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首页> 外文期刊>Global change biology >Climate change at the landscape scale: predicting fine-grained spatial heterogeneity in warming and potential refugia for vegetation
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Climate change at the landscape scale: predicting fine-grained spatial heterogeneity in warming and potential refugia for vegetation

机译:景观尺度上的气候变化:预测变暖中细粒度的空间异质性和植被的潜在避难所

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Current predictions of how species will respond to climate change are based on coarse-grained climate surfaces or idealized scenarios of uniform warming. These predictions may erroneously estimate the risk of extinction because they neglect to consider spatially heterogenous warming at the landscape scale or identify refugia where species can persist despite unfavourable regional climate. To address this issue, we investigated the heterogeneity in warming that has occurred in a 10 km x 10 km area from 1972 to 2007. We developed estimates by combining long-term daily observations from a limited number of weather stations with a more spatially comprehensive dataset (40 sites) obtained during 2005-2006. We found that the spatial distribution of warming was greater inland, at lower elevations, away from streams, and at sites exposed to the northwest (NW). These differences corresponded with changes in weather patterns, such as an increasing frequency of hot, dry NW winds. As plant species were biased in the topographic and geographic locations they occupied, these differences meant that some species experienced more warming than others, and are at greater risk from climate change. This species bias could not be detected at coarser scales. The uneven seasonal nature of warming (e.g. more warming in winter, minimums increased more than maximums) means that climate change predictions will vary according to which predictors are selected in species distribution models. Models based on a limited set of predictors will produce erroneous predictions when the correct limiting factor is not selected, and this is difficult to avoid when temperature predictors are correlated because they are produced using elevation-sensitive interpolations. The results reinforce the importance of downscaling coarse-grained (~50 km) temperature surfaces, and suggest that the accuracy of this process could be improved by considering regional weather patterns (wind speed, direction, humidity) and topographic exposure to key wind directions.
机译:当前对物种将如何应对气候变化的预测是基于粗糙的气候表面或均匀变暖的理想情况。这些预测可能会错误地估计灭绝的风险,因为它们忽略了在景观尺度上考虑空间异质性变暖,或忽略了尽管区域气候不利而物种仍可生存的避难所。为了解决这个问题,我们调查了1972年至2007年10 km x 10 km地区变暖的非均质性。我们结合了有限数量气象站的长期每日观测数据和空间综合数据集,得出了估算值(40个站点​​)在2005-2006年期间获得。我们发现,变暖的空间分布在更大的内陆地区,更低的海拔,远离溪流以及暴露于西北(NW)的地点。这些差异与天气模式的变化相对应,例如炎热干燥的西北风的频率增加。由于植物物种在它们所占据的地形和地理位置上存在偏见,这些差异意味着某些物种比其他物种经历了更多的变暖,并且面临着气候变化带来的更大风险。在较粗的规模上无法检测到这种物种偏差。变暖的季节性性质不均匀(例如,冬天变暖,最小值增加超过最大值),这意味着气候变化预测将根据在物种分布模型中选择的预测因子而变化。当未选择正确的限制因子时,基于有限的一组预测器的模型将产生错误的预测,并且当温度预测器相关时,这是很难避免的,因为它们是使用高程敏感插值生成的。结果强调了缩小粗粒度(约50 km)温度表面的重要性,并建议通过考虑区域天气模式(风速,风向,湿度)和地形对关键风向的暴露,可以提高该过程的精度。

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