Abstract
MIPAS is a Fourier transform spectrometer, operating
onboard of the ENVISAT satellite since July 2002.
The online retrieval algorithm produces geolocated profiles
of temperature and of volume mixing ratios of six key atmospheric
constituents: H2O, O3, HNO3, CH4, N2O and
NO2. In the validation phase, oscillations beyond the error
bars were observed in several profiles, particularly in CH4
and N2O.
To tackle this problem, a Tikhonov regularization scheme
has been implemented in the retrieval algorithm. The applied
regularization is however rather weak in order to preserve the
vertical resolution of the profiles.
In this paper we present a self-adapting and altitudedependent
regularization approach that detects whether the
analyzed observations contain information about small-scale
profile features, and determines the strength of the regularization
accordingly. The objective of the method is to smooth
out artificial oscillations as much as possible, while preserving
the fine detail features of the profile when related information
is detected in the observations.
The proposed method is checked for self consistency, its
performance is tested on MIPAS observations and compared
with that of some other regularization schemes available
in the literature. In all the considered cases the proposed
scheme achieves a good performance, thanks to its altitude
dependence and to the constraints employed, which are specific
of the inversion problem under consideration. The
proposed method is generally applicable to iterative Gauss-
Newton algorithms for the retrieval of vertical distribution
profiles from atmospheric remote sounding measurements.
Anno
2009
Autori IAC
Tipo pubblicazione
Altri Autori
Ridolfi M., Sgheri L.
Editore
Copernicus Publ.
Rivista
Atmospheric chemistry and physics (Online)