A Systematic Review of Current Trends in Artificial Intelligence for Smart Farming to Enhance Crop Yield

Mochammad Haldi Widianto, Mochamad Iqbal Ardimansyah, Husni Iskandar Pohan, Davy Ronald Hermanus

Abstract


Current technology has been widely applied for development, one of which has an Artificial Intelligence (AI) applied to Smart Farming. AI can give special capabilities to be programmed as needed. In cooperation with agricultural systems, AI is part of improving the quality of agriculture. This technology is no stranger to being applied in basic fields such as agriculture. This smart technology is needed to increase crop yields for various regions by utilizing the current trends paper. This is necessary because less land is available for agriculture, and there is a greater need for food sources. Therefore, this systematic review aims to collect the current trends in AI studies for Smart Farming papers using the latest year features from 2018-2022. This paper is handy for researchers and industry in looking for the latest papers on research to enhance crop yields. The authors utilized Preferred Reporting Items for Systematic Reviews and Meta-Analyses (PRISMA) of 534 articles from IEEE, ACM, MDPI, IAES, and ScienceDirect. After going through a careful process, 67 papers were found that were judged according to the criteria. After the authors got some of the current trends, the author has discussed several factors regarding the results obtained to enhance crop yields, such as Weather, Soil, Irrigation, Unmanned Aerial Vehicle (UAV), Pest Control, Weed Control, and Disease Control.


Keywords


Artificial Intelligence (AI), Preferred Reporting Items for Systematic Reviews and Meta-Analyses (PRISMA), Smart Farming

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DOI: https://doi.org/10.18196/jrc.v3i3.13760

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Journal of Robotics and Control (JRC)

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