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首页> 外文期刊>Atmospheric Measurement Techniques >Position error in profiles retrieved from MIPAS observations with a 1-D algorithm
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Position error in profiles retrieved from MIPAS observations with a 1-D algorithm

机译:使用一维算法从MIPAS观测中检索的轮廓中的位置误差

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The information load (IL) analysis, first introduced for the two-dimensional approach (Carlotti and Magnani, 2009), is applied to the inversion of MIPAS (Michelson Interferometer for Passive Atmospheric Sounding) observations operated with a 1-dimensional (1-D) retrieval algorithm. The IL distribution of MIPAS spectra is shown to be often asymmetrical with respect to the tangent points of the observations and permits us to define the preferential latitude where the profiles retrieved with a 1-D algorithm should be geo-located. Therefore, defining the geo-location of the retrieved profile by means of the tangent points leads to a "position error". We assess the amplitude of the position error for some of the MIPAS main products and we show that the IL analysis can also be used as a tool for the selection of spectral intervals that, when analyzed, minimize the position error of the retrieved profile. When the temperature (T) profiles are used for the retrieval of volume mixing ratio (VMR) of atmospheric constituents, the T-position error (of the order of 1.5 degrees of latitude) induces a VMR error that is directly connected with the horizontal T gradients. Temperature profiles can be externally-provided or determined in a previous step of the retrieval process. In the first case, the IL analysis shows that a meaningful fraction (often exceeding 50%) of the VMR error deriving from the 1-D approximation is to be attributed to the mismatch between the position assigned to the external T profile and the positions where T is required by the analyzed observations. In the second case the retrieved T values suffer by an error of 1.5-2 K due to neglecting the horizontal variability of T; however the error induced on VMRs is of minor concern because of the generally small mismatch between the IL distribution of the observations analyzed to retrieve T and those analyzed to retrieve the VMR target. An estimate of the contribution of the T-position error to the error budget is provided for MIPAS main products. This study shows that the information load analysis can be successfully exploited in a 1-D context that makes the assumption of horizontal homogeneity of the analyzed portion of atmosphere. The analysis that we propose can be extended to the 1-D inversion of other limb-sounding experiments.
机译:最初针对二维方法引入的信息负载(IL)分析(Carlotti和Magnani,2009年)应用于以一维(1-D)操作的MIPAS(无源大气米歇尔森干涉仪)观测值的反演。 )检索算法。 MIPAS光谱的IL分布相对于观测点的切点通常是不对称的,并允许我们定义优先纬度,在该纬度中应将一维算法检索的剖面定位在地理位置上。因此,通过切点定义检索轮廓的地理位置会导致“位置错误”。我们评估了某些MIPAS主产品的位置误差的幅度,并且我们证明了IL分析还可以用作选择光谱区间的工具,该光谱区间可以在分析时最大程度地减少检索到的轮廓的位置误差。当使用温度(T)曲线检索大气成分的体积混合比(VMR)时,T位置误差(纬度为1.5度)会引起与水平T直接相关的VMR误差渐变。温度曲线可以从外部提供或在检索过程的上一步中确定。在第一种情况下,IL分析表明,源自一维近似的VMR误差的有意义部分(通常超过50%)归因于分配给外部T轮廓的位置与以下位置之间的不匹配:分析的观测值要求T。在第二种情况下,由于忽略了T的水平变异性,因此检索到的T值遭受1.5-2 K的误差。但是,VMR引起的误差不大值得关注,因为分析得出的观测值的IL分布与分析得出的观测值的IL分布之间通常存在很小的失配。为MIPAS主要产品提供了T位置误差对误差预算的贡献的估算。这项研究表明,可以在一维环境中成功利用信息负载分析,这种情况假设了大气被分析部分的水平均匀性。我们建议的分析可以扩展到其他肢体听起来实验的一维反演。

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