AI-driven multi-source data fusion for algal bloom severity classification in small inland water bodies: Leveraging Sentinel-2, DEM, and NOAA climate data
Ioannis Nasios

TL;DR
This paper presents an AI-based method combining satellite imagery, elevation, and climate data to classify algal bloom severity in small inland water bodies, demonstrating high accuracy and robustness.
Contribution
It introduces a novel ensemble approach integrating remote sensing data with machine learning models for algal bloom classification, enhancing detection accuracy and robustness.
Findings
Tree-based models perform strongly alone
Neural networks improve robustness when combined
Method shows potential for global application
Abstract
Harmful algal blooms are a growing threat to inland water quality and public health worldwide, creating an urgent need for efficient, accurate, and cost-effective detection methods. This research introduces a high-performing methodology that integrates multiple open-source remote sensing data with advanced artificial intelligence models. Key data sources include Copernicus Sentinel-2 optical imagery, the Copernicus Digital Elevation Model (DEM), and NOAA's High-Resolution Rapid Refresh (HRRR) climate data, all efficiently retrieved using platforms like Google Earth Engine (GEE) and Microsoft Planetary Computer (MPC). The NIR and two SWIR bands from Sentinel-2, the altitude from the elevation model, the temperature and wind from NOAA as well as the longitude and latitude were the most important features. The approach combines two types of machine learning models, tree-based models and a…
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Taxonomy
TopicsMarine and coastal ecosystems · Aquatic Ecosystems and Phytoplankton Dynamics · Oil Spill Detection and Mitigation
MethodsBLOOM
