Impact of economic indicators on rice production: A machine learning approach in Sri Lanka.

Journal: PloS one
PMID:

Abstract

Rice is a crucial crop in Sri Lanka, influencing both its agricultural and economic landscapes. This study delves into the complex interplay between economic indicators and rice production, aiming to uncover correlations and build prediction models using machine learning techniques. The dataset, spanning from 1960 to 2020, includes key economic variables such as GDP, inflation rate, manufacturing output, population, population growth rate, imports, arable land area, military expenditure, and rice production. The study's findings reveal the significant influence of economic factors on rice production in Sri Lanka. Machine learning models, including Linear Regression, Support Vector Machines, Ensemble methods, and Gaussian Process Regression, demonstrate strong predictive accuracy in forecasting rice production based on economic indicators. These results underscore the importance of economic indicators in shaping rice production outcomes and highlight the potential of machine learning in predicting agricultural trends. The study suggests avenues for future research, such as exploring regional variations and refining models based on ongoing data collection.

Authors

  • Sherin Kularathne
    Faculty of Graduate Studies and Research, Sri Lanka Institute of Information Technology, Malabe, Sri Lanka.
  • Namal Rathnayake
    River and Environmental Engineering Laboratory, Graduate School of Engineering, The University of Tokyo, Bunkyo City, Tokyo, Japan.
  • Madhawa Herath
    Department of Mechanical Engineering, Faculty of Engineering, Sri Lanka Institute of Information Technology, Malabe, Sri Lanka.
  • Upaka Rathnayake
    Department of Civil Engineering and Construction, Faculty of Engineering and Design, Atlantic Technological University, Sligo, Ireland.
  • Yukinobu Hoshino
    School of Systems Engineering, Kochi University of Technology, Kami, Kochi, Japan.