Reconstruction of daily snowfall accumulation at 5.5 km resolution over Dronning Maud Land, Antarctica, from 1850 to 2014 using an analog-based downscaling technique

N. Ghilain, S. Vannitsem, Q. Dalaiden, H. Goosse, Lesley de Cruz, Wenguang Wei
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Abstract

Abstract. The surface mass balance (SMB) over the Antarctic Ice Sheet displays large temporal and spatial variations. Due to the complex Antarctic topography, modelling the climate at high resolution is crucial to accurately represent the dynamics of SMB. While ice core records provide a means to infer the SMB over centuries, the view is very spatially constrained. General circulation models (GCMs) estimate its spatial distribution over centuries, but with a resolution that is too coarse to capture the large variations due to local orographic effects. We have therefore explored a methodology to statistically downscale snowfall accumulation, the primary driver of SMB, from climate model historical simulations (1850–present day) over the coastal region of Dronning Maud Land. An analog method is set up over a period of 30 years with the ERA-Interim and ERA5 reanalyses (1979–2010 AD) and associated with snowfall daily accumulation forecasts from the Regional Atmospheric Climate Model (RACMO2.3) at 5.5 km spatial resolution over Dronning Maud in East Antarctica. The same method is then applied to the period from 1850 to present day using an ensemble of ten members from the CESM2 model. This method enables to derive a spatial distribution of the accumulation of snowfall, the principal driver of the SMB variability over the region. A new dataset of daily and yearly snowfall accumulation based on this methodology is presented in this paper (MASS2ANT dataset, https://doi.org/10.5281/zenodo.4287517, Ghilain et al. (2021)), along with comparisons with ice core data and available spatial reconstructions. It offers a more detailed spatio-temporal view of the changes over the past 150 years compared to other available datasets, allowing a possible connection with the ice core records, and provides information that may be useful in identifying the large-scale patterns associated to the local precipitation conditions and their changes over the past century.
基于模拟的降尺度技术重建1850 - 2014年南极洲Dronning Maud Land 5.5 km分辨率日降雪量
摘要南极冰盖表面物质平衡(SMB)表现出较大的时空变化。由于南极地形复杂,高分辨率的气候模拟对于准确表征SMB的动态至关重要。虽然冰芯记录提供了一种推断几个世纪以来SMB的方法,但这种观点在空间上受到很大限制。一般环流模式(GCMs)估计了几个世纪以来的空间分布,但其分辨率太粗,无法捕捉到由于局部地形影响而产生的大变化。因此,我们从Dronning Maud地沿海地区的气候模式历史模拟(1850年至今)中探索了一种统计上缩小SMB主要驱动因素降雪积累的方法。利用ERA-Interim和ERA5再分析(1979-2010年)建立了一个30年的模拟方法,并结合了区域大气气候模式(RACMO2.3)在东南极洲Dronning Maud地区5.5 km空间分辨率的降雪日累积预报。然后使用CESM2模型的10个成员的集合,将同样的方法应用于从1850年到现在的时期。这种方法能够推导出降雪积累的空间分布,降雪积累是该地区SMB变率的主要驱动因素。本文提出了基于该方法的日和年降雪量新数据集(MASS2ANT数据集,https://doi.org/10.5281/zenodo.4287517, Ghilain et al.(2021)),并与冰芯数据和可用空间重建数据进行了比较。与其他现有数据集相比,它提供了过去150年变化的更详细的时空视图,允许与冰芯记录的可能联系,并提供了可能有助于确定与过去一个世纪的当地降水条件及其变化相关的大尺度模式的信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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