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Using unclassified continuous remote sensing data to improve distribution models of red-listed plant species.

机译:使用未分类的连续遥感数据来改善列入红色名录的植物物种的分布模型。

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Remote sensing (RS) data may play an important role in the development of cost-effective means for modelling, mapping, planning and conserving biodiversity. Specifically, at the landscape scale, spatial models for the occurrences of species of conservation concern may be improved by the inclusion of RS-based predictors, to help managers to better meet different conservation challenges. In this study, we examine whether predicted distributions of 28 red-listed plant species in north-eastern Finland at the resolution of 25 ha are improved when advanced RS-variables are included as unclassified continuous predictor variables, in addition to more commonly used climate and topography variables. Using generalized additive models (GAMs), we studied whether the spatial predictions of the distribution of red-listed plant species in boreal landscapes are improved by incorporating advanced RS (normalized difference vegetation index, normalized difference soil index and Tasseled Cap transformations) information into species-environment models. Models were fitted using three different sets of explanatory variables: (1) climate-topography only; (2) remote sensing only; and (3) combined climate-topography and remote sensing variables, and evaluated by four-fold cross-validation with the area under the curve (AUC) statistics. The inclusion of RS variables improved both the explanatory power (on average 8.1% improvement) and cross-validation performance (2.5%) of the models. Hybrid models produced ecologically more reliable distribution maps than models using only climate-topography variables, especially for mire and shore species. In conclusion, Landsat ETM+ data integrated with climate and topographical information has the potential to improve biodiversity and rarity assessments in northern landscapes, especially in predictive studies covering extensive and remote areas.
机译:遥感(RS)数据可能在开发成本有效的模型,制图,规划和保护生物多样性的手段中发挥重要作用。具体而言,在景观尺度上,可以通过纳入基于RS的预测因子来改善有关保护关注物种发生的空间模型,以帮助管理人员更好地应对不同的保护挑战。在这项研究中,我们研究了将先进的RS变量作为未分类的连续预测变量,以及更常用的气候和气候因素,将芬兰东北部28种列入红色名录的植物物种在25公顷的分辨率下的预测分布是否得到改善。地形变量。使用广义加性模型(GAM),我们研究了通过将高级RS(归一化差异植被指数,归一化差异土壤指数和Tasseled Cap变换)信息纳入物种来改善在北方景观中红色上市植物物种分布的空间预测环境模型。使用三组不同的解释变量对模型进行拟合:(1)仅气候地形; (2)仅遥感; (3)将气候地形和遥感变量结合起来,并通过四重交叉验证和曲线下面积(AUC)统计进行评估。包含RS变量改善了模型的解释力(平均提高8.1%)和交叉验证性能(2.5%)。混合模型产生的生态分布图比仅使用气候地形变量的模型更可靠(尤其对于泥泞和海岸物种而言)。总之,结合了气候和地形信息的Landsat ETM +数据有可能改善北部地区的生物多样性和稀有性评估,尤其是在涉及广泛和偏远地区的预测研究中。

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