Agroteksos
Vol 36 No 1 (2026): Jurnal Agroteksos April 2026

GOOGLE EARTH ENGINE UNTUK ESTIMASI PRODUKSI PADI

Rio Valery Allen (Program Studi Teknologi Mekanisasi Pertanian, Politeknik Pertanian Negeri Payakumbuh)
Muhammad Syahfitra (Program Studi Pengelolaan Perkebunan, Politeknik Pertanian Negeri Payakumbuh)
Romy Aulia (Program Studi Teknologi Rekayasa Komputer, Politeknik Pertanian Negeri Payakumbuh)



Article Info

Publish Date
28 May 2026

Abstract

The increasing global population and the complexity of food security challenges are driving an urgent need for accurate, fast, and large-scale rice production data. This study analyzes the potential of Google Earth Engine (GEE) a cloud computing platform that integrates a petabyte satellite data catalog with planetary-scale analysis capabilities as a primary tool for estimating rice production. The methodology studied focuses on a vegetation index (Normalized Difference Vegetation Index/NDVI)-based approach and a simple linear regression model. A case study in Sleman Regency demonstrates that a regression model can be developed, but critical analysis reveals a very low coefficient of determination (R2). This indicates that the linear vegetation index-based model is only able to explain a small portion of the variability in rice productivity in the field. This finding emphasizes that non-vegetative factors, such as rainfall and soil structure, play a much more significant role than vegetation indices alone can capture. While GEE offers a revolutionary solution to overcome the limitations of conventional methods (time and cost), its effectiveness as an accurate estimation tool is highly dependent on the development of more complex models. Future success requires the integration of multispectral data with multidisciplinary data (e.g., climate and soil). GEE, with its cloud computing architecture, is positioned as a key catalyst for the transition to proactive, data-driven precision agriculture.

Copyrights © 2026






Journal Info

Abbrev

Agroteksos

Publisher

Subject

Agriculture, Biological Sciences & Forestry Biochemistry, Genetics & Molecular Biology Decision Sciences, Operations Research & Management Economics, Econometrics & Finance Social Sciences

Description

Agroteksos merupakan jurnal pertama yang diterbitkan oleh Fakultas Pertanian Universitas Mataram. Agroteksos terdaftar di LIPI dengan p-ISSN (p-ISSN No. 0852-8268) pada 25 Mei 2007, dan e-ISSN (e-ISSN No. 2685-4368) pada 19 Juli 2019, Agroteksos menerbitkan minimal 6 artikel dalam satu edisi yang ...