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Assessment of Arctic Cloud Cover Anomalies in Atmospheric Reanalysis Products Using Satellite Data

机译:利用卫星数据评估大气再分析产品中的北极云覆盖异常

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Cloud cover is one of the largest uncertainties in model predictions of the future Arctic climate. Previous studies have shown that cloud amounts in global climate models and atmospheric reanalyses vary widely and may have large biases. However, many climate studies are based on anomalies rather than absolute values, for which biases are less important. This study examines the performance of five atmospheric reanalysis products-ERA-Interim, MERRA, MERRA-2, NCEP R1, and NCEP R2-in depicting monthly mean Arctic cloud amount anomalies against Moderate Resolution Imaging Spectroradiometer (MODIS) satellite observations from 2000 to 2014 and against Cloud-Aerosol Lidar and Infrared Pathfinder Satellite Observation (CALIPSO) observations from 2006 to 2014. All five reanalysis products exhibit biases in the mean cloud amount, especially in winter. The Gerrity skill score (GSS) and correlation analysis are used to quantify their performance in terms of interannual variations. Results show that ERA-Interim, MERRA, MERRA-2, and NCEP R2 perform similarly, with annual mean GSSs of 0.36/0.22, 0.31/0.24, 0.32/0.23, and 0.32/0.23 and annual mean correlation coefficients of 0.50/0.51, 0.43/0.54, 0.44/0.53, and 0.50/0.52 against MODIS/CALIPSO, indicating that the reanalysis datasets do exhibit some capability for depicting the monthly mean cloud amount anomalies. There are no significant differences in the overall performance of reanalysis products. They all perform best in July, August, and September and worst in November, December, and January. All reanalysis datasets have better performance over land than over ocean. This study identifies the magnitudes of errors in Arctic mean cloud amounts and anomalies and provides a useful tool for evaluating future improvements in the cloud schemes of reanalysis products.
机译:在未来北极气候的模型预测中,云量是最大的不确定性之一。先前的研究表明,全球气候模型和大气再分析中的云量差异很大,并且可能存在较大偏差。但是,许多气候研究是基于异常而不是绝对值,因此偏见的重要性较小。这项研究考察了ERA-Interim,MERRA,MERRA-2,NCEP R1和NCEP R2-这5种大气再分析产品在描述2000年至2014年相对于中等分辨率成像光谱仪(MODIS)卫星观测值的月平均北极云量异常方面的性能以及针对2006年至2014年的云气溶胶激光雷达和红外探路者卫星观测(CALIPSO)观测。所有五种再分析产品均显示出平均云量存在偏差,尤其是在冬季。 Gerrity技能评分(GSS)和相关分析用于根据年际变化量化其绩效。结果显示,ERA-Interim,MERRA,MERRA-2和NCEP R2的表现相似,年平均GSS为0.36 / 0.22、0.31 / 0.24、0.32 / 0.23和0.32 / 0.23,年平均相关系数为0.50 / 0.51,针对MODIS / CALIPSO的0.43 / 0.54、0.44 / 0.53和0.50 / 0.52,表明重新分析数据集确实具有描述月平均云量异常的能力。再分析产品的整体性能没有显着差异。它们在7月,8月和9月的表现最佳,而11月,12月和1月的表现最差。所有重新分析数据集在陆地上的性能都比海洋上的性能更好。这项研究确定了北极平均云量和异常的误差大小,并为评估未来再分析产品的云方案的改进提供了有用的工具。

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