Predicting Crop Losses using Machine Learning

Predicting Crop Losses using Machine Learning

A new study co-authored by James M. Warner from IFPRI, Predicting high-magnitude, low-frequency crop losses using machine learning: an application to cereal crops in Ethiopia, proposed a data fusion method combining remotely sensed data with agricultural survey data using machine learning algorithms to improve the accuracy and resolution of crop loss predictions.

Impact of Land Cover Change on Ecosystem Services

Impact of Land Cover Change on Ecosystem Services

Himlal Baral and Sunil Sharma from CIFOR co-authored a paper, Impact of Land Cover Change on Ecosystem Services in a Tropical Forested Landscape, where the authors used the satellite remote sensing data to detect the land use and land cover changes in Nepal and estimated the economic loss of ecosystem services between 2001 and 2016.