英国树木。我们还提供完整的R脚本,以方便将该方法应用于其他场景。

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