Abstract

Operational retrievals of tropospheric trace gases from space-borne spectrometers are based on one-dimensional radiative transfer models. To minimize cloud effects, trace gas retrievals generally implement Lambertian cloud models based on radiometric cloud fraction estimates and photon path length corrections. The latter relies on measurements of the oxygen collision pair (O2-O2) absorption at 477 nm or on the oxygen A-band around 760 nm. In reality however, the impact of clouds is much more complex, involving unresolved sub-pixel clouds, scattering of clouds in neighboring pixels and cloud shadow effects, such that unresolved three-dimensional effects due to clouds may introduce significant biases in trace gas retrievals. In order to quantify this impact, we study NO2 as a trace gas example, and apply standard retrieval methods including approximate cloud corrections to synthetic data generated by the state-of-the-art three-dimensional Monte Carlo radiative transfer model MYSTIC. A sensitivity study is performed for simulations including a box-cloud, and the dependency on various parameters is investigated. The most significant bias is found for cloud shadow effects under polluted conditions. Biases depend strongly on cloud shadow fraction, NO2 profile, cloud optical thickness, solar zenith angle, and surface albedo. Several approaches to correct NO2 retrievals under cloud shadow conditions are explored. We find that air mass factors calculated using fitted surface albedo or corrected using the O2-O2 slant column density can partly mitigate cloud shadow effects. However, these approaches are limited to cloud-free pixels affected by surrounding clouds. A parameterization approach is presented based on relationships derived from the sensitivity study. This allows identifying measurements for which the standard NO2 retrieval produces a significant bias, and therefore provides a way to improve the current data flagging approach.

Highlights

  • Satellite observations in the UV and visible spectral ranges are widely used to monitor trace gases in the troposphere

  • In order to quantify this impact, we study NO2 as a trace gas example, and apply standard retrieval methods including approximate cloud corrections to synthetic data generated by the state-of-the-art three-dimensional Monte Carlo radiative transfer model MYSTIC

  • We find that air mass factors calculated using fitted surface albedo or corrected using the O2-O2 slant column density can partly mitigate cloud shadow effects

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Summary

Introduction

Satellite observations in the UV and visible spectral ranges are widely used to monitor trace gases in the troposphere. Trace gas retrieval algorithms rely on cloud property information provided for each ground pixel Such information is important, since clouds have a significant impact on the photon path. In order to correct for the presence of clouds in the trace gas retrievals, several approaches to the cloud retrieval are described in the literature They are based on the determination of the mean photon path in the visible and near-infrared (NIR) bands from analysis of a spectral feature of a well-mixed species. The impact of 1D assumptions has not been well explored in trace gas retrievals from satellite UV-visible sensors, the recent studies by Schwaerzel et al (2020, 2021) demonstrated the importance of 3D effects on airborne and ground-based measurements.

Computation of the tropospheric AMF
Synthetic data
Radiative transfer model settings
NO2 retrieval for 1D clouds
Sensitivity study
Approaches
AMF retrieval using fitted surface albedo
Parameterization approach
Comparison of mitigation strategies for synthetic data
Findings
Conclusions and Outlook
Full Text
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