Smart Green Farm
- 1 April 2020
- conference paper
- conference paper
- Published by Institute of Electrical and Electronics Engineers (IEEE) in 2020 7th International Conference on Electrical and Electronics Engineering (ICEEE)
Abstract
A smart, low-cost and efficient farming system is proposed in this work. Good farm resources management via recent technologies is pursued here in this proposed work such as effective water usage, decreasing human labor, and reducing efforts and errors due to human carelessness. This leads to improve the overall efficiency and work accuracy of the green farm. Smart farming could be realized using modern management technologies to increase the quantity and quality of the farm goods. New available technologies such as sensors for water and temperature could be used in this sort of works. In addition to the advanced microcontrollers that could give precise data management about the farm. Also, solar cells technologies for clean and saving used power in the green farm. This proposed smart, cheap, and accurate farming system could be a good solution for current agriculture challenges.Keywords
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