Climate, Vol. 13, Pages 159: Applications of Machine Learning Methods in Sustainable Forest Management


Climate, Vol. 13, Pages 159: Applications of Machine Learning Methods in Sustainable Forest Management

Climate doi: 10.3390/cli13080159

Authors:
Rogério Pinto Espíndola
Mayara Moledo Picanço
Lucio Pereira de Andrade
Nelson Francisco Favilla Ebecken

Machine learning (ML) has established itself as an innovative tool in sustainable forest management, essential for tackling critical challenges such as deforestation, biodiversity loss, and climate change. Through the analysis of large volumes of data from satellites, drones, and sensors, machine learning facilitates everything from precise forest health assessments and real-time deforestation detection to wildfire prevention and habitat mapping. Other significant advancements include species identification via computer vision and predictive modeling to optimize reforestation and carbon sequestration. Projects like SILVANUS serve as practical examples of this approach’s success in combating wildfires and restoring ecosystems. However, for these technologies to reach their full potential, obstacles like data quality, ethical issues, and a lack of collaboration between different fields must be overcome. The solution lies in integrating the power of machine learning with ecological expertise and local community engagement. This partnership is the path forward to preserve biodiversity, combat climate change, and ensure a sustainable future for our forests.



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Rogério Pinto Espíndola www.mdpi.com