Abstract

Abstract. The variability of convective cloud spans a wide range of temporal and spatial scales and is of fundamental importance for global weather and climate systems. Datasets from geostationary satellite instruments such as the Spinning Enhanced Visible and Infrared Imager (SEVIRI) provide high-time-resolution observations across a large area. In this study we use data from SEVIRI to quantify the diurnal cycle of cloud top temperature within the instrument's field of view and discuss these results in relation to retrieval biases. We evaluate SEVIRI cloud top temperatures from the new CLAAS-2 (CLoud property dAtAset using SEVIRI, Edition 2) dataset against Cloud-Aerosol Lidar with Orthogonal Polarization (CALIOP) data. Results show a mean bias of +0.44 K with a standard deviation of 11.7 K, which is in agreement with previous validation studies. Analysis of the spatio-temporal distribution of these errors shows that absolute retrieval biases vary from less than 5 K over the southeast Atlantic Ocean up to 30 K over central Africa at night. Night- and daytime retrieval biases can also differ by up to 30 K in some areas, potentially contributing to biases in the estimated amplitude of the diurnal cycle. This illustrates the importance of considering spatial and diurnal variations in retrieval errors when using the CLAAS-2 dataset. Keeping these biases in mind, we quantify the seasonal, diurnal, and spatial variation of cloud top temperature across SEVIRI's field of view using the CLAAS-2 dataset. By comparing the mean diurnal cycle of cloud top temperature with the retrieval bias, we find that diurnal variations in the retrieval bias can be small but are often of the same order of magnitude as the amplitude of the observed diurnal cycle, indicating that in some regions the diurnal cycle apparent in the observations may be significantly impacted by diurnal variability in the accuracy of the retrieval. We show that the CLAAS-2 dataset can measure the diurnal cycle of cloud tops accurately in regions of stratiform cloud such as the southeast Atlantic Ocean and Europe, where cloud top temperature retrieval biases are small and exhibit limited spatial and temporal variability. Quantifying the diurnal cycle over the tropics and regions of desert is more difficult, as retrieval biases are larger and display significant diurnal variability. CLAAS-2 cloud top temperature data are found to be of limited skill in measuring the diurnal cycle accurately over desert regions. In tropical regions such as central Africa, the diurnal cycle can be described by the CLAAS-2 data to some extent, although retrieval biases appear to reduce the amplitude of the real diurnal cycle of cloud top temperatures. This is the first study to relate the diurnal variations in SEVIRI retrieval bias to observed diurnal cycles in cloud top temperature. Our results may be of interest to those in the observation and modelling communities when using cloud top properties data from SEVIRI, particularly for studies considering the diurnal cycle of convection.

Highlights

  • The diurnal and seasonal cycles of cloud top temperature (CTT), driven by changes in solar insolation, are among the strongest and most fundamental modes of variation in the global weather and climate systems

  • By comparing the mean diurnal cycle of cloud top temperature with the retrieval bias, we find that diurnal variations in the retrieval bias can be small but are often of the same order of magnitude as the amplitude of the observed diurnal cycle, indicating that in some regions the diurnal cycle apparent in the observations may be significantly impacted by diurnal variability in the accuracy of the retrieval

  • In this study we evaluated Spinning Enhanced Visible and Infrared Imager (SEVIRI) cloud top temperature data, as retrieved by the NWC SAF/MSGv2012 algorithm and included in the updated CLAAS-2 dataset, against Cloud-Aerosol Lidar with Orthogonal Polarization (CALIOP) and attempted to quantify spatial and diurnal variabilities in retrieval biases

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Summary

Introduction

The diurnal and seasonal cycles of cloud top temperature (CTT), driven by changes in solar insolation, are among the strongest and most fundamental modes of variation in the global weather and climate systems. 3.2 the SEVIRI cloud top temperature data are compared to CALIOP measurements, extending on existing validation analyses in order to consider the implications of spatial and diurnal variations in retrieval bias for the SEVIRI-based diurnal cycles of CTT. Cloud detection is based on a multi-spectral threshold method, applying a variety of threshold tests in different channels, in order to obtain a pixel-resolution cloud mask These tests vary according to conditions such as solar illumination (day, night, and twilight), satellite angle, and surface type (land, ocean, and coast). We validate instantaneous CTT retrievals (as produced by the NWC SAF/MSG algorithm and included in the CLAAS-2 dataset) against CALIOP, in order to investigate the implications of both the spatial and diurnal variability in the retrieval bias for the accurate quantification of diurnal cycles in cloud top temperature. The term “SEVIRI” will be used to refer to this dataset hereafter

Mean cloud top temperature
Evaluation of SEVIRI cloud top temperature retrievals with CALIOP data
Collocation
60 Multi15 multi60 Single 60 Multi60 Multi60 Multi60 Single
Retrieval biases
Diurnal cycle of CTT
Conclusions

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