Instituto Geológico y Minero de España, Urb. Alcázar del Genil, 4. Edificio Zulema Bajo, 18006 Granada, Spain.
Instituto Geológico y Minero de España, Ríos Rosas, 23, 28003 Madrid, Spain.
Sci Total Environ. 2021 Sep 20;788:147776. doi: 10.1016/j.scitotenv.2021.147776. Epub 2021 May 15.
Climate change will modify the spatiotemporal distribution of water resources in the future. Snow availability in alpine systems plays an important role for water dependent ecosystems, water demand supply, tourism, and hydropower. The assessment of the impact of climate change (and its uncertainty) on snow is a key subject in determining suitable adaptation strategies in these systems. In this paper, we propose a new methodology for assessing the impact of climate change on snow cover areas (SCAs). We have developed the Monte Carlo method analysis to combine several approaches to generate multiple input series and propagate them within a previously calibrated SCA cellular automata model. This generates potential future local scenarios from regional climate models. These scenarios are used to generate multiple series by using a stochastic weather generator. The methodology also includes an approach to correct the outputs bias of the stochastic weather generators when it is needed. Finally, the historical and the corrected multiple future weather series are used to simulate the impact on the SCA by using a cellular automata model. It is a novel approach that allows us to quantify the impact and uncertainty of climate change on the SCA. The methodology has been applied to the Sierra Nevada (southern Spain), which is the most southern alpine mountain range in Europe. In the horizon 2071-2100, under the RCP 8.5 emission scenario, we estimate mean reductions of SCA that will move from 42 to 66% from December to February. The reductions are higher for the rest of the year (from March to May reductions of between 47 and 95% and from September to November reductions of between 54 and 100%). These SCA changes may be roughly equivalent to an elevation shift of snow of around 400 m.
气候变化将改变未来水资源的时空分布。高山系统中的积雪对依赖水的生态系统、水资源供需、旅游业和水力发电具有重要作用。评估气候变化(及其不确定性)对雪的影响是确定这些系统中适宜适应策略的关键课题。在本文中,我们提出了一种评估气候变化对积雪面积(SCA)影响的新方法。我们开发了蒙特卡罗方法分析,将几种方法结合起来,生成多个输入序列,并在之前校准的 SCA 元胞自动机模型内对其进行传播。这从区域气候模型中生成潜在的未来局部情景。这些情景用于通过随机天气生成器生成多个序列。该方法还包括一种在需要时纠正随机天气生成器输出偏差的方法。最后,使用元胞自动机模型,使用历史和校正后的多个未来天气序列来模拟对 SCA 的影响。这是一种新颖的方法,可以量化气候变化对 SCA 的影响和不确定性。该方法已应用于内华达山脉(西班牙南部),这是欧洲最南端的高山山脉。在 2071-2100 年的 RCP8.5 排放情景下,我们估计 12 月至 2 月期间 SCA 的平均减少量将从 42%到 66%。其余时间的减少量更高(从 3 月到 5 月减少 47%到 95%,从 9 月到 11 月减少 54%到 100%)。这些 SCA 变化大致相当于积雪海拔高度的 400 米左右的变化。