Development of Predictive Models Using Applied Statistics for Crop Yield Optimization
DOI:
https://doi.org/10.4238/qkwm5305Abstract
Crop yield optimization has been important in guaranteeing food security and sustainability in the world. The present paper is dedicated to the elaboration of predictive models based on the application of statistical methodology to optimize the yield of crops. Through combining statistical methods, including regression analysis, time series forecasting, and machine learning algorithms, the research will offer sound predictions of crop productivity using different agronomic, environmental, and climatic variables. The models were constructed based on data taken into consideration from a variety of sources, which included past yield data, soil characteristics, weather, and even specific growth measures of crops. The paper provides an emphasis on the relevance of data-driven solutions in the agricultural sector and the possibility of using predictive analytics as a means of providing information that may support the decision-making of farmers and agronomists. These results indicate that a mixture of conventional statistical algorithms and sophisticated machine learning models can be applied to deliver practical results regarding yield forecasts. The effects of the external factors on crop performance (irrigation method, fertilization, and pest control) are also examined in this research. The findings are projected to help in coming up with more effective agricultural methods, decrease wastage, and enhance food security. The paper ends with a discussion of the challenges and future directions of the use of predictive models to optimize crop yields, including the necessity to have real-time data and constantly update the models
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Copyright (c) 2025 Rangegowda R, Himanshu Makhija, Mary Praveena J, Mr. Deepak Kumar Swain, Dr. Malathi H, Dr. D Vijaya Sree, Shilpy Singh (Author)

This work is licensed under a Creative Commons Attribution-ShareAlike 4.0 International License.

