Optimizing Agricultural Outcomes: Machine Learning in Crop Yield Prediction
DOI:
https://doi.org/10.62019/abbdm.v4i4.240Abstract
Digital agriculture is becoming more and more in demand as a result of the quick advancement of information technology. Crop yield has always garnered a lot of interest as a significant problem in agricultural production. At the moment, machine learning and artificial intelligence in general are the most popular methods for predicting agricultural productivity. Consequently, one of the main problems in digital agriculture is creating a machine learning technique that can reliably forecast crop yield. Crop yield prediction has a strong time correlation, in contrast to conventional regression prediction problems. For instance, there are significant temporal correlations in the weather data for every county. Furthermore, crop yield is somewhat impacted by geographic data from various places. For instance, a county is likely to have large yields if its neighbouring countries have a strong harvest. We used models like random forest, decision tree classifier, support vector machine, KNN, and logic regression in this study. With an accuracy score of 99.77%, random forest produced the greatest results out of all of them.

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Copyright (c) 2024 Sana Alam , Asghar Khan, Muhammad Abbas, Abdul Khaliq

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