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Bias Correction of Multi-sensor Total Column Ozone Satellite Data for 1978-2017

机译:偏差校正多传感器全柱臭氧卫星数据1978 - 2017年

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摘要

This study constructs a merged total column ozone (TCO) dataset using 20 available satellite Level 2 TCO (L2SAT) datasets over 40 years from 1978 to 2017. The individual 20 datasets and the merged TCO dataset are corrected against ground-based Dobson and Brewer spectrophotometer TCO (GD) measurements. Two bias correction methods are used: simple linear regression (SLR) as a function of time and multiple linear regression (MLR) as a function of time, solar zenith angle, and effective ozone temperature. All of the satellite datasets are consistent with GD within +/- 2-3 %, except for some degraded data from the Total Ozone Mapping Spectrometer/Earth Probe during a period of degraded calibration and from the Ozone Mapping and Profiling Suite (OMPS) provided from NOAA at an early stage of measurements. OMPS data provided from NASA show fairly stable L2SAT-GD differences. The Global Ozone Monitoring Experiment/MetOp-A and -B datasets show abrupt changes of approximately 8 DU coincident with the change of retrieval algorithm. For the TCO merged datasets created by averaging all coincident data located within a grid cell from the 20 satellite-borne TCO datasets, the differences between corrected and uncorrected TCOs by MLR are generally positive at lower latitudes where the bias correction increases TCO because of low effective ozone temperature. In the trend analysis, the difference between corrected and uncorrected TCO trends by MLR shows clear seasonal and latitudinal dependency, whereas such seasonal and latitudinal dependency is lost by SLR. The root mean square difference of L2SAT-GD for the uncorrected merged datasets, 8.6 DU, is reduced to 8.4 DU after correction using SLR and MLR. Therefore, the empirically corrected merged TCO datasets that are converted into time-series homogenization with high temporal-resolution are suitable as a data source for trend analyses as well as assimilation for long-term reanalysis.
机译:本研究通过1978年至2017年,使用20多个可用卫星级别2 TCO(L2SAT)数据集构建了合并的总列臭氧(TCO)数据集。各个20个数据集和合并的TCO数据集纠正了基于地面的Dobson和Brewer分光光度计TCO(GD)测量。使用了两个偏置校正方法:简单的线性回归(SLR)作为时间,太阳能天性角度和有效臭氧温度的时间和多元线性回归(MLR)的函数。所有卫星数据集在+/- 2-3%内的GD一致,除了从较低的校准期间的来自总臭氧映射光谱仪/地球探头的一些降级数据,提供了提供的臭氧映射和分析套件(OMP)。从NOAA进行测量的早期阶段。 NASA提供的OMPS数据显示相当稳定的L2SAT-GD差异。全局臭氧监测实验/ MetoP-A和-B数据集显示了随着检索算法的变化而重合的突然变化。对于通过平均来自20个卫星TCO数据集的网格单元格中的所有重合数据创建的TCO合并数据集,MLR通过MLR的校正和未校正TCO之间的差异在较低纬度地区的较低纬度上通常是正的,因为低效增加了TCO臭氧温度。在趋势分析中,MLR纠正和未校正TCO趋势之间的差异显示了清晰的季节性和纬度依赖性,而SLR丢失了这种季节性和纬度依赖性。使用SLR和MLR校正后,L2SAT-GD为未校正合并数据集的L2SAT-GD的均值为8.4 du。因此,经验校正合并的TCO数据集以高时分辨率转换成时序均匀化的是适合作为趋势分析的数据源以及长期重新分析的同化。

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