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Ml Algorithms For Iot-Driven Boosted Harvest Endorsements

The Indian economy is heavily reliant on the agricultural sector. The farming industry has the potential to increase in the coming decades. 'The globe has to produce 70% more food in 2050 than 2006 to feed the Earth's expanding population,' states the UN Food and Agriculture Organization. Food consumption is increasing at a high pace, parallel to the rise of the global population. Changes to farming practices are required to bring supply and demand into balance. Identification of suitable crops based on soil properties is a major problem that farmers face. Irregular and traditional soil testing methods further contribute to considerable losses in the agriculture sector. Internet of Things (IoT) and machine learning methodologies will become one of the technological advances to solve this problem. This article proposes a new method “Enhanced Crop Recommendation Sys-tem (ECRS)” for effective crop recommendation to the farmers based on soil properties using the Internet of Things and Machine learning technical advance-ments. In the first stage, The Internet of Things (IoT), with various sensors and actuators, has the potential to revolutionize contemporary farming. It provides insights and detailed data that help farmers determine the optimal conditions for crops to grow. This way, the farmers won’t waste soil and fertilizers, increase the quality and quantity of the crop, water conservation, remote monitoring, and contribute to the overall economic growth. In the second stage, different machine learning algorithms such as Random Forest, XGBoost, Gradient Boosted, Trees, Logistic Regression, Light GBM, Decision Tree, K Nearest Neighbors, and SVM are applied to give crop recommendations based on a dataset from the Kaggle database. This system helps the farmers choose ideal and appropriate crop varieties according to soil characteristics and weather conditions with the help of the Enhanced Crop Recommendation System using the Light GBM algorithm. It also provides suitable crop recommendations via a user-friendly Mobile Application, ‘Crop Recommender’, in the regional language (Telugu). Sensor data will be validated with soil testing laboratory values to determine the accuracy of the IoT system.

Khushwant Singh
Department of Computer Science & Engineering, U.I.E.T, Maharshi Dayanand University
India

Mohit Yadav
Department of Mathematics, University Institute of Sciences, Chandigarh University
India

Fernando Moreira
REMIT, IJP, Universidade Portucalense, Porto & IEETA, Universidade de Aveiro
Portugal