Smart Green House Automated System

Jeevan VaradharajiCSE-CPS, FET JAIN (Deemed-To-Be University), Bengaluru, IndiaJanaki KandasamyCSE-AI, FET JAIN (Deemed-To-Be University), Bengaluru, IndiaHarishAerospace, FET JAIN (Deemed-To-Be University), Bengaluru, IndiaAdwaitha ACSE-AIML, FET JAIN (Deemed-To-Be University), Bengaluru, India

Vol 10 No 5 (2026): Volume 10, Issue 5, May 2026 | Pages: 218-222

International Research Journal of Innovations in Engineering and Technology

OPEN ACCESS | Research Article | Published Date: 12-05-2026

doi Logo doi.org/10.47001/IRJIET/2026.105030

Abstract

Agriculture is undergoing a major technological transformation with the integration of intelligent automation systems aimed at improving productivity, sustainability, and resource efficiency. Traditional farming methods often rely on manual monitoring and fixed operational practices, which can lead to inefficient resource utilization, reduced crop yields, and increased vulnerability to environmental changes. To address these challenges, advanced technologies such as climate-controlled greenhouses, smart irrigation systems, and automated pest detection mechanisms are being increasingly adopted in modern agriculture.

Keywords

Smart Agriculture, Climate-Controlled Greenhouse, Smart Irrigation System, Internet of Things (IoT), Precision Agriculture, Automated Farming, Soil Moisture Sensors, Environmental Monitoring, Machine Learning in Agriculture, Water Resource Management, Sustainable Agriculture, Greenhouse Automation.


Citation of this Article

Jeevan Varadharaji, Janaki Kandasamy, Harish, & Adwaitha A. (2026). Smart Green House Automated System. International Research Journal of Innovations in Engineering and Technology - IRJIET, 10(5), 218-222. Article DOI https://doi.org/10.47001/IRJIET/2026.105030

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