Smart AG – Smart Agriculture using Gen AI


Authors : S.Vasuki; Balamurugan P; Devadharshini B; Dharsini M; Hariselva Vignesh S

Volume/Issue : Volume 10 - 2025, Issue 4 - April


Google Scholar : https://tinyurl.com/4ww8mzzr

Scribd : https://tinyurl.com/pv496jhn

DOI : https://doi.org/10.38124/ijisrt/25apr1578

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Abstract : This project leverages generative AI to revolutionize agricultural practices by integrating advanced data analysis, predictive modeling, and real-time monitoring systems. By analyzing soil characteristics such as pH, moisture content, nutrient levels, and texture, the AI system provides farmers with precise crop recommendations tailored to specific soil conditions, ensuring optimal growth and yield. The system also considers environmental factors like temperature, humidity, and sunlight exposure to further refine crop suggestions. This enables farmers to plan their activities, such as planting, irrigation, and harvesting, more effectively, mitigating the impact of adverse weather conditions. Additionally, the system employs image analysis to detect potential crop diseases early by comparing images of crops with a comprehensive database of known diseases. This early diagnosis facilitates timely interventions, reducing crop losses and ensuring healthy produce. By offering accurate recommendations and predictions, the system helps farmers achieve higher yields and better-quality produce, ensuring a stable food supply and addressing issues of food security. The promotion of sustainable agricultural practices reduces the environmental impact of farming and ensures the long-term viability of agricultural activities. Additionally, the improved productivity and reduced losses lead to higher profits for farmers, contributing to economic growth in the agricultural sector.

Keywords : AI, pH.

References :

  1. J. Avanija,Keerthi Ambati Likitheswari Naraganti Sai Sahith Derangula Tanujasree Nashina. Crop Recommendation System using Antlion Optimization and Decision Tree Algorithm in 2024 3rd International Conference on Applied Artificial Intelligence and Computing, (ICAAIC,2024),27-32.
  2. Md Shahid Ali B , Rohit, R. Roshith, Vinayak Biradar, M.A. Jabbar, Crop Prediction & Fertilizer Recommendation using AODE Algorithm ,2024 IEEE 9th International Conference for Convergence in Technology (I2CT),106-110.
  3. Harsh Verma, Amrit Singh, Sandhya Avasthi, Tanushree Sanwal, AI-Based Agriculture Application for Crop Recommendation and Guidance System for Farmers, 2024 International Conference on Communication, Computer Sciences and Engineering (IC3SE), 90-98.
  4. Sadia Hossain, Nuzhat Noor Islam Prova, Md Rezwane Sadik, Abdullah Al Maruf, AI Based Agriculture Application for Crop Recommendation and Guidance System for Farmers, 2024 International Conference on Smart Systems for applications in Electrical Sciences (ICSSES), 159-162.
  5. Hafiyya R M, Jemsheer Ahmed P, Nabhan P A, Safvan Melethil, Nadhi Mohammed, Muhammed Murshid A P, AI-Enhanced Precision Crop Rotation Management for Sustainable Agriculture, 2024 International Conference on E-mobility, Power Control and Smart Systems (ICEMPS 2024),35-44.
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  7. Ch Srinivasa Akshith Chowdary, S Likith, B S Maya, S V Lokesh, Y Manish, T Asha, Centralized Platform for Sensor Integration and AI Models in Precision Agriculture, 2024 Second International Conference on Networks, Multimedia and Information Technology (NMITCON),77- 85.
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  10. Anurag Jumar Jha, Ashish Kumar Jha, Sujala D. Shetty, Precision Agriculture for Indian Farms using AIOT, (IEEE 2023),23-39.
  11. Poonkuzhali Ramadoss, Vasanth Ananth, M Navaneetha, U Oviya, E -Xpert Bot Guidance and Pest Detection for Smart Agriculture using AI, 2023 IEEE 12th International Conference on Communication Systems and Network Technologies (CSNT),23-39.
  12. Abdulrahman M. Abdulghani, Mokhles M. Abdulghani, Wilbur L. Walters, Khalid H. Abed, Cyber-Physical System Based Data Mining and Processing Toward Autonomous Agricultural Systems, 2022 International Conference on Computational Science and Computational Intelligence (CSCI),27-45.

This project leverages generative AI to revolutionize agricultural practices by integrating advanced data analysis, predictive modeling, and real-time monitoring systems. By analyzing soil characteristics such as pH, moisture content, nutrient levels, and texture, the AI system provides farmers with precise crop recommendations tailored to specific soil conditions, ensuring optimal growth and yield. The system also considers environmental factors like temperature, humidity, and sunlight exposure to further refine crop suggestions. This enables farmers to plan their activities, such as planting, irrigation, and harvesting, more effectively, mitigating the impact of adverse weather conditions. Additionally, the system employs image analysis to detect potential crop diseases early by comparing images of crops with a comprehensive database of known diseases. This early diagnosis facilitates timely interventions, reducing crop losses and ensuring healthy produce. By offering accurate recommendations and predictions, the system helps farmers achieve higher yields and better-quality produce, ensuring a stable food supply and addressing issues of food security. The promotion of sustainable agricultural practices reduces the environmental impact of farming and ensures the long-term viability of agricultural activities. Additionally, the improved productivity and reduced losses lead to higher profits for farmers, contributing to economic growth in the agricultural sector.

Keywords : AI, pH.

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