Intelligent Smart Farming Using Machine Learning and IoT for Precision Agriculture

Authors

  • Sharad Ghule Sharad institute of Technology, Yadrav, (Ichalkaranji)
  • Prashant Patil Sharad institute of Technology, Yadrav, (Ichalkaranji)

DOI:

https://doi.org/10.70917/ijcisim-2026-3146

Keywords:

IoT, Machine Learning, Smart Agriculture, Crop Prediction, Yield Estimation, Fertilizer Recommendation, ESP32, Soil Moisture Sensor, Weather Forecasting, Image Analysis, Precision Farming, Sustainability, Real-Time Monitoring, LDR Sensor, Gas Sensor, Agriculture Marketplace, Automation, Data-Driven Decision Making, Smart Farming

Abstract

The rapid growth of digital technologies has opened new possibilities for transforming agriculture into a more precise, productive, and sustainable sector. This project, titled “Revolutionizing Farming with Machine Learning and IoT: A Smart Agriculture Approach,” introduces an integrated system that leverages sensor-based monitoring and intelligent machine learning models to support farmers in making informed decisions. The proposed system uses ESP32-driven IoT modules connected with soil moisture sensors, water-level units, temperature–humidity sensors, LDR, gas detectors, and an OLED display to continuously capture real-time field conditions. These sensor readings are processed to monitor crop health, optimize irrigation, and reduce unnecessary resource consumption. Alongside IoT monitoring, the project incorporates machine learning models for crop prediction, yield estimation, fertilizer recommendation, disease detection through image analysis, and weather forecasting. Unlike conventional platforms that rely only on manual soil reports or isolated data inputs, the system offers a unified approach combining automation, analytics, and actionable insights. An additional marketplace module promotes direct farmer-to-consumer interactions, improving transparency and strengthening farmer income. Overall, the project demonstrates how integrating IoT sensing with predictive ML algorithms can significantly improve agricultural productivity, sustainability, and decision-making efficiency while reducing environmental impacts.

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Published

2026-07-14

How to Cite

Sharad Ghule, & Prashant Patil. (2026). Intelligent Smart Farming Using Machine Learning and IoT for Precision Agriculture. International Journal of Computer Information Systems and Industrial Management Applications, 18(7s), 734–745. https://doi.org/10.70917/ijcisim-2026-3146

Issue

Section

Original Articles