Otutu11 / -Chlorophyll-a-and-Ocean-Productivity-PredictionLinks
An AI-driven project for predicting chlorophyll-a concentration and ocean productivity using remote sensing data, machine learning, and oceanographic parameters. Supports marine ecosystem monitoring, fisheries management, and climate research by enabling accurate, scalable, and timely assessment of primary productivity in global and regional wat…
☆16Updated 3 months ago
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