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A multi‐data ensemble approach for predicting woodland type distribution: Oak woodland in Britain

机译:一种用于预测林地型分布的多数据集合方法:英国橡木林地

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摘要

Interactions between soil, topography, and climatic site factors can exacerbate and/or alleviate the vulnerability of oak woodland to climate change. Reducing climate‐related impacts on oak woodland habitats and ecosystems through adaptation management requires knowledge of different site interactions in relation to species tolerance. In Britain, the required thematic detail of woodland type is unavailable from digital maps. A species distribution model (SDM) ensemble, using biomod2 algorithms, was used to predict oak woodland. The model was cross‐validated (50%:50% ‐ training:testing) 30 times, with each of 15 random sets of absence data, matching the size of presence data, to maximize environmental variation while maintaining data prevalence. Four biomod2 algorithms provided stable and consistent TSS‐weighted ensemble mean results predicting oak woodland as a probability raster. Biophysical data from the Ecological Site Classification (forest site classification) for Britain were used to characterize oak woodland sites. Several forest datasets were used, each with merits and weaknesses: public forest estate subcompartment database map (PFE map) for oak‐stand locations as a training dataset; the national forest inventory (NFI) “published regional reports” of oak woodland area; and an “NFI map” of indicative forest type broad habitat. Broadleaved woodland polygons of the NFI map were filled with the biomod2 oak woodland probability raster. Ranked pixels were selected up to the published NFI regional area estimate of oak woodland and matched to the elevation distribution of oak woodland stands, from “NFI survey” sample squares. Validation using separate oak woodland data showed that the elevation filter significantly improved the accuracy of predictions from 55% (p = .53) to 83% coincidence success rate (p < .0001). The biomod2 ensemble, with masking and filtering, produced a predicted oak woodland map, from which site characteristics will be used in climate change interaction studies, supporting adaptation management recommendations for forest policy and practice.
机译:土壤,地形和气候现场因素之间的相互作用会加剧和/或缓解橡木林地对气候变化的脆弱性。通过适应管理减少对橡木林地栖息地和生态系统的气候相关影响需要了解不同地点的相互作用与物种耐受性。在英国,林地类型所需的专题细节不可用数字地图。使用BioMod2算法的物种分布模型(SDM)集合用于预测橡木林地。该模型是交叉验证(50%:50% - 训练:测试)30次,每15个随机集不存在数据时,存在匹配的数据的大小,以最大化环境变化,同时保持数据流行。四种BioMod2算法提供稳定且一致的TSS加权集合平均结果预测橡树林地作为概率光栅。来自英国生态站点分类(森林网站分类)的生物物理数据用于表征橡木林地网站。使用了几个森林数据集,每个数据集都有优点和缺点:用于橡树站位置的公共林业子系统数据库地图(PFE地图)作为培训数据集;国家森林库存(NFI)“公布了橡木林地地区的”区域报告“;和指示性森林类型广泛栖息地的“NFI地图”。 NFI地图的阔叶林地多边形填充了BioMod2橡树林地概率光栅。被排名的像素被选为橡树林地的公布的NFI区域区域估计,并与橡木林地的海拔分布相匹配,来自“NFI调查”样本方块。使用单独的橡木林地数据进行验证表明,海拔滤波器从55%(P = 0.53)到83%的巧合成功率(P <.0001)显着提高了预测的准确性。 BioMod2集合,具有掩蔽和过滤,产生了预测的橡树林地地图,其现场特征将在气候变化相互作用研究中使用,支持森林政策和实践的适应管理建议。

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