India is an Agriculture based country and about 60% of the population depends on agriculture for their living. But there is a substantiable reduction in agricultural production has happened due to unstable climate conditions and global warming. Indian farmers are always lacking the support of advanced technologies for improving and maximizing their yield. If they get explicit information about soil type, nutrients, pH value, changes in climatic factors, previous year yield etc., they can optimize their work and yield. With the advancement of machine learning, big data analytics and cloud computing technologies, the climate and crop yield can be got predicted to the farmers. Prediction of yield in advance can help the farmers to take corrective decisions about fertilization, storage and marketing to increase their production and revenue. A huge number of studies have been conducted worldwide, on agriculture sector for the prediction of crop yield, plant diseases etc. This paper presents a brief study of different researches in India on crop yield prediction based on Machine Learning and deep learning. Most of the researchers used environmental parameters like temperature, rainfall and soil type as the main features for prediction. A number of machine learning algorithms are employed in this field and it is really a complex task to identify the best algorithm. The researchers tried to accurately predict the crop yield and thereby suggesting ways to improve production and efficient use of fertilizers.
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23 May 2023
INTERNATIONAL CONFERENCE ON HUMANS AND TECHNOLOGY: A HOLISTIC AND SYMBIOTIC APPROACH TO SUSTAINABLE DEVELOPMENT: ICHT 2022
17–22 January 2022
Kochi, Kerala, India
Research Article|
May 23 2023
A review of crop yield prediction based on Indian agriculture sector using machine learning Available to Purchase
Deepthi Thomas
Deepthi Thomas
a)
1
Department of Computer Science, Nirmala College
, Muvattupuzha, Kerala, India
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Deepthi Thomas
1,a)
1
Department of Computer Science, Nirmala College
, Muvattupuzha, Kerala, India
AIP Conf. Proc. 2773, 020002 (2023)
Citation
Deepthi Thomas; A review of crop yield prediction based on Indian agriculture sector using machine learning. AIP Conf. Proc. 23 May 2023; 2773 (1): 020002. https://doi.org/10.1063/5.0138745
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