13 research outputs found
Retrieval methods of effective cloud cover from the GOME instrument: an intercomparison
The radiative scattering by clouds leads to errors in the retrieval of column densities and concentration profiles of atmospheric trace gas species from satellites. Moreover, the presence of clouds changes the UV actinic flux and the photo-dissociation rates of various species significantly. The Global Ozone Monitoring Experiment (GOME) instrument on the ERS-2 satellite, principally designed to retrieve trace gases in the atmosphere, is also capable of detecting clouds. Four cloud fraction retrieval methods for GOME data that have been developed are discussed in this paper (the Initial Cloud Fitting Algorithm, the PMD Cloud Recognition Algorithm, the Optical Cloud Recognition Algorithm (an in-house version and the official implementation) and the Fast Retrieval Scheme for Clouds from the Oxygen A-band). Their results of cloud fraction retrieval are compared to each-other and also to synoptic surface observations. It is shown that all studied retrieval methods calculate an effective cloud fraction that is related to a cloud with a high optical thickness. Generally, we found ICFA to produce the lowest cloud fractions, followed by our in-house OCRA implementation, FRESCO, PC2K and finally the official OCRA implementation along four processed tracks (+2%, +10%, +15% and +25% compared to ICFA respectively). Synoptical surface observations gave the highest absolute cloud fraction when compared with individual PMD sub-pixels of roughly the same size
Retrieval methods of effective cloud cover for the GOME instrument: an intercomparison
International audienceThe radiative scattering by clouds leads to errors in the retrieval of column densities and concentration profiles of atmospheric trace gas species from satellites. Moreover, the presence of clouds changes the UV actinic flux and the photo-dissociation rates of various species significantly. The Global Ozone Monitoring Experiment (GOME) instrument on the ERS-2 satellite, principally designed to retrieve trace gases in the atmosphere is also capable of detecting clouds. Four cloud fraction retrieval methods for GOME data that have been developed are discussed in this paper (the Initial Cloud Fitting Algorithm, the PMD Cloud Retrieval Algorithm, the Optical Cloud Recognition Algorithm and the Fast Retrieval Scheme for Cloud Observables). Their results of cloud fraction retrieval are compared to each-other and also to synoptic surface observations. It is shown that all studied retrieval methods calculate an effective cloud fraction that is related to a cloud with a high optical thickness. Generally, we found ICFA to produce the lowest cloud fractions, followed by OCRA, then FRESCO and PC2K along four processed tracks (+2%, +10% and +15% compared to ICFA respectively). Synoptical surface observations gave the highest absolute cloud fraction when compared with individual PMD sub-pixels of roughly the same size
Evaluation of SCIAMACHY Level-1 data versions using nadir ozone profile retrievals in the period 2003–2011
Ozone profile retrieval from nadir-viewing satellite instruments operating in
the ultraviolet–visible range requires accurate calibration of
Level-1 (L1) radiance data. Here we study the effects of calibration
on the derived Level-2 (L2) ozone profiles for three versions of
SCanning Imaging Absorption spectroMeter for Atmospheric ChartograpHY
(SCIAMACHY) L1 data: version 7 (v7), version 7 with m-factors
(v7mfac) and version 8 (v8). We retrieve nadir ozone profiles
from the SCIAMACHY instrument that flew on board Envisat using the
Ozone ProfilE Retrieval Algorithm (OPERA) developed at KNMI with a focus on
stratospheric ozone. We study and assess the quality of these profiles and
compare retrieved L2 products from L1 SCIAMACHY data versions from the
years 2003 to 2011 without further radiometric correction. From validation of
the profiles against ozone sonde measurements, we find that the v8 performs
better than v7 and v7mfac due to correction for the scan-angle
dependency of the instrument's optical degradation.
Validation for the years 2003 and 2009 with ozone sondes shows deviations of
SCIAMACHY ozone profiles of 0.8–15 % in the stratosphere
(corresponding to pressure range ∼ 100–10 hPa) and 2.5–100 % in
the troposphere (corresponding to pressure range
∼ 1000–100 hPa), depending on the latitude and the L1 version
used. Using L1 v8 for the years 2003–2011 leads to deviations of
∼ 1–11 % in stratospheric ozone and ∼ 1–45 % in
tropospheric ozone.
The SCIAMACHY L1 v8 data can still be improved upon in the
265–330 nm range used for ozone profile retrieval. The slit function
can be improved with a spectral shift and squeeze, which leads to a few
percent residue reduction compared to reference solar irradiance spectra.
Furthermore, studies of the ratio of measured to simulated reflectance spectra
show that a bias correction in the reflectance for wavelengths below
300 nm appears to be necessary
Ozone ProfilE Retrieval Algorithm (OPERA) for nadir-looking satellite instruments in the UV–VIS
For the retrieval of the vertical distribution of ozone in the
atmosphere the Ozone ProfilE Retrieval Algorithm (OPERA) has been
further developed. The new version (1.26) of OPERA is capable of
retrieving ozone profiles from UV–VIS observations of most nadir-looking satellite instruments like GOME, SCIAMACHY, OMI and
GOME-2. The setup of OPERA is described and results are presented for
GOME and GOME-2 observations. The retrieved ozone profiles are
globally compared to ozone sondes for the years 1997 and 2008. Relative
differences between GOME/GOME-2 and ozone sondes are within the limits
as specified by the user requirements from the Climate Change
Initiative (CCI) programme of ESA (20% in the troposphere,
15% in the stratosphere). To demonstrate the performance of
the algorithm under extreme circumstances, the 2009 Antarctic ozone
hole season was investigated in more detail using GOME-2 ozone
profiles and lidar data, which showed an unusual persistence of the
vortex over the RÃo Gallegos observing station (51° S,
69.3° W). By applying OPERA to multiple instruments,
a time series of ozone profiles from 1996 to 2013 from a single robust
algorithm can be created
Evaluation of the operational Aerosol Layer Height retrieval algorithm for Sentinel-5 Precursor: application to O<sub>2</sub> A band observations from GOME-2A
An algorithm setup for the operational Aerosol Layer Height product
for TROPOMI on the Sentinel-5 Precursor mission is described and
discussed, applied to GOME-2A data, and evaluated with lidar
measurements. The algorithm makes a spectral fit of reflectance at the
O<sub>2</sub> A band in the near-infrared and the fit window runs from
758 to 770 nm. The aerosol profile is parameterised by
a scattering layer with constant aerosol volume extinction coefficient
and aerosol single scattering albedo and with a fixed pressure
thickness. The algorithm's target parameter is the height of this
layer. In this paper, we apply the algorithm to observations from
GOME-2A in a number of systematic and extensive case studies, and we
compare retrieved aerosol layer heights with lidar
measurements. Aerosol scenes cover various aerosol types, both
elevated and boundary layer aerosols, and land and sea surfaces. The
aerosol optical thicknesses for these scenes are relatively
moderate. Retrieval experiments with GOME-2A spectra are used to
investigate various sensitivities, in which particular attention is
given to the role of the surface albedo.
<br><br>
From retrieval simulations with the single-layer model, we learn that
the surface albedo should be a fit parameter when retrieving aerosol
layer height from the O<sub>2</sub> A band. Current uncertainties in
surface albedo climatologies cause biases and non-convergences when
the surface albedo is fixed in the retrieval. Biases disappear and
convergence improves when the surface albedo is fitted, while
precision of retrieved aerosol layer pressure is still largely within
requirement levels. Moreover, we show that fitting the surface albedo
helps to ameliorate biases in retrieved aerosol layer height when the
assumed aerosol model is inaccurate. Subsequent retrievals with
GOME-2A spectra confirm that convergence is better when the surface
albedo is retrieved simultaneously with aerosol parameters. However,
retrieved aerosol layer pressures are systematically low (i.e., layer
high in the atmosphere) to the extent that retrieved values no longer realistically represent actual extinction profiles. When
the surface albedo is fixed in retrievals with GOME-2A spectra,
convergence deteriorates as expected, but retrieved aerosol layer
pressures become much higher (i.e., layer lower in atmosphere). The
comparison with lidar measurements indicates that retrieved aerosol
layer heights are indeed representative of the underlying profile in
that case. Finally, subsequent retrieval simulations with two-layer
aerosol profiles show that a model error in the assumed profile (two
layers in the simulation but only one in the retrieval) is partly
absorbed by the surface albedo when this parameter is fitted. This is
expected in view of the correlations between errors in fit parameters
and the effect is relatively small for elevated layers (less than
100 hPa). If one of the scattering layers is near the
surface (boundary layer aerosols), the effect becomes surprisingly
large, in such a way that the retrieved height of the single layer is above the
two-layer profile.
<br><br>
Furthermore, we find that the retrieval solution, once retrieval
converges, hardly depends on the starting values for the
fit. Sensitivity experiments with GOME-2A spectra also show that
aerosol layer height is indeed relatively robust against inaccuracies
in the assumed aerosol model, even when the surface albedo is not
fitted. We show spectral fit residuals, which can be used for further
investigations. Fit residuals may be partly explained by spectroscopic
uncertainties, which is suggested by an experiment showing the
improvement of convergence when the absorption cross section is scaled
in agreement with Butz et al. (2013) and Crisp et al. (2012), and
a temperature offset to the a priori ECMWF temperature profile is
fitted. Retrieved temperature offsets are always negative and quite
large (ranging between −4 and −8 K), which is not expected
if temperature offsets absorb remaining inaccuracies in meteorological
data. Other sensitivity experiments investigate fitting of stray light
and fluorescence emissions. We find negative radiance offsets and
negative fluorescence emissions, also for non-vegetated areas, but
from the results it is not clear whether fitting these parameters
improves the retrieval.
<br><br>
Based on the present results, the operational baseline for the Aerosol
Layer Height product currently will not fit the surface albedo. The
product will be particularly suited for elevated, optically thick
aerosol layers. In addition to its scientific value in climate
research, anticipated applications of the product for TROPOMI are
providing aerosol height information for aviation safety and improving
interpretation of the Absorbing Aerosol Index
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Attribution of the Arctic ozone column deficit in March 2011
Arctic column ozone reached record low values (∼310 DU) during March of 2011, exposing Arctic ecosystems to enhanced UV-B. We identify the cause of this anomaly using the Oslo CTM2 atmospheric chemistry model driven by ECMWF meteorology to simulate Arctic ozone from 1998 through 2011. CTM2 successfully reproduces the variability in column ozone, from week to week, and from year to year, correctly identifying 2011 as an extreme anomaly over the period. By comparing parallel model simulations, one with all Arctic ozone chemistry turned off on January 1, we find that chemical ozone loss in 2011 is enhanced relative to previous years, but it accounted for only 23% of the anomaly. Weakened transport of ozone from middle latitudes, concurrent with an anomalously strong polar vortex, was the primary cause of the low ozone When the zonal winds relaxed in mid-March 2011, Arctic column ozone quickly recovered
Attribution of the Arctic ozone column deficit in March 2011
Arctic column ozone reached record low values (∼310 DU) during March of 2011, exposing Arctic ecosystems to enhanced UV-B. We identify the cause of this anomaly using the Oslo CTM2 atmospheric chemistry model driven by ECMWF meteorology to simulate Arctic ozone from 1998 through 2011. CTM2 successfully reproduces the variability in column ozone, from week to week, and from year to year, correctly identifying 2011 as an extreme anomaly over the period. By comparing parallel model simulations, one with all Arctic ozone chemistry turned off on January 1, we find that chemical ozone loss in 2011 is enhanced relative to previous years, but it accounted for only 23% of the anomaly. Weakened transport of ozone from middle latitudes, concurrent with an anomalously strong polar vortex, was the primary cause of the low ozone When the zonal winds relaxed in mid-March 2011, Arctic column ozone quickly recovered