通过历史枞树和冰温观测及机器学习记录格陵兰冰盖的近期变暖趋势

B. Vandecrux, R. Fausto, J. Box, F. Covi, R. Hock, Å. Rennermalm, A. Heilig, Jakob Abermann, D. van As, E. Bjerre, X. Fettweis, P. Smeets, P. Kuipers Munneke, M. R. van den Broeke, M. Brils, P. Langen, R. Mottram, A. Ahlstrøm
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引用次数: 0

摘要

摘要过去几十年来,由于北极大气变暖,格陵兰冰盖表面融化的强度和范围不断增加。地表融化取决于地表能量平衡,其中包括大气强迫,也包括冰原表面附近的雪、枞树和冰的热预算。冰原表层下的温度一直被用作冰原表层热状态的指标。在此,我们汇集了从 1912 年到 2022 年期间对整个冰原表层下 10 米处(T10 米)的枞树林和冰温度的 4612 次测量数据。这些测量值要么是瞬时值,要么是月平均值。我们对这些点观测数据中的 4597 个进行了人工神经网络模型(ANN)训练,并根据其相对代表性进行了加权,利用该模型重建了 1950-2022 年期间整个格陵兰冰盖上每月的 T10 米温度。我们使用ERA5再分析数据集的气温和降雪量的10年平均值和年平均值作为模型输入。方差分析结果表明,1950-2022 年期间,整个格陵兰岛的 T10 m 呈正趋势,每十年 0.2 ∘C,1950-1985 年期间降温(每十年-0.4 ∘C),1985-2022 年期间升温(每十年+0.7 ∘)。与 T10 米观测数据集相比,区域气候模式 HIRHAM5、RACMO2.3p2 和 MARv3.12 的结果参差不齐,平均差异从-0.4 ∘C(HIRHAM)到 1.2 ∘C(MAR)不等,均方根差异从 2.8 ∘C(HIRHAM)到 4.7 ∘C(MAR)不等。基于观测的方差网络还显示,气候模式低估了裸冰区和干雪区的次表层变暖趋势。次表层变暖使格陵兰冰盖表面更接近融化点,减少了融化所需的能量输入。我们的汇编记录了冰盖地表下对大气变暖的反应,将有助于进一步改进用于冰盖质量损失评估的模型,减少预测的不确定性。
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Recent warming trends of the Greenland ice sheet documented by historical firn and ice temperature observations and machine learning
Abstract. Surface melt on the Greenland ice sheet has been increasing in intensity and extent over the last decades due to Arctic atmospheric warming. Surface melt depends on the surface energy balance, which includes the atmospheric forcing but also the thermal budget of the snow, firn and ice near the ice sheet surface. The temperature of the ice sheet subsurface has been used as an indicator of the thermal state of the ice sheet's surface. Here, we present a compilation of 4612 measurements of firn and ice temperature at 10 m below the surface (T10 m) across the ice sheet, spanning from 1912 to 2022. The measurements are either instantaneous or monthly averages. We train an artificial neural network model (ANN) on 4597 of these point observations, weighted by their relative representativity, and use it to reconstruct T10 m over the entire Greenland ice sheet for the period 1950–2022 at a monthly timescale. We use 10-year averages and mean annual values of air temperature and snowfall from the ERA5 reanalysis dataset as model input. The ANN indicates a Greenland-wide positive trend of T10 m at 0.2 ∘C per decade during the 1950–2022 period, with a cooling during 1950–1985 (−0.4 ∘C per decade) followed by a warming during 1985–2022 (+0.7 ∘ per decade). Regional climate models HIRHAM5, RACMO2.3p2 and MARv3.12 show mixed results compared to the observational T10 m dataset, with mean differences ranging from −0.4 ∘C (HIRHAM) to 1.2 ∘C (MAR) and root mean squared differences ranging from 2.8 ∘C (HIRHAM) to 4.7 ∘C (MAR). The observation-based ANN also reveals an underestimation of the subsurface warming trends in climate models for the bare-ice and dry-snow areas. The subsurface warming brings the Greenland ice sheet surface closer to the melting point, reducing the amount of energy input required for melting. Our compilation documents the response of the ice sheet subsurface to atmospheric warming and will enable further improvements of models used for ice sheet mass loss assessment and reduce the uncertainty in projections.
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