SugarChain: Blockchain technology meets Agriculture -- The case study
and analysis of the Indian sugarcane farming
- URL: http://arxiv.org/abs/2301.08405v1
- Date: Fri, 20 Jan 2023 02:40:57 GMT
- Title: SugarChain: Blockchain technology meets Agriculture -- The case study
and analysis of the Indian sugarcane farming
- Authors: Naresh Kshetri, Chandra Sekhar Bhusal, Dilip Kumar, Devendra Chapagain
- Abstract summary: The overall purpose of our research is to emphasize and motivate the agricultural products and benefit the farmers with the use of blockchain technology.
We have presented our case study and analysis for the Indian sugarcane farming with data collected from farmers.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Not only in our country and Asia, but the agriculture sector is also lagging
all over the world while using new technologies and innovations. Farmers are
not getting the accurate price and compensation of their products because of
several reasons. The intermediate persons or say middlemen are controlling the
prices and product delivery on their own. Due to lack of education,
technological advancement, market knowledge, post-harvesting processes, and
middleman involvement, farmers are always deprived of their actual pay and
efforts. The use of blockchain technology can help such farmers to automate the
process with high trust. We have presented our case study and analysis for the
Indian sugarcane farming with data collected from farmers. The system
implementation, testing, and result analysis has been shown based on the case
study. The overall purpose of our research is to emphasize and motivate the
agricultural products and benefit the farmers with the use of blockchain
technology.
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