A Review on Forecasting Agricultural Demand and Supply with Crop Price Estimation Using Machine Learning Methodologies
DOI:
https://doi.org/10.32628/CSEIT2173169Keywords:
Supervised Learning, Random Forest, K Neareset Neighbor, crop yield prediction, machine learning classifiers.Abstract
Agriculture plays a vital role in Indian economy. It contributes 18% of total India’s GDP. In India, most of the crops are solely dependent upon weather conditions. Hence, more yield of crops can be achieved by analyzing agro-climate data using machine learning techniques. Machine learning (ML) is a crucial perspective for acquiring real-world and operative solution for crop yield issue. From a given set of predictors, ML can predict a target/outcome by using Supervised Learning. To get the desired outputs need to generate a suitable function by set of some variables which will map the input variable to the aim output. Crop yield prediction incorporates forecasting the yield of the crop from past historical data which includes factors such as temperature, humidity, ph, rainfall, crop name. It gives us an idea for the finest predicted crop which will be cultivate in the field weather conditions. These predictions can be done by a machine learning algorithm called Random Forest. It will attain the crop prediction with best accurate value. The algorithm random forest is used to give the best crop yield model by considering least number of models. It is very useful to predict the yield of the crop in agriculture sector.
References
- S. Apipattanavis, F. Bert, G. Podest´a, and B. Rajagopalan, “Linking weather generators and crop models for assessment of climate forecast outcomes,” Agricultural and forest meteorology, vol. 150, no. 2, pp. 166–174, 2010.
- Priya, P., Muthaiah, U., Balamurugan, M. International Journal of Engineering Sciences Research Technology Predicting Yield of the Crop Using Machine Learning Algorithm.
- Mishra, S., Mishra, D., Santra, G. H. (2016). Applications of machine learning techniques in agricultural crop production: a review paper.Indian J. Sci. Technol,9(38), 1-14.
- Manjula, E., Djodiltachoumy, S. (2017). A Model for Prediction of Crop Yield.International Journal of Computational Intelligence and Informatics,6(4), 2349-6363.
- Dahikar, S. S., Rode, S. V. (2014). Agricultural crop yield prediction using artificial neural network approach.International journal of innovative research in electrical, electronics, instrumentation and control engineering,2(1), 683-686.
- M.R. Bendre, R.C. T hool, V.R. Thool, “Big Data in Precision agriculture”, Sept, 2015 NGCT .
- Monali Paul, Santosh K. Vishwakarma, Ashok Verma, “Analysis of Soil Behavior and Prediction of Crop Yield using Data Mining approach”, 2015
- Dr. T . V. Rajini Kanth,Y. Jeevan Nagendra Kumar “GISMAP Based Spatial Analysis of Rainfall Data of Andhra Pradesh and T elangana States Using R”, International Journal of Electrical and Computer Engineering (IJECE), Vol 7, No 1, February 2017, Scopus Indexed Journal, ISSN: 2088-8708
- M. Paul, S. K. Vishwakarma, and A. Verma, “Analysis of soil behavior and prediction of crop yield using data mining approach,” in 2015 International Conference on Computational Intelligence and Communication Networks (CICN). IEEE, 2015, pp. 766–771.
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