Otutu11 / Methane-Emissions-Detection-with-Multispectral-SensorsLinks
AI-powered methane detection system using synthetic multispectral data. Trains regression and classification models to estimate methane enhancement and detect leaks, with feature engineering, evaluation metrics, and visual diagnostics for climate-tech applications in greenhouse gas monitoring and environmental sustainability.
☆35Updated 4 months ago
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