Abstract
Abstract. Multiple limb sounder measurements of the same atmospheric region taken from
different directions can be combined in a 3-D tomographic retrieval.
Mathematically, this is a computationally expensive inverse modelling
problem. It typically requires an introduction of some general knowledge of
the atmosphere (regularisation) due to its underdetermined nature. This paper introduces a consistent, physically motivated (no ad-hoc
parameters) variant of the Tikhonov regularisation scheme based on spatial derivatives
of the first-order and Laplacian. As shown by a case study with
synthetic data, this scheme, combined with irregular grid retrieval methods
employing Delaunay triangulation, improves both upon the quality and the
computational cost of 3-D tomography. It also eliminates grid dependence and
the need to tune parameters for each use case. The few physical parameters
required can be derived from in situ measurements and model data. Tests show
that a 82 % reduction in the number of grid points and 50 % reduction in total
computation time, compared to previous methods, could be achieved without
compromising results. An efficient Monte Carlo technique was also adopted for
accuracy estimation of the new retrievals.
Cited by
5 articles.
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