International Journal of Artificial Intelligence and Machine Learning
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Volume 1, Issue 1, July 2021 | |
Research PaperOpenAccess | |
An optimized machine learning approach for predicting various crop yields |
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Mahender Reddy Sheri1*, Sriman Naini2 and Sai Kiran Thatipamula3 |
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1Otto-Friedrich University of Bamberg, Germany. E-mail: mahendersheri@gmail.com
*Corresponding Author | |
Int. Artif.Intell.&Mach.Learn. 1(1) (2021) 18-23, DOI: https://doi.org/10.51483/IJAIML.1.1.2021.18-23 | |
Received: 24/02/2021|Accepted: 18/06/2021|Published: 05/07/2021 |
Agriculture being the most essential and crucial thing for the mankind as well as for the economy for the countries like India, various crop patterns and their yearly production statistics derives many conclusions for many places where the actual prediction for the crop yield plays a major role with respect to certain factors concerned, in our work we optimize the real time data and use machine learning approaches such as random forest, multilinear regression, normalization and pearsons correlation coefficient for the prediction of yield concerned to the state of Telangana considering the factors such as temperature, humidity, underground water, canals, soil type, season etc. Our model is helpful for more accurate prediction of the yield for different crops for a farmer friendly and profitable cultivation. As the algorithms used are of more supervised and powerful it gives the best results for the user.
Keywords: Machine learning, Crop yield, prediction, Regression, Random forest, Normalization
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