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Improvement of the Umkehr ozone profile by the neural network method: analysis of the Belsk (51.80°N, 20.80°E) Umkehr data

机译:通过神经网络方法改善Umkehr臭氧分布:分析Belsk(51.80°N,20.80°E)Umkehr数据

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摘要

Vertical profiles of atmospheric ozone by the neural network (NN) method are compared with those obtained by the standard Umkehr inversion algorithm - UMK92. Both methods used the same input, the so-called N values, derived from Umkehr measurements at Belsk (51.80°N, 20.80°E), Poland, by the Dobson spectrophotometer No 84. The vertical profiles of ozone from satellite observations, Microwave Limb Sounder (MLS) overpasses for the period 2004-2009, and from ozonesoundings performed at the nearby aerological station, Legionowo (52.4° N, 21.0° E), for the period 2000-2009 provide a reference data set for the NN model building. The NN methodology appears to be a promising tool for extracting information about the vertical ozone profile from ground-based Umkehr measurements, despite some limitations of the NN method itself, such as the results being limited to the analysed station, sensitivity to errors in the reference data sets, and lack of possibility to determine the actual retrieval errors. Accuracy of the NN ozone profiles is better for all Umkehr layers than that by the standard Umkehr inversion algorithm when NN and UMK92 profiles are compared with the reference profiles. It is especially pronounced for comparisons with the ozonesonde profiles for layers 4 and 1, where the absolute error changes from 10.6 Dobson units (DU) (UMK92) to 4.4 DU (NN) and from 6.6 DU (UMK92) to 3.5 DU (NN), respectively (1 Dobson unit is equal to 2.69 × 10~(20) molecules/m~2). The mean (over all Umkehr layers) correlation coefficient between NN-MLS, and NN-ozonesonde profiles is 0.75 and 0.85, respectively. The corresponding correlation coefficients for the comparison with UMK92 profiles are lower, i.e. 0.61 and 0.64, respectively.
机译:通过神经网络(NN)方法将大气臭氧的垂直剖面与通过标准Umkehr反演算法UMK92获得的垂直剖面进行了比较。两种方法都使用相同的输入值,即所谓的N值,该值是通过84号Dobson分光光度计在波兰Belsk(51.80°N,20.80°E)的Umkehr测量中得出的。臭氧垂直分布图来自卫星观测,微波肢声纳(MLS)在2004-2009年期间立交,并在2000-2009年期间从附近的气象站Legionowo(北纬52.4°,东经21.0°)进行的臭氧探测得出,提供了参考数据集。 NN方法似乎是从地面Umkehr测量中提取垂直臭氧剖面信息的有前途的工具,尽管NN方法本身存在一些局限性,例如结果仅限于分析站,对参考误差的敏感性数据集,并且缺乏确定实际检索错误的可能性。当将NN和UMK92廓线与参考廓线进行比较时,所有Umkehr层的NN臭氧廓线的准确性要优于标准Umkehr反转算法。与第4层和第1层的臭氧探空仪剖面图进行比较时,尤其明显,绝对误差从10.6 Dobson单位(DU)(UMK92)变为4.4 DU(NN),从6.6 DU(UMK92)变为3.5 DU(NN) ,分别为(1 Dobson单位等于2.69×10〜(20)分子/ m〜2)。 NN-MLS和NN-臭氧探空仪剖面之间的平均(在所有Umkehr层上)相关系数分别为0.75和0.85。用于与UMK92配置文件进行比较的相应相关系数较低,分别为0.61和0.64。

著录项

  • 来源
    《International journal of remote sensing》 |2013年第16期|5541-5550|共10页
  • 作者

    Janusz Jaroslawski;

  • 作者单位

    Institute of Geophysics, Polish Academy of Sciences, 01-452 Warsaw, Poland;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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