IoT based Smart Water Quality Prediction for Biofloc Aquaculture
- URL: http://arxiv.org/abs/2208.08866v1
- Date: Wed, 27 Jul 2022 03:00:48 GMT
- Title: IoT based Smart Water Quality Prediction for Biofloc Aquaculture
- Authors: Md. Mamunur Rashid, Al-Akhir Nayan, Md. Obaidur Rahman, Sabrina Afrin
Simi, Joyeta Saha, Muhammad Golam Kibria
- Abstract summary: Biofloc technology in aquaculture transforms the manual into an advanced system that allows the reuse of unused feed by converting them into microbial protein.
The article presented a system that collects data using sensors, analyzes them using a machine learning model, generates decisions with the help of Artificial Intelligence (AI) and sends notifications to the user.
- Score: 1.820324411024166
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Traditional fish farming faces several challenges, including water pollution,
temperature imbalance, feed, space, cost, etc. Biofloc technology in
aquaculture transforms the manual into an advanced system that allows the reuse
of unused feed by converting them into microbial protein. The objective of the
research is to propose an IoT-based solution to aquaculture that increases
efficiency and productivity. The article presented a system that collects data
using sensors, analyzes them using a machine learning model, generates
decisions with the help of Artificial Intelligence (AI), and sends
notifications to the user. The proposed system has been implemented and tested
to validate and achieve a satisfactory result.
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