Litcius/Paper detail

Global Cloud Biases in Optical Satellite Remote Sensing of Rivers

Theodore Langhorst, Konstantinos M. Andreadis, George H. Allen

2024Geophysical Research Letters15 citationsDOIOpen Access PDF

Abstract

Abstract Satellite imagery provides a global perspective for studying river hydrology and water quality, but clouds remain a fundamental limitation of optical sensors. Explicit studies of this problem were limited to specific locations or regions. In this study, we characterize the global severity of this limitation by analyzing 22 years of daily satellite cloud cover data and modeled river discharge for a global sample 21,642 river reaches of diverse sizes and climates. Our results show that the bias in observed river discharge is highly organized in space, particularly affecting Tropical and Arctic rivers. Given the fundamental nature of this cloud limitation, optical satellites will always provide a biased representation of river conditions. We discuss several strategies to mitigate bias, including modeling, data fusion, and temporal averaging, yet these methods introduce their own challenges and uncertainties.

Topics & Concepts

Remote sensingCloud computingSatelliteEnvironmental scienceMeteorologyGeologyComputer scienceGeographyAstronomyPhysicsOperating systemRemote Sensing in AgricultureFlood Risk Assessment and ManagementRemote Sensing and LiDAR Applications