Abstract

The joint CloudSat–Cloud-Aerosol Lidar and Infrared Pathfinder Satellite Observation (CALIPSO) climatology remains the only dataset that provides a global, vertically-resolved cloud amount statistic. However, data are affected by uncertainty that is the result of a combination of infrequent sampling, and a very narrow, pencil-like swath. This study provides the first global assessment of these uncertainties, which are quantified using bootstrapped confidence intervals. Rather than focusing on a purely theoretical discussion, we investigate empirical data that span a five-year period between 2006 and 2011. We examine the 2B-Geometric Profiling (GEOPROF)-LIDAR cloud product, at typical spatial resolutions found in global grids (1.0°, 2.5°, 5.0°, and 10.0°), four confidence levels (0.85, 0.90, 0.95, and 0.99), and three time scales (annual, seasonal, and monthly). Our results demonstrate that it is impossible to estimate, for every location, a five-year mean cloud amount based on CloudSat–CALIPSO data, assuming an accuracy of 1% or 5%, a high confidence level (>0.95), and a fine spatial resolution (1°–2.5°). In fact, the 1% requirement was only met by ~6.5% of atmospheric volumes at 1° and 2.5°, while the more tolerant criterion (5%) was met by 22.5% volumes at 1°, or 48.9% at 2.5° resolution. In order for at least 99% of volumes to meet an accuracy criterion, the criterion itself would have to be lowered to ~20% for 1° data, or to ~8% for 2.5° data. Our study also showed that the average confidence interval: decreased four times when the spatial resolution increased from 1° to 10°; doubled when the confidence level increased from 0.85 to 0.99; and tripled when the number of data-months increased from one (monthly mean) to twelve (annual mean). The cloud regime arguably had the most impact on the width of the confidence interval (mean cloud amount and its standard deviation). Our findings suggest that existing uncertainties in the CloudSat–CALIPSO five-year climatology are primarily the result of climate-specific factors, rather than the sampling scheme. Results that are presented in the form of statistics or maps, as in this study, can help the scientific community to improve accuracy assessments (which are frequently omitted), when analyzing existing and future CloudSat–CALIPSO cloud climatologies.

Highlights

  • We focus on a particular CloudSat–Cloud-Aerosol Lidar and Infrared Pathfinder Satellite Observation (CALIPSO) data product: the radarlidar geometrical profile “2B-Geometric Profiling (GEOPROF)-LIDAR”, occasionally codenamed “RL-GEOPROF” [10,23]

  • We investigated uncertainties associated with mean cloud amount calculated from joint CloudSat–CALIPSO mission data

  • We found that the magnitude of uncertainty in the CloudSat–CALIPSO 5-year climatology makes it impossible to detect statistically significant changes in cloud amount at most atmospheric levels

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Summary

Introduction

Vertically-resolved cloud amount is essential for understanding Earth’s radiation budget. Cloud radiative forcing varies from positive to negative, depending on cloud properties, and their location in the 3D troposphere [1]. Chepfer et al [2] argue that as the climate warms and clouds adjust to new conditions, the vertical cloud profile will provide a clearer indication of the change than the column-integrated cloud amount. Evidence of this has already been noted by Norris et al [3], who reported a statistically significant increase in cloud top height globally

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