This Conference reviews smart fish farming systems that demonstrate how complex science and technology can be made easy for application in seafood production systems. In this context, the focus of this Conference is on the use of artificial intelligence (AI) in fish culture. It aims to protect fish farms from sudden shortages by early detection of fish diseases and monitoring and analyzing fish movement in the ponds. This review explores the techniques and implementation of technologies needed to develop intelligent computer management systems to improve commercial aquaculture production. Current artificial intelligence systems provide a methodology for implementing intuitive and inferential management systems. Obtaining more information about the behavior of their fish and moving towards making data-driven decisions to further improve feeding schedules. AI, fisheries sector can develop rapidly, and production can be quadrupled within a short period as it makes aquaculture a less labor-intensive field. can even be used in conserving endangered species of aquatic life forms. Helps greatly in preventing IUU fishing. In aquaculture, wastage of inputs can be managed through AI and cost can be reduced up to 30%. Thus, AI provides complete control over the fish-producing systems with less maintenance and reduced input cost.

Abdelmonaim Fakhry Kamel, M., Kies, F., Patricio R., D., Mohammad Jalil, Z. (2020). Artificial Intelligence use cases in Aquaculture Fisheries Engineering. In ICFAR Congress 2020- Proceeding Book Tehran-Iran. Tehran : Iranian Fisheries Science Research Institute (IFSRI).

Artificial Intelligence use cases in Aquaculture Fisheries Engineering

Kies Fatima
;
2020

Abstract

This Conference reviews smart fish farming systems that demonstrate how complex science and technology can be made easy for application in seafood production systems. In this context, the focus of this Conference is on the use of artificial intelligence (AI) in fish culture. It aims to protect fish farms from sudden shortages by early detection of fish diseases and monitoring and analyzing fish movement in the ponds. This review explores the techniques and implementation of technologies needed to develop intelligent computer management systems to improve commercial aquaculture production. Current artificial intelligence systems provide a methodology for implementing intuitive and inferential management systems. Obtaining more information about the behavior of their fish and moving towards making data-driven decisions to further improve feeding schedules. AI, fisheries sector can develop rapidly, and production can be quadrupled within a short period as it makes aquaculture a less labor-intensive field. can even be used in conserving endangered species of aquatic life forms. Helps greatly in preventing IUU fishing. In aquaculture, wastage of inputs can be managed through AI and cost can be reduced up to 30%. Thus, AI provides complete control over the fish-producing systems with less maintenance and reduced input cost.
paper
Artificial intelligence, fisheries health, Sustainable aquaculture, Aquaculture Fisheries Engineering
English
International Congress of Fisheries and Aquatic Research (ICFAR)
2020
ICFAR Congress 2020- Proceeding Book Tehran-Iran
2020
2020
https://www.researchgate.net/profile/Jalil-Zorriehzahra/publication/346657405_ICFAR_Congress_2020-_Proceeding_Book_Tehran-Iran/links/5fccdc33a6fdcc697be51fcb/ICFAR-Congress-2020-Proceeding-Book-Tehran-Iran.pdf
open
Abdelmonaim Fakhry Kamel, M., Kies, F., Patricio R., D., Mohammad Jalil, Z. (2020). Artificial Intelligence use cases in Aquaculture Fisheries Engineering. In ICFAR Congress 2020- Proceeding Book Tehran-Iran. Tehran : Iranian Fisheries Science Research Institute (IFSRI).
File in questo prodotto:
File Dimensione Formato  
AI.mp4

accesso aperto

Tipologia di allegato: Other attachments
Dimensione 460.6 MB
Formato audio/basic
460.6 MB audio/basic Visualizza/Apri

I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.

Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10281/305135
Citazioni
  • Scopus ND
  • ???jsp.display-item.citation.isi??? ND
Social impact