Ashwaq M. Alnemari, Wael M. Elmessery, Péter Szűcs, Mohamed Hamdy Eid, Wael Abdel-Moneim Omar, Atef Fathy Ahmed, Abdallah Elshawadfy Elwakeel
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Building on our previous work with deep deterministic policy gradient (DDPG), we developed a modular neural architecture with species-agnostic and species-specific components. The system was validated across five distinct RAS configurations using three commercially important species: tilapia, rainbow trout, and European sea bass. The framework achieved 87.3% of optimal performance for a new species with just 14 days of adaptation data, a dramatic improvement over traditional approaches. Furthermore, the federated learning implementation enabled continuous, privacy-preserving model improvement across multiple facilities, demonstrating a 23.5% collective performance improvement over individually trained systems. Economic analysis confirmed the framework’s commercial viability, with adaptation costs 76% lower than developing new species-specific systems and a projected return on investment of 4–14 months. This research advances adaptive intelligent systems for aquaculture, offering a scalable and economically viable approach to precision RAS management. By significantly reducing implementation barriers, this work paves the way for wider commercial adoption, supporting the sustainable intensification required to meet global protein demands.</p></div>","PeriodicalId":8122,"journal":{"name":"Aquaculture International","volume":"33 6","pages":""},"PeriodicalIF":2.4000,"publicationDate":"2025-09-26","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"https://link.springer.com/content/pdf/10.1007/s10499-025-02212-4.pdf","citationCount":"0","resultStr":"{\"title\":\"Enhanced transfer learning and federated intelligence for cross-species adaptability in intelligent recirculating aquaculture systems\",\"authors\":\"Ashwaq M. Alnemari, Wael M. 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Building on our previous work with deep deterministic policy gradient (DDPG), we developed a modular neural architecture with species-agnostic and species-specific components. The system was validated across five distinct RAS configurations using three commercially important species: tilapia, rainbow trout, and European sea bass. The framework achieved 87.3% of optimal performance for a new species with just 14 days of adaptation data, a dramatic improvement over traditional approaches. Furthermore, the federated learning implementation enabled continuous, privacy-preserving model improvement across multiple facilities, demonstrating a 23.5% collective performance improvement over individually trained systems. Economic analysis confirmed the framework’s commercial viability, with adaptation costs 76% lower than developing new species-specific systems and a projected return on investment of 4–14 months. 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Enhanced transfer learning and federated intelligence for cross-species adaptability in intelligent recirculating aquaculture systems
Recirculating aquaculture systems (RAS) represent a promising solution for sustainable fish production, but their commercial viability is hampered by a critical barrier: adapting intelligent control systems to new fish species requires extensive, species-specific data collection and lengthy retraining periods (45–60 days). This challenge creates significant economic and operational hurdles for multi-species facilities, limiting their flexibility to adapt to market demands. This study addresses this fundamental limitation by introducing a novel framework that integrates transfer learning and federated intelligence to enable rapid, cost-effective, cross-species adaptation of deep reinforcement learning controllers. Building on our previous work with deep deterministic policy gradient (DDPG), we developed a modular neural architecture with species-agnostic and species-specific components. The system was validated across five distinct RAS configurations using three commercially important species: tilapia, rainbow trout, and European sea bass. The framework achieved 87.3% of optimal performance for a new species with just 14 days of adaptation data, a dramatic improvement over traditional approaches. Furthermore, the federated learning implementation enabled continuous, privacy-preserving model improvement across multiple facilities, demonstrating a 23.5% collective performance improvement over individually trained systems. Economic analysis confirmed the framework’s commercial viability, with adaptation costs 76% lower than developing new species-specific systems and a projected return on investment of 4–14 months. This research advances adaptive intelligent systems for aquaculture, offering a scalable and economically viable approach to precision RAS management. By significantly reducing implementation barriers, this work paves the way for wider commercial adoption, supporting the sustainable intensification required to meet global protein demands.
期刊介绍:
Aquaculture International is an international journal publishing original research papers, short communications, technical notes and review papers on all aspects of aquaculture.
The Journal covers topics such as the biology, physiology, pathology and genetics of cultured fish, crustaceans, molluscs and plants, especially new species; water quality of supply systems, fluctuations in water quality within farms and the environmental impacts of aquacultural operations; nutrition, feeding and stocking practices, especially as they affect the health and growth rates of cultured species; sustainable production techniques; bioengineering studies on the design and management of offshore and land-based systems; the improvement of quality and marketing of farmed products; sociological and societal impacts of aquaculture, and more.
This is the official Journal of the European Aquaculture Society.