4.7 Article

Sustainable IoT Solution for Freshwater Aquaculture Management

期刊

IEEE SENSORS JOURNAL
卷 22, 期 16, 页码 16563-16572

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/JSEN.2022.3188639

关键词

Aquaculture; Sensors; Intelligent sensors; Farming; Monitoring; Sensor systems; Temperature sensors; IoT; aquaculture; data analytics; random forest

资金

  1. Government of India, Ministry of Science and Technology, DST SEED Division [SP/YO/2019/1345]

向作者/读者索取更多资源

The impact of global warming has resulted in changing weather patterns and a significant decrease in annual crop production in developing countries like India. To address the difficulties faced by farmers in aquaculture, an IoT-based intelligent monitoring and maintenance system has been proposed.
In recent years, we have seen the impact of global warming on changing weather patterns. The changing weather patterns have shown a significant effect on the annual rainfall. Due to the lack of annual rainfall, developing countries like India have seen a substantial loss in annual crop production. Indian economy largely depends on agro products. To compensate for the economic loss, the Indian government encouraged the farmers to do integrated aquaculture-based farming. Despite government subsidies and training programs, most farmers find it difficult to succeed in aquaculture-based farming. Aquaculture farming needs skills to maintain and monitor underwater environments. The lack of skills for monitoring and maintenance makes the aquaculture business more difficult for farmers. To simplify the pearl farming aquaculture, we have proposed an Internet of Things (IoT)-based intelligent monitoring and maintenance system. The proposed system monitors the water quality and maintains an adequate underwater environment for better production. To maintain an aquaculture environment, we have forecasted the change in water parameters using an ensemble learning method based on random forests (RF). The performance of the RF model compared with the linear regression (LR), support vector regression (SVR), and gradient boosting machine (GBM). The obtained results show that the RF model outperformed the forecast of the DO with 1.428 mean absolute error (MAE) and pH with 0.141 MAE.

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