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MACHINE LEARNING-DRIVEN PADDY YIELD PREDICTION: COMPARATIVE EVALUATION OF BASELINE VS. ENSEMBLE MODELS IN UDHAM SINGH NAGAR, UTTARAKHAND

https://doi.org/10.55452/1998-6688-2026-23-2-290-311

Abstract

Rice is a cornerstone of food security in India, supporting millions of livelihoods and the national economy. However, erratic climate patterns are making paddy yields increasingly unpredictable. This study develops a machine learning framework for rice yield prediction in Udham Singh Nagar district, Uttarakhand, by integrating weather, soil, and crop data. Among baseline classifiers, CatBoost performed best with 80.85% accuracy and a ROC-AUC of 0.90. To further enhance performance, Optuna-tuned CatBoost, XGBoost, and LightGBM models were combined into hybrid ensembles. The Weighted Hard Voting classifier, giving higher weight to CatBoost ([3,1,1]), achieved the highest accuracy of 97.37%, followed by Stacking (95.6%) and Soft Voting ensembles (up to 96%). These results were supported by strong ROC-AUC scores. Overall, the study shows that carefully optimized ensemble models can significantly improve yield prediction accuracy, offering a practical tool for more precise and sustainable rice farming in climate-sensitive regions of India.

About the Authors

M. Kulyal
Soban Singh Jeena University
India

Department of Computer Science.

Almora-263601, Uttarakhand



. Umang
Kumaun University
India

Dr. Department of Computer Applications.

Nainital, Uttarakhand



P. Saxena
Soban Singh Jeena University
India

Dr. Department of Computer Science.

Almora-263601, Uttarakhand



J. Pant
Graphic Era Hill University
India

Dr. Department of Computer Science and Engineering.

Bhimtal Campus, Uttarakhand



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Review

For citations:


Kulyal M., Umang , Saxena P., Pant J. MACHINE LEARNING-DRIVEN PADDY YIELD PREDICTION: COMPARATIVE EVALUATION OF BASELINE VS. ENSEMBLE MODELS IN UDHAM SINGH NAGAR, UTTARAKHAND. Herald of the Kazakh-British Technical University. 2026;23(2):290-311. https://doi.org/10.55452/1998-6688-2026-23-2-290-311

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ISSN 1998-6688 (Print)
ISSN 2959-8109 (Online)