The Use of Artificial Intelligence in Sturgeon Aquaculture
Dragos Sebastian Cristea (),
Alexandru Gavrila,
Stefan Mihai Petrea,
Dan Munteanu,
Sofia David and
Catalin Octavian Manescu
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Dragos Sebastian Cristea: Dunarea de Jos University of Gala?i, Romania
Stefan Mihai Petrea: Dunarea de Jos University of Gala?i, Romania
Dan Munteanu: Dunarea de Jos University of Gala?i, Romania
Sofia David: Dunarea de Jos University of Gala?i, Romania
Catalin Octavian Manescu: Bucharest University of Economic Studies, Romania
The AMFITEATRU ECONOMIC journal, 2024, vol. 26, issue 67, 957
Abstract:
This paper presents the experience and lessons learned in a pilot project aimed at integrating artificial intelligence (AI) technologies in sturgeon aquaculture. The project used convolutional neural networks and visual intelligence for the evaluation of fish biomass and the optimisation of sturgeon rearing technologies in integrated multitrophic production systems. Similar solutions have been used before to determine the biomass of other fish species, but this is the first documentation of the application of such a solution for sturgeons. The application challenges were significant, which was determined by the special morphological peculiarities of the sturgeons (shape, way of swimming, their dimensions). Both YOLACT technology and a computer vision context were tested using LAB and HSV colour spaces to estimate fish biomass based on imaging data. It was found that the LAB colour space provided superior results in terms of precision and efficiency, but maximum accuracy was achieved using convolutional neural networks (YOLACT). The analysis of the project results confirms the significant advantages of using the AI system for biomass monitoring, advantages consisting of the reduction of unit costs with labour and feed, improvement of water quality, active optimisation of sturgeon growing conditions. In this way, conditions are created for the sustainable growth of sturgeon production, both for consumption and for the restocking of various aquatic ecosystems with brood. It also proves that the large-scale implementation of AI-based technologies in the fisheries industry can make an important contribution to the achievement of Romania s National Multiannual Aquaculture Strategic Plan 2022-2030, as well as to the implementation of the European Union s strategies on food security and biodiversity.
Keywords: artificial intelligence; deep learning; fishery industry; process optimisation; sustainability (search for similar items in EconPapers)
JEL-codes: O31 Q01 Q22 (search for similar items in EconPapers)
Date: 2024
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Persistent link: https://EconPapers.repec.org/RePEc:aes:amfeco:v:26:y:2024:i:67:p:957
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