Biomedical
Peer Reviewed
A timely and consistent assessment of crop yield will assist the farmers in improving their income, minimizing losses, and deriving strategic plans in agricultural commodities to adopt import-export policies. Crop yield predictions are one of the various challenges faced in the agriculture sector and play a significant role in planning and decision-making. Machine learning algorithms provided enough belief and proved their ability to predict crop yield. The selection of the most suitable crop is influenced by various environmental factors such as temperature, soil fertility, water availability, quality, and seasonal variations, as well as economic considerations such as stock availability, preservation capabilities, market demand, purchasing power, and crop prices. The paper outlines a framework used to evaluate the performance of various machine-learning algorithms for forecasting crop yields. The models were based on a range of prime parameters including pesticides, rainfall and average temperature. The Results of three machine learning algorithms, Categorical Boosting (CatBoost), Light Gradient-Boosting Machine (LightGBM), and eXtreme Gradient Boosting (XGBoost) are compared and found more accurate than other algorithms in predicting crop yields. The RMSE and R
The study aims to develop a framework for assessing the effectiveness of different machine learning algorithms in predicting crop yields, considering factors such as temperature, soil fertility, water availability, and seasonal variations.
The research evaluates the performance of three gradient-based machine learning algorithms: Categorical Boosting (CatBoost), Light Gradient-Boosting Machine (LightGBM), and eXtreme Gradient Boosting (XGBoost). These models were trained using data on pesticides, rainfall, and average temperature to predict crop yields.
The study found that CatBoost, LightGBM, and XGBoost outperformed other algorithms in predicting crop yields, as indicated by their lower Root Mean Squared Error (RMSE) and higher R² values.
Pavithra Mahesh and Rajkumar Soundrapandiyan (2024) developed a framework to evaluate machine learning algorithms for forecasting crop yields. The study demonstrated that CatBoost, LightGBM, and XGBoost are effective in predicting crop yields, considering environmental and economic factors.
Show by month | Manuscript | Video Summary |
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2025 February | 7 | 7 |
2025 January | 100 | 100 |
2024 December | 47 | 47 |
2024 November | 56 | 56 |
2024 October | 23 | 23 |
Total | 233 | 233 |
Show by month | Manuscript | Video Summary |
---|---|---|
2025 February | 7 | 7 |
2025 January | 100 | 100 |
2024 December | 47 | 47 |
2024 November | 56 | 56 |
2024 October | 23 | 23 |
Total | 233 | 233 |