DOI QR코드

DOI QR Code

Research on Regional Smart Farm Data Linkage and Service Utilization

지역 스마트팜 데이터 연계 및 서비스 활용에 대한 연구

  • Won-Goo Lee (Department of Computer Science, Chungnam State University) ;
  • Hyun Jung Koo (Department of Crops and Forestry, Korea National University of Agriculture and Fisheries) ;
  • Cheol-Joo Chae (Department of Liberal Arts, Korea National University of Agriculture and Fisheries)
  • 이원구 (충남도립대학교 컴퓨터공학과) ;
  • 구현정 (국립한국농수산대학교 작물.산림학부) ;
  • 채철주 (국립한국농수산대학교 교양학부)
  • Received : 2024.06.14
  • Accepted : 2024.06.19
  • Published : 2024.06.30

Abstract

To enhance the usability of smart agriculture, methods for utilizing smart farm data are required. Therefore, this study proposes a scheme for utilizing regional smart farm data by linking it to services. The current status of domestic and foreign smart farm data collection and linkage services is analyzed. To collect and link regional smart farm data, necessary data collection, data cleaning, data storage structure and schema, and data storage and linkage systems are proposed. Based on the standards currently being implemented for regional smart farm internal data storage, a farm schema, environmental information schema, facility control information schema, and growth information schema are designed by extending the crop schema and crop main environmental factor information database schema. A data collection and management system structure based on the Hadoop Ecosystem is designed for data collection and management at regional smart farm data centers. Strategies are proposed for utilizing regional smart farm data to provide smart farm productivity improvement and revenue optimization services, image-based crop analysis services, and virtual reality-based smart farm simulation services.

Keywords

References

  1. 김경필, 구자춘 등. 2017. 농림업분야 빅데이터 활용도 제고 방안, 한국농촌경제연구원 연구보고서.
  2. 박지연, 서대석 등. 2021. 농업의 미래 디지털 농업, 한국농촌경제연구원 연구보고서.
  3. 서대석, 김연중 등. 2022. 혁신 성장을 위한 농업 부문 데이터 경제 체계 구축과 활성화 방안, 한국농촌경제연구원 연구보고서.
  4. Baraldi AN, Enders CK. 2010. An introduction to modern missing data analyses. Journal of School Psychology 48(1):5-37.
  5. Doove LL, Van Buuren S, Dusseldorp E. 2014. Recursive partitioning for missing data imputation in the presence of interaction effects. Computational Statistics & Data Analysis 72:92-104.
  6. Malarvizhi R, Thanamani AS. 2012. K-nearest neighbor in missing data imputation. Int. J. Eng. Res. Dev 5(1):5-7.
  7. Stekhoven DJ, Buhlmann P. 2012. MissForest-non-parametric missing value imputation for mixed-type data. Bioinformatics 28(1):112-118.
  8. Yoon J, Jordon J, Schaar M. 2018. Gain: Missing data imputation using generative adversarial nets. In International Conference on Machine Learning 5689-5698.