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Winter Wheat Crop Yield Prediction on Multiple Heterogeneous Datasets using Machine Learning (2306.11946v1)
Published 20 Jun 2023 in cs.LG
Abstract: Winter wheat is one of the most important crops in the United Kingdom, and crop yield prediction is essential for the nation's food security. Several studies have employed ML techniques to predict crop yield on a county or farm-based level. The main objective of this study is to predict winter wheat crop yield using ML models on multiple heterogeneous datasets, i.e., soil and weather on a zone-based level. Experimental results demonstrated their impact when used alone and in combination. In addition, we employ numerous ML algorithms to emphasize the significance of data quality in any machine-learning strategy.
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