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Errors induced by different approximations in handling horizontal atmospheric inhomogeneities in MIPAS/ENVISAT retrievals

机译:在处理MIPA / Envisat检索中处理水平大气不均匀性的不同近似致畸误差

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MIPAS (Michelson Interferometer for Passive Atmospheric Sounding) is a mid-infrared limb emission sounder that operated on board the polar satellite ENVISAT from 2002 to 2012. The retrieval algorithm used by the European Space Agency to process MIPAS measurements exploits the assumption that the atmosphere is horizontally homogeneous. However, previous studies highlighted how this assumption causes significant errors on the retrieved profiles of some MIPAS target species.In this paper we quantify the errors induced by this assumption and evaluate the performances of three different algorithms that can be used to mitigate the problem. We generate synthetic observations with a high spatial resolution atmospheric model and carry out the retrievals with four alternative methods. The first assumes horizontal homogeneity (1-D retrieval), the second includes a model of the horizontal gradient of atmospheric temperature (1-D plus temperature gradient retrieval), the third accounts for an horizontal gradient of temperature and composition (1-D plus temperature and composition gradient retrieval), while the fourth is the full two-dimensional (2-D) inversion approach.Our results highlight that the 1-D retrieval implies errors that are significant for averages of profiles. Furthermore, for some targets (e.g. T, CH4 and N2O below 10?hPa) the error induced by the 1-D approximation also becomes visible in the individual retrieved profiles. The inclusion of any kind of horizontal variability model improves all the targets with respect to the horizontal homogeneity assumption. For temperature, HNO3 and CFC-11, the inclusion of an horizontal temperature gradient leads to a significant reduction of the error. For other targets, such as H2O, O3, N2O, CH4, the improvements due to the inclusion of an horizontal temperature gradient are minor. In these cases, the inclusion of a gradient in the target volume mixing ratio leads to significant improvements. Among all the methods tested in this work, the 2-D approach, as expected, implies the smallest errors for almost all the target parameters. This residual error of the 2-D approach is the smoothing caused by the retrieval grid, which is coarser than that of the atmospheric model.
机译:MIPAS(用于被动大气发出的Michelson干涉仪)是一个中红外肢体排放测量器,在2002年至2012年的极地卫星Envisat上运营。欧洲航天局使用的检索算法用于处理MIPAS测量的假设是大气层的假设水平均匀。然而,以前的研究突出了这一假设在一些MIPAS目标物种的检索曲线上引起显着的错误。在本文中,我们量化了这种假设引起的错误,并评估了三种不同算法的性能,可以用于减轻问题的三种不同算法。我们产生具有高空间分辨率大气模型的合成观察,并使用四种替代方法进行检索。第一个假设水平均匀性(1-D检索),第二个包括大气温度(1-D加温度梯度检索)的水平梯度模型,第三个占温度和组成的水平梯度(1-D Plus温度和组成梯度检索),而第四是全二维(2-D)反转方法。结果突出显示1-D检索意味着对于轮廓的平均值来说意义有很大的错误。此外,对于某些目标(例如,CH4和N2O以下10?HPA),由1-D近似感应的误差也在各个检索的概况中可见。包含任何类型的水平变化模型可以改善关于水平同质的假设的所有目标。对于温度,HNO3和CFC-11,包含水平温度梯度导致误差的显着降低。对于其他靶,例如H 2 O,O 3,N2O,CH4,由于包含水平温度梯度而导致的改进是较小的。在这些情况下,在目标体积混合比中包含梯度导致显着的改进。在这项工作中测试的所有方法中,正如所预期的那样,2-D方法暗示了几乎所有目标参数的最小错误。 2-D方法的这种剩余误差是由检索网格引起的平滑,这与大气模型的粗糙。

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