来自区域气候模式 MAR 的计算效率高的 100 米分辨率格陵兰统计降尺度产品

M. Tedesco, Paolo Colosio, X. Fettweis, G. Cervone
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摘要

摘要格陵兰冰盖(GrIS)一直在直接导致海平面上升,预计在未来几十年内这一作用将加速。研究地表质量损失演变(如地表质量平衡,SMB)的一个重要工具是区域气候模式(RCMs),它可以提供与这种损失相关的海平面上升的当前估计和未来预测。然而,区域气候模式的主要局限性之一是目前生成输出结果的水平空间分辨率相对较低。在此,我们根据格陵兰岛海拔高度与质量损失之间的关系,报告了有关将区域大气模型(MAR)所建模的 SMB 从原始空间分辨率 6 公里降到 100 米的统计降尺度结果。为此,我们开发了一个地理空间框架,允许降尺度过程并行化,这是提高算法计算效率的一个重要方面。利用在 SMB 案例中获得的结果,通过将模型输出与现场和卫星测量结果进行比较,对地表和空气温度进行了评估。与原始粗略输出相比,降尺度产品显示出相当大的改进,决定系数(R2)从原始 MAR 输出的 0.868 增加到 SMB 降尺度产品的 0.935。此外,就斜率而言,模拟和测量的 SMB 值的线性回归拟合斜率和截距值从原始 MAR 的 0.865 变为缩小尺度产品的 1.015,就截距而言,从值-235 毫米 w.e. yr-1(原始)变为-57 毫米 w.e. yr-1(缩小尺度),大大改进了以前在文献中发表的结果。
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A computationally efficient statistically downscaled 100 m resolution Greenland product from the regional climate model MAR
Abstract. The Greenland Ice Sheet (GrIS) has been contributing directly to sea level rise, and this contribution is projected to accelerate over the next decades. A crucial tool for studying the evolution of surface mass loss (e.g., surface mass balance, SMB) consists of regional climate models (RCMs), which can provide current estimates and future projections of sea level rise associated with such losses. However, one of the main limitations of RCMs is the relatively coarse horizontal spatial resolution at which outputs are currently generated. Here, we report results concerning the statistical downscaling of the SMB modeled by the Modèle Atmosphérique Régional (MAR) RCM from the original spatial resolution of 6 km to 100 m building on the relationship between elevation and mass losses in Greenland. To this goal, we developed a geospatial framework that allows the parallelization of the downscaling process, a crucial aspect to increase the computational efficiency of the algorithm. Using the results obtained in the case of the SMB, surface and air temperature are assessed through the comparison of the modeled outputs with in situ and satellite measurement. The downscaled products show a considerable improvement in the case of the downscaled product with respect to the original coarse output, with the coefficient of determination (R2) increasing from 0.868 for the original MAR output to 0.935 for the SMB downscaled product. Moreover, the value of the slope and intercept of the linear regression fitting modeled and measured SMB values shifts from 0.865 for the original MAR to 1.015 for the downscaled product in the case of the slope and from the value −235 mm w.e. yr−1 (original) to −57 mm w.e. yr−1 (downscaled) in the case of the intercept, considerably improving upon results previously published in the literature.
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