Frontiers in Environmental Science (Apr 2023)

Employing the agricultural classification and estimation service (ACES) for mapping smallholder rice farms in Bhutan

  • Timothy Mayer,
  • Timothy Mayer,
  • Biplov Bhandari,
  • Biplov Bhandari,
  • Filoteo Gómez Martínez,
  • Filoteo Gómez Martínez,
  • Kaitlin Walker,
  • Kaitlin Walker,
  • Stephanie A. Jiménez,
  • Stephanie A. Jiménez,
  • Meryl Kruskopf,
  • Meryl Kruskopf,
  • Micky Maganini,
  • Micky Maganini,
  • Aparna Phalke,
  • Aparna Phalke,
  • Tshering Wangchen,
  • Loday Phuntsho,
  • Nidup Dorji,
  • Changa Tshering,
  • Wangdrak Dorji

DOI
https://doi.org/10.3389/fenvs.2023.1137835
Journal volume & issue
Vol. 11

Abstract

Read online

Creating annual crop type maps for enabling improved food security decision making has remained a challenge in Bhutan. This is in part due to the level of effort required for data collection, technical model development, and reliability of an on-the-ground application. Through focusing on advancing Science, Technology, Engineering, and Mathematics (STEM) in Bhutan, an effort to co-develop a geospatial application known as the Agricultural Classification and Estimation Service (ACES) was created. This paper focuses on the co-development of an Earth observation informed climate smart crop type framework which incorporates both modeling and training sample collection. The ACES web application and subsequent ACES modeling software package enables stakeholders to more readily use Earth observation into their decision making process. Additionally, this paper offers a transparent and replicable approach for addressing and combating remote sensing limitations due to topography and cloud cover, a common problem in Bhutan. Lastly, this approach resulted in a Random Forest “LTE 555” model, from a set of 3,600 possible models, with an overall test Accuracy of 85% and F-1 Score of .88 for 2020. The model was independently validated resulting in an independent accuracy of 83% and F-1 Score of .45 for 2020. The insight into the model perturbation via hyperparameter tuning and input features is key for future practitioners.

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