Crop Yield Time-Series Data Prediction Based on Multiple Hybrid Machine Learning Models
Yueru Yan, Yue Wang, Jialin Li, Jingwei Zhang, Xingye Mo

TL;DR
This paper explores the use of multiple hybrid machine learning models, including Random Forest and Bagging Regressor, for accurate crop yield prediction using time-series data across various crops and regions, enhancing decision-making in agriculture.
Contribution
It introduces a comprehensive evaluation of hybrid machine learning models for crop yield prediction, emphasizing the effectiveness of Random Forest and Bagging Regressor in this context.
Findings
Random Forest and Bagging Regressor achieved high prediction accuracy.
The models effectively captured relationships between climatic factors and crop yield.
Time-series analysis improved dynamic forecasting in agricultural management.
Abstract
Agriculture plays a crucial role in the global economy and social stability, and accurate crop yield prediction is essential for rational planting planning and decision-making. This study focuses on crop yield Time-Series Data prediction. Considering the crucial significance of agriculture in the global economy and social stability and the importance of accurate crop yield prediction for rational planting planning and decision-making, this research uses a dataset containing multiple crops, multiple regions, and data over many years to deeply explore the relationships between climatic factors (average rainfall, average temperature) and agricultural inputs (pesticide usage) and crop yield. Multiple hybrid machine learning models such as Linear Regression, Random Forest, Gradient Boost, XGBoost, KNN, Decision Tree, and Bagging Regressor are adopted for yield prediction. After evaluation,…
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Taxonomy
TopicsAdvanced Sensor and Control Systems · Advanced Algorithms and Applications · Remote Sensing and Land Use
