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Estimating uncertainty in daily weather interpolations: a Bayesian framework for developing climate surfaces

机译:估计日常天气插值中的不确定性:发展气候面的贝叶斯框架

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摘要

Conservation of biodiversity demands comprehension of evolutionary and ecological patterns and processes that occur over vast spatial and temporal scales. A central goal of ecology is to understand the climatic factors that control ecological processes and this has become even more important in the face of climate change. Especially at global scales, there can be enormous uncertainty in underlying environmental data used to explain ecological processes, but that uncertainty is rarely quantified or incorporated into ecological models. In this study, a climate-aided Bayesian kriging approach is used to interpolate 20 years of daily meteorological observations (maximum and minimum temperatures and precipitation) to a 1 arc-min grid for the Cape Floristic Region of South Africa. Independent validation data revealed overall predictive performance of the interpolation to have R~2 values of 0.90, 0.85, and 0.59 for maximum temperature, minimum temperature, and precipitation, respectively. A suite of ecologically relevant climate metrics that include the uncertainty introduced by the interpolation were then generated. By providing the high-resolution climate metric surfaces and uncertainties, this work facilitates richer and more robust predictive modelling in ecology and biogeography. These data can be incorporated into ecological models to propagate the uncertainties through to the final predictions.
机译:保护生物多样性需要了解在广阔的时空尺度上发生的进化和生态模式及过程。生态学的中心目标是了解控制生态过程的气候因素,面对气候变化,这一点变得更加重要。特别是在全球范围内,用于解释生态过程的基础环境数据可能存在巨大的不确定性,但这种不确定性很少被量化或纳入生态模型中。在这项研究中,使用气候辅助贝叶斯克里金法将南非20世纪每天的气象观测值(最高和最低温度和降水)内插到南非开普植物区的1弧分网格中。独立的验证数据表明,插值的总体预测性能对于最高温度,最低温度和降水分别具有0.90、0.85和0.59的R〜2值。然后生成了一套与生态相关的气候指标,其中包括由插值法引入的不确定性。通过提供高分辨率的气候度量表面和不确定性,这项工作有助于生态和生物地理学领域更丰富,更强大的预测建模。这些数据可以纳入生态模型,以将不确定性传播到最终预测。

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