Bayesian Machine Learning for Corn Yield Prediction Using Satellite Imagery and Topographic Data

Hossein Moradi Rekabdarkolaee Co-Author
South Dakota State University
 
Etornam Kunu First Author
 
Etornam Kunu Presenting Author
 
Tuesday, Aug 5: 2:05 PM - 2:20 PM
2420 
Contributed Papers 
Music City Center 
In an era of climate change and growing global food demand, accurate crop yield prediction is pivotal for leveraging advanced technologies to enhance crop management and sustainability. This study compares the prediction performance of several Bayesian Machine Learning method using high-resolution PlanetScope imagery and topographic data. In specific, the Bayesian Linear Regression, Bayesian Random Forest, Bayesian Splines, Bayesian Additive Regression Trees, and Bayesian Neural Network were developed to incorporate uncertainty quantification and achieve enhanced predictive accuracy. Our finding shows that the Bayesian Random Forest outperform the other model in term of crop yield prediction.

Keywords

Bayesian Machine Learning

Topographical Data 

Main Sponsor

Section on Statistical Learning and Data Science