Kolgotin Alexei, Müller Detlef
Physics Instrumentation Center, Troitsk, Moscow Region, 142190, Russia.
Appl Opt. 2008 Sep 1;47(25):4472-90. doi: 10.1364/ao.47.004472.
We present the theory of inversion with two-dimensional regularization. We use this novel method to retrieve profiles of microphysical properties of atmospheric particles from profiles of optical properties acquired with multiwavelength Raman lidar. This technique is the first attempt to the best of our knowledge, toward an operational inversion algorithm, which is strongly needed in view of multiwavelength Raman lidar networks. The new algorithm has several advantages over the inversion with so-called classical one-dimensional regularization. Extensive data postprocessing procedures, which are needed to obtain a sensible physical solution space with the classical approach, are reduced. Data analysis, which strongly depends on the experience of the operator, is put on a more objective basis. Thus, we strongly increase unsupervised data analysis. First results from simulation studies show that the new methodology in many cases outperforms our old methodology regarding accuracy of retrieved particle effective radius, and number, surface-area, and volume concentration. The real and the imaginary parts of the complex refractive index can be estimated with at least as equal accuracy as with our old method of inversion with one-dimensional regularization. However, our results on retrieval accuracy still have to be verified in a much larger simulation study.
我们提出了二维正则化反演理论。我们使用这种新方法,从多波长拉曼激光雷达获取的光学特性剖面中反演大气颗粒物的微物理特性剖面。据我们所知,这项技术是朝着运行反演算法迈出的首次尝试,鉴于多波长拉曼激光雷达网络,这一算法是迫切需要的。与所谓的经典一维正则化反演相比,新算法具有多个优势。使用经典方法获取合理的物理解空间所需的大量数据后处理程序得以减少。强烈依赖操作人员经验的数据分析被置于更客观的基础之上。因此,我们极大地增强了无监督数据分析。模拟研究的初步结果表明,在反演颗粒物有效半径以及数量、表面积和体积浓度的准确性方面,新方法在许多情况下优于我们的旧方法。复折射率的实部和虚部能够以至少与我们一维正则化反演旧方法相同的精度进行估计。然而,我们在反演精度方面的结果仍有待在更大规模的模拟研究中加以验证。