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首页> 外文期刊>The Journal of Applied Ecology >Remote sensing-based predictors improve distribution models of rare, early successional and broadleaf tree species in Utah
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Remote sensing-based predictors improve distribution models of rare, early successional and broadleaf tree species in Utah

机译:远程sensing-based预测提高罕见的分布模型,早期的连续性在犹他州和阔叶林物种

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1. Compared to bioclimatic variables, remote sensing predictors are rarely used for predictive species modelling. When used, the predictors represent typically habitat classifications or filters rather than gradual spectral, surface or biophysical properties. Consequently, the full potential of remotely sensed predictors for modelling the spatial distribution of species remains unexplored. Here we analysed the partial contributions of remotely sensed and climatic predictor sets to explain and predict the distribution of 19 tree species in Utah. We also tested how these partial contributions were related to characteristics such as successional types or species traits. 2. We developed two spatial predictor sets of remotely sensed and topo-climatic variables to explain the distribution of tree species. We used variation partitioning techniques applied to generalized linear models to explore the combined and partial predictive powers of the two predictor sets. Non-parametric tests were used to explore the relationships between the partial model contributions of both predictor sets and species characteristics. 3. More than 60% of the variation explained by the models represented contributions by one of the two partial predictor sets alone, with topo-climatic variables outperforming the remotely sensed predictors. However, the partial models derived from only remotely sensed predictors still provided high model accuracies, indicating a significant correlation between climate and remote sensing variables. The overall accuracy of the models was high, but small sample sizes had a strong effect on cross-validated accuracies for rare species. 4. Models of early successional and broadleaf species benefited significantly more from adding remotely sensed predictors than did late seral and needleleaf species. The core-satellite species types differed significantly with respect to overall model accuracies. Models of satellite and urban species, both with low prevalence, benefited more from use of remotely sensed predictors than did the more frequent core species. 5. Synthesis and applications. If carefully prepared, remotely sensed variables are useful additional predictors for the spatial distribution of trees. Major improvements resulted for deciduous, early successional, satellite and rare species. The ability to improve model accuracy for species having markedly different life history strategies is a crucial step for assessing effects of global change.
机译:1. 遥感预测很少用于预测物种造型。代表典型的分类或栖息地过滤器,而不是渐进的光谱,表面或生物物理属性。潜在的遥感预测造型的空间分布的物种仍然是未知的。遥感和气候的贡献预测集来解释和预测犹他州的19个树种的分布。这些部分的贡献是如何进行测试与连续性等特点类型或品种特征。遥感和空间预测集topo-climatic变量来解释树种的分布。分区技术应用到广义线性模型来探索和部分相结合两个预测集的预测能力。非参数测试被用来探索局部模型之间的关系贡献的预测集和物种特征。变异的解释模型由一个两部分的预测贡献集,仅与topo-climatic变量优于遥感预测。然而,部分模型来源于遥感预测仍然提供高模型精度,表明一个重要气候和遥感之间的相关性变量。高,但小样本大小有很强的效果在旨在为稀有物种精度。4. 从添加物种中受益更多遥感预测比晚演替系列和needleleaf物种。物种类型显著不同的尊重整体模型精度。和城市的物种,都普遍较低,更多的受益于使用遥感比更频繁的核心预测物种。精心准备,遥感变量有用的额外空间的预测因子树木的分布。为落叶了,早期的连续性,卫星和稀有物种。提高模型精度的物种是一个明显不同的生活史策略评估全球的关键一步改变。

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