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Satellite passive microwave sea-ice concentration data set inter-comparison for Arctic summer conditions

机译:卫星被动微波海冰浓度数据集赤岛夏季条件的相互比较

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We report on results of a systematic inter-comparison of 10 global sea-ice concentration (SIC) data products at 12.5 to 50.0km grid resolution from satellite passive microwave (PMW) observations for the Arctic during summer. The products are compared against SIC and net ice surface fraction (ISF) – SIC minus the per-grid-cell melt pond fraction (MPF) on sea ice – as derived from MODerate resolution Imaging Spectroradiometer (MODIS) satellite observations and observed from ice-going vessels. Like in Kern et al.?(2019), we group the 10 products based on the concept of the SIC retrieval used. Group I consists of products of the European Organisation for the Exploitation of Meteorological Satellites (EUMETSAT) Ocean and Sea Ice Satellite Application Facility (OSI SAF) and European Space Agency (ESA) Climate Change Initiative (CCI) algorithms. Group II consists of products derived with the Comiso bootstrap algorithm and the National Oceanographic and Atmospheric Administration (NOAA) National Snow and Ice Data Center (NSIDC) SIC climate data record (CDR). Group III consists of Arctic Radiation and Turbulence Interaction Study (ARTIST) Sea Ice (ASI) and National Aeronautics and Space Administration (NASA) Team (NT) algorithm products, and group IV consists of products of the enhanced NASA Team algorithm (NT2). We find widespread positive and negative differences between PMW and MODIS SIC with magnitudes frequently reaching up to 20%–25% for groups I and III and up to 30%–35% for groups II and IV. On a pan-Arctic scale these differences may cancel out: Arctic average SIC from group I products agrees with MODIS within 2%–5% accuracy during the entire melt period from May through September. Group II and IV products overestimate MODIS Arctic average SIC by 5%–10%. Out of group III, ASI is similar to group I products while NT SIC underestimates MODIS Arctic average SIC by 5%–10%. These differences, when translated into the impact computing Arctic sea-ice area (SIA), match well with the differences in SIA between the four groups reported for the summer months by Kern et al.?(2019). MODIS ISF is systematically overestimated by all products; NT provides the smallest overestimations (up to 25%) and group II and IV products the largest overestimations (up to 45%). The spatial distribution of the observed overestimation of MODIS ISF agrees reasonably well with the spatial distribution of the MODIS MPF and we find a robust linear relationship between PMW SIC and MODIS ISF for group I and III products during peak melt, i.e. July and August. We discuss different cases taking into account the expected influence of ice surface properties other than melt ponds, i.e. wet snow and coarse-grained snow/refrozen surface, on brightness temperatures and their ratios used as input to the SIC retrieval algorithms. Based on this discussion we identify the mismatch between the actually observed surface properties and those represented by the ice tie points as the most likely reason for (i)?the observed differences between PMW SIC and MODIS ISF and for (ii)?the often surprisingly small difference between PMW and MODIS SIC in areas of high melt pond fraction. We conclude that all 10 SIC products are highly inaccurate during summer melt. We hypothesize that the unknown number of melt pond signatures likely included in the ice tie points plays an important role – particularly for groups I and II – and recommend conducting further research in this field.
机译:我们在夏季,从卫星被动微波(PMW)观察到12.5至50.0km栅格分辨率,在夏季,从12.5至50.0km的网格分辨率报告10个全球海冰浓度(SIC)数据产品的结果。将产品与SiC和净冰面馏分(ISF) - SiC减去海冰上的每栅极 - 细胞熔体池(MPF) - 从中​​等分辨率成像光谱辐射器(MODIS)卫星观察和从冰观察去船只。就像在克恩等人一样,我们基于所使用的SiC检索的概念,将10个产品分组。我集团由欧洲流利组织的产品组成,用于剥削气象卫星(Eumetsat)海洋和海冰卫星应用设施(OSI SAF)和欧洲航天局(ESA)气候变化倡议(CCI)算法。第II集团由与Comiso Bootstrap算法和国家海洋和大气管理(NOAA)国家雪和冰数据中心(NSIDC)SIC气候数据记录(CDR)的产品组成。第三组由北极辐射和湍流互动研究(艺术家)海冰(ASI)和美国国家航空和航天局(NASA)团队(NAS)算法产品组成,第四族包括增强型NASA团队算法(NT2)的产品组成。我们在PMW和MODIS SIC之间发现了普遍的正面和阴性差异,势幅频率频率高达20%-25%,对于II和II族,II和IV组高达30%-35%。在泛北极标度上,这些差异可能取消:来自I群产品的北极平均SIC在5月至9月的整个熔体期间的2%-5%的准确度内同意。第II组和IV产品高估Modis Arctic平均SiC 5%-10%。出于III组,ASI类似于I族产品,而NT SIC低估MODIS北极平均SIC 5%-10%。这些差异,当翻译成北极海冰区(SIA)时,伴随着夏季报道的四组差异的SIA差异,通过Kern等人来匹配。(2019年)。 Modis ISF由所有产品系统地高估; NT提供最小的高度高度(最多25%)和II组,IV产品最大的高度估量(高达45%)。所观察到的Modis ISF的空间分布与Modis MPF的空间分布相当好,我们在PMW SIC和Modis ISF之间找到了峰熔体,即7月和8月的峰值熔点的强大线性关系。我们讨论了不同案例考虑到除熔融池之外的冰面性能的预期影响,即湿雪和粗粒子/ Refrozen表面,亮度温度及其用作SiC检索算法的输入。基于该讨论,我们确定了实际观察到的表面特性与冰连接点所示的不匹配,作为(i)的最可能原因?PMW SIC和MODIS ISF与(II)之间观察到的差异?往往令人惊讶PMW与MODIS SIC在高熔池级分区域之间的差异。我们得出结论,在夏季熔体期间,所有10种SIC产品都非常不准确。我们假设可能包含在冰扎点的未知数量的熔体池签名起着重要作用 - 特别是对于I和II组 - 并建议在该领域进行进一步的研究。

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