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NILU-UV multi-filter radiometer total ozone columns: Comparison with satellite observations over Thessaloniki, Greece

机译:NILU-UV多滤光辐射计臭氧总柱:与希腊萨洛尼卡的卫星观测结果比较

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摘要

This study aims to construct and validate a neural network (NN) model for the production of high frequency (-1 min) ground-based estimates of total ozone column (TOC) at a mid-latitude UV and ozone monitoring station in the Laboratory of Atmospheric Physics of the Aristotle University of Thessaloniki (LAP/AUTh) for the years 2005-2014. In the first stage of model development, ~30.000 records of coincident solar UV spectral irradiance measurements from a Norsk Institutt for Luftforskning (NILU)-UV multi-filter radiometer and TOC measurements from a co-located Brewer spectroradiometer are used to train a NN to learn the nonlinear functional relation between the irradiances and TOC. The model is then subjected to sensitivity analysis and validation. Close agreement is obtained (R~2 = 0.94, RMSE =: 821 DU and bias = -0.15 DU relative to the Brewer) for the training data in the correlation of NN estimates on Brewer derived TOC with 95% of the coincident data differing by less than 13 DU. In the second stage of development, a long time series (≥1 million records) of high frequency (~1 min) NILU-UV ground-based measurements are presented as inputs to the NN model to generate high frequency TOC estimates. The advantage of the NN model is that it is not site dependent and is applicable to any NILU input data lying within the range of the training data. GOME/ERS-2, SCIAMACHY/Envisat, OMI/Aura and GOME2/MetOp-A TOC records are then used to perform a precise cross-validation analysis and comparison with the NILU TOC estimates over Thessaloniki. All 4 satellite TOC dataset are retrieved using the GOME Direct Fitting algorithm, version 3 (GODFIT_v3 ), for reasons of consistency. The NILU TOC estimates within ± 30 min of the overpass times agree well with the satellite TOC retrievals with coefficient of determination in the range 0.88 ≤ R~2 ≤ 0.90 for all sky conditions and 0.95 ≤R~2≤ 0.96 for clear sky conditions. The mean fractional differences are found to be - 0.67% ± 2.15%, -1,44% ± 2.25%, - 2.09% ± 2.06% and - 0.85% ± 2.19% for GOME, SCIAMACHY, OMI and GOME2 respectively for the clear sky cases. The near constant standard deviation (~±2.2%) across the array of sensors testifies directly to the stability of both the GODFIT_v3 algorithm and the NN model for providing coherent and robust TOC records. Furthermore, the high Pearson product moment correlation coefficients (0.94 < R < 0.98) testify to the strength of the linear relationship between the satellite algorithm retrievals of TOC and ground-based estimates, while biases of less than 5 DU suggest that systematic errors are low. This novel methodology contributes to the ongoing assessment of the quality and consistency of ground and space-based measurements of total ozone columns.
机译:这项研究旨在构建和验证一个神经网络(NN)模型,用于在美国加利福尼亚州实验室的中纬度UV和臭氧监测站产生基于地面的总臭氧柱(TOC)的高频(-1分钟)估算值塞萨洛尼基亚里斯多德大学(LAP / AUTh)的大气物理学,2005-2014年。在模型开发的第一阶段,诺夫斯基工业大学(NILU)-UV多滤光辐射仪的同时太阳紫外线光谱辐照度测量的约30.000条记录和布鲁尔分光辐射仪位于同一地点的TOC测量值被用于训练NN了解辐照度和TOC之间的非线性函数关系。然后对模型进行敏感性分析和验证。在Brewer推导的TOC的NN估计值的相关性中,对于训练数据,获得了训练数据的紧密一致性(R〜2 = 0.94,RMSE =:821 DU,偏差= -0.15 DU),同时95%的重合数据相差小于13 DU。在开发的第二阶段,提出了一个长时间序列(≥1百万条记录)的高频(〜1分钟)NILU-UV地面测量结果,作为NN模型的输入,以生成高频TOC估计值。 NN模型的优势在于它不依赖于站点,并且适用于训练数据范围内的任何NILU输入数据。然后使用GOME / ERS-2,SCIAMACHY / Envisat,OMI / Aura和GOME2 / MetOp-A TOC记录进行精确的交叉验证分析,并与塞萨洛尼基上的NILU TOC估计值进行比较。出于一致性的原因,使用GOME直接拟合算法版本3(GODFIT_v3)检索了所有4个卫星TOC数据集。跨越时间的±30分钟内的NILU TOC估算值与卫星TOC检索结果非常吻合,其确定系数在所有天空条件下的范围为0.88≤R〜2≤0.90,在晴朗天空条件下的确定系数为0.95≤R〜2≤0.96。对于晴空,国美,SCIAMACHY,OMI和GOME2的平均分数差异分别为-0.67%±2.15%,-1,44%±2.25%,-2.09%±2.06%和-0.85%±2.19%案件。传感器阵列上接近恒定的标准偏差(〜±2.2%)直接证明了GODFIT_v3算法和NN模型的稳定性,可提供连贯且可靠的TOC记录。此外,较高的Pearson乘积矩相关系数(0.94

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