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Application of GRACE to the assessment of model-based estimates of monthly Greenland Ice Sheet mass balance??(2003–2012)

机译:GRACE在基于模型的格陵兰冰原每月质量平衡评估中的应用?(2003年-2012年)

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pstrongAbstract./strong Quantifying the Greenland Ice Sheet's future contribution to sea level rise is a challenging task that requires accurate estimates of ice sheet sensitivity to climate change. Forward ice sheet models are promising tools for estimating future ice sheet behavior, yet confidence is low because evaluation of historical simulations is challenging due to the scarcity of continental-wide data for model evaluation. Recent advancements in processing of Gravity Recovery and Climate Experiment??(GRACE) data using Bayesian-constrained mass concentration??("mascon") functions have led to improvements in spatial resolution and noise reduction of monthly global gravity fields. Specifically, the Jet Propulsion Laboratory's JPL RL05M GRACE mascon solution??(GRACE_JPL) offers an opportunity for the assessment of model-based estimates of ice sheet mass balance??(MB) at a??span class="thinspace"/span300span class="thinspace"/spankm spatial scales. Here, we quantify the differences between Greenland monthly observed MB??(GRACE_JPL) and that estimated by state-of-the-art, high-resolution models, with respect to GRACE_JPL and model uncertainties. To simulate the years 2003–2012, we force the Ice Sheet System Model??(ISSM) with anomalies from three different surface mass balance??(SMB) products derived from regional climate models. Resulting MB is compared against GRACE_JPL within individual mascons. Overall, we find agreement in the northeast and southwest where MB is assumed to be primarily controlled by SMB. In the interior, we find a discrepancy in trend, which we presume to be related to millennial-scale dynamic thickening not considered by our model. In the northwest, seasonal amplitudes agree, but modeled mass trends are muted relative to GRACE_JPL. Here, discrepancies are likely controlled by temporal variability in ice discharge and other related processes not represented by our model simulations, i.e.,??hydrological processes and ice–ocean interaction. In the southeast, GRACE_JPL exhibits larger seasonal amplitude than predicted by the models while simultaneously having more pronounced trends; thus, discrepancies are likely controlled by a combination of missing processes and errors in both the SMB products and ISSM. At the margins, we find evidence of consistent intra-annual variations in regional MB that deviate distinctively from the SMB annual cycle. Ultimately, these monthly-scale variations, likely associated with hydrology or ice–ocean interaction, contribute to steeper negative mass trends observed by GRACE_JPL. Thus, models should consider such processes at relatively high (monthly-to-seasonal) temporal resolutions to achieve accurate estimates of Greenland??MB./p.
机译:> >摘要。量化格陵兰冰原对海平面上升的未来贡献是一项艰巨的任务,需要准确估算冰原对气候变化的敏感性。前向冰盖模型是用于估计未来冰盖行为的有前途的工具,但是信心低下,因为由于大陆范围内缺乏用于模型评估的数据,历史模拟的评估具有挑战性。使用贝叶斯约束质量浓度(“ mascon”)函数处理重力恢复和气候实验(GRACE)数据的最新进展已导致空间分辨率的提高和每月全球重力场的降噪。具体来说,喷气推进实验室的JPL RL05M GRACE mascon解决方案(GRACE_JPL)为评估基于模型的冰盖质量平衡估算提供了机会。 / span> 300 class =“ thinspace”> km空间尺度。在这里,我们量化了格陵兰岛每月观测到的MB ??(GRACE_JPL)与最新的高分辨率模型所估计的GRACE_JPL和模型不确定性之间的差异。为了模拟2003年至2012年,我们使用来自区域气候模型的三种不同表面质量平衡产品(SMB)的异常来强制进行冰盖系统模型(ISSM)。在单个mascon中将结果MB与GRACE_JPL进行比较。总体而言,我们在东北和西南地区发现了共识,其中MB被假定为主要由SMB控制。在内部,我们发现趋势方面的差异,我们认为这与我们模型未考虑的千年级动态增厚有关。在西北部,季节性振幅一致,但相对于GRACE_JPL,模拟的质量趋势被忽略了。在这里,差异可能是由冰排的时间变化和其他相关过程所控制的,而这些过程并未以我们的模型模拟来表示,即水文过程和冰洋相互作用。在东南部,GRACE_JPL的季节性振幅比模型预测的大,同时趋势更为明显。因此,差异可能是由SMB产品和ISSM中缺少的流程和错误共同造成的。在边缘处,我们发现区域MB的年度内一致变化的证据,这与SMB年度周期明显不同。最终,这些月度尺度的变化,可能与水文学或冰洋相​​互作用有关,导致了GRACE_JPL观测到的更陡峭的负质量趋势。因此,模型应该以相对较高的(每月到季节)时间分辨率考虑此类过程,以实现格陵兰岛MB的准确估算。

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