PREDICTION THE YIELD OF GRAIN CROPS USING BASIC MACHINE LEARNING ALGORITHMS

Authors

  • Dilmurod Khasanov Tashkent University of Information Technologies named after Muhammad al-Khwarizmi
  • Nodir Rakhimov Tashkent University of Information Technologies named after Muhammad al-Khwarizmi
  • Abdulhakimov Hojiakbar Tashkent University of Information Technologies named after Muhammad al-Khwarizmi

Keywords:

Machine Learning, Root Mean Squared Error, Mean Absolute Error, Mean Squared Error, Linear Regression, Random Forest Regressor, Decision Tree

Abstract

This article presents the development of an AI model and a software tool designed to predict the yield of grain crops using Machine Learning (ML) algorithms and a dataset from kaggle.com. The research focuses on analyzing a variety of environmental, climatic, and agricultural factors that influence crop productivity. By leveraging regression techniques, the model aims to provide accurate yield forecasts based on historical data and real-time inputs. The software tool developed offers a user-friendly interface for farmers and agricultural professionals, enabling them to make informed decisions regarding resource management, crop selection, and harvest planning. The model effectiveness is evaluated through empirical testing such as Root Mean Squared Error (RMSE), Mean Absolute Error (MAE), Mean Squared Error (MSE) highlighting its potential for improving agricultural efficiency and food security.

References

Jaramillo, J.Garzas, A.Redchuk. Numerical association rule mining from a defined schema using the vmo algorithm. Applied Sciences 11(pg.13-16), 2021.

J.Lajus, L.Galarraga, F.Suchanek. Fast and exact rule mining with amie. In: The Semantic Web. Springer International Publishing, Cham . pp. 36–52, 2020.

Elbasi, E.; Zaki, C.; Topcu, A.E.; Abdelbaki, W.; Zreikat, A.I.; Cina, E.; Shdefat, A.; Saker, L. Crop Prediction Model Using Machine Learning Algorithms. Appl. Sci. 2023, 13, 9288. https://doi.org/10.3390/app13169288

Tawseef, A.S.; Tabasum, R.; Faisal, R.L. Towards leveraging the role of machine learning and artificial intelligence in precision agriculture and smart farming. Comput. Electron. Agric. 2022, 198, 107119.

Zhang, Y. Support Vector Machine Classification Algorithm and Its Application. Information Computing and Applications. ICICA 2012. Communications in Computer and Information Science, vol 308. Springer, Berlin, Heidelberg. DOI:10.1007/978-3-642-34041-3_27.

N.Raximov, J.Kuvandikov, D.Khasanov, “The importance of loss function in artificial intelligence”, International Conference on Information Science and Communications Technologies (ICISCT 20222), DOI: 10.1109/ICISCT55600.2022.10146883

Khasanov Dilmurod, Tojiyev Ma’ruf, Primqulov Oybek., “Gradient Descent In Machine”. International Conference on Information Science and Communications Technologies (ICISCT), https://ieeexplore.ieee.org/document/9670169

Oliver Theobald. ¬ Machine Learning for Absolute Beginners. – Scatterplot Press. 2017. pg.43-98.

N.Raximov, B.Esanovna, O.Primkulov. Аxborot tizimlаridа mаntiqiy xulosаlаsh sаmаrаdorligini oshirish yondаshuvi.Algoritmlar va dasturlashning dolzarb muammolari mavzusidagi xalqaro ilmiy-amaliy anjuman Qarshi- 2023 y. –B. 444-447

N.Raximov, O.Primqulov, B.Daminova,“Basic concepts and stages of research development on artificial intelligence”, International Conference on Information Science and Communications Technologies (ICISCT), www.ieeexplore.ieee.org/document/9670085/metrics#metrics

Rahimov Nodir, Khasanov Dilmurod. (2022). The Mathematical Essence Of Logistic Regression For Machine Learning. https://doi.org/10.5281/zenodo.7239169

Ma’ruf Tojiyev, Ravshan Shirinboyev, Jahongirjon Bobolov. Image Segmentation By Otsu Method. International Journal of Contemporary Scientific and Technical Research, (Special Issue), 2023. 64–72, https://zenodo.org/record/7630893

N.Raximov, M.Doshchanova, O.Primqulov, J.Quvondikov. Development of architecture of intellectual information system supporting decision-making for health of sportsmen.// 2022 International Congress on Human-Computer Interaction, Optimization and Robotic Applications (HORA)Prasun Biswas, “Loss function in deep learning and python implementation”(web article), www.towardsdatascience.com, 2021.

Hastie T, Tibshirani R, Friedman JH. The Elements of Statistical Learning: Data Mining, Inference, and Prediction. 2nd ed. New York, NY: Springer; 2009.

Rashid, M.; Bari, B.S.; Yusup, Y.; Kamaruddin, M.A.; Khan, N. A Comprehensive Review of Crop Yield Prediction Using Machine Learning Approaches with Special Emphasis on Palm Oil Yield Prediction. 202

Downloads

Published

2024-10-28

How to Cite

Khasanov, D., Rakhimov, N., & Abdulhakimov , H. (2024). PREDICTION THE YIELD OF GRAIN CROPS USING BASIC MACHINE LEARNING ALGORITHMS . DIGITAL TRANSFORMATION AND ARTIFICIAL INTELLIGENCE, 2(5), 40–46. Retrieved from https://dtai.tsue.uz/index.php/dtai/article/view/v2i57