aquaculture
AQUAIR: A High-Resolution Indoor Environmental Quality Dataset for Smart Aquaculture Monitoring
Sabiri, Youssef, Houmaidi, Walid, Maadi, Ouail El, Chtouki, Yousra
Smart aquaculture systems depend on rich environmental data streams to protect fish welfare, optimize feeding, and reduce energy use. Yet public datasets that describe the air surrounding indoor tanks remain scarce, limiting the development of forecasting and anomaly-detection tools that couple head-space conditions with water-quality dynamics. We therefore introduce AQUAIR, an open-access public dataset that logs six Indoor Environmental Quality (IEQ) variables--air temperature, relative humidity, carbon dioxide, total volatile organic compounds, PM2.5 and PM10--inside a fish aquaculture facility in Amghass, Azrou, Morocco. A single Awair HOME monitor sampled every five minutes from 14 October 2024 to 9 January 2025, producing more than 23,000 time-stamped observations that are fully quality-controlled and publicly archived on Figshare. We describe the sensor placement, ISO-compliant mounting height, calibration checks against reference instruments, and an open-source processing pipeline that normalizes timestamps, interpolates short gaps, and exports analysis-ready tables. Exploratory statistics show stable conditions (median CO2 = 758 ppm; PM2.5 = 12 micrograms/m3) with pronounced feeding-time peaks, offering rich structure for short-horizon forecasting, event detection, and sensor drift studies. AQUAIR thus fills a critical gap in smart aquaculture informatics and provides a reproducible benchmark for data-centric machine learning curricula and environmental sensing research focused on head-space dynamics in recirculating aquaculture systems.
- Africa > Middle East > Morocco (0.25)
- North America > United States (0.04)
- North America > Trinidad and Tobago > Trinidad > Arima > Arima (0.04)
- Europe (0.04)
- Health & Medicine (1.00)
- Food & Agriculture > Agriculture (0.69)
- Food & Agriculture > Fishing (0.47)
- Water & Waste Management > Water Management > Water Supplies & Services (0.37)
Automated Coral Spawn Monitoring for Reef Restoration: The Coral Spawn and Larvae Imaging Camera System (CSLICS)
Tsai, Dorian, Brunner, Christopher A., Lamont, Riki, Nordborg, F. Mikaela, Severati, Andrea, Terry, Java, Jackel, Karen, Dunbabin, Matthew, Fischer, Tobias, Raine, Scarlett
Coral aquaculture for reef restoration requires accurate and continuous spawn counting for resource distribution and larval health monitoring, but current methods are labor-intensive and represent a critical bottleneck in the coral production pipeline. We propose the Coral Spawn and Larvae Imaging Camera System (CSLICS), which uses low cost modular cameras and object detectors trained using human-in-the-loop labeling approaches for automated spawn counting in larval rearing tanks. This paper details the system engineering, dataset collection, and computer vision techniques to detect, classify and count coral spawn. Experimental results from mass spawning events demonstrate an F1 score of 82.4\% for surface spawn detection at different embryogenesis stages, 65.3\% F1 score for sub-surface spawn detection, and a saving of 5,720 hours of labor per spawning event compared to manual sampling methods at the same frequency. Comparison of manual counts with CSLICS monitoring during a mass coral spawning event on the Great Barrier Reef demonstrates CSLICS' accurate measurement of fertilization success and sub-surface spawn counts. These findings enhance the coral aquaculture process and enable upscaling of coral reef restoration efforts to address climate change threats facing ecosystems like the Great Barrier Reef.
- Oceania > Australia > Queensland > Townsville (0.04)
- Oceania > Australia > Queensland > Brisbane (0.04)
AQUA: A Large Language Model for Aquaculture & Fisheries
Narisetty, Praneeth, Kattamanchi, Uday Kumar Reddy, Nimma, Lohit Akshant, Karnati, Sri Ram Kaushik, Kore, Shiva Nagendra Babu, Golamari, Mounika, Nageshreddy, Tejashree
Aquaculture plays a vital role in global food security and coastal economies by providing sustainable protein sources. As the industry expands to meet rising demand, it faces growing challenges such as disease outbreaks, inefficient feeding practices, rising labor costs, logistical inefficiencies, and critical hatchery issues, including high mortality rates and poor water quality control. Although artificial intelligence has made significant progress, existing machine learning methods fall short of addressing the domain-specific complexities of aquaculture. To bridge this gap, we introduce AQUA, the first large language model (LLM) tailored for aquaculture, designed to support farmers, researchers, and industry practitioners. Central to this effort is AQUADAPT (Data Acquisition, Processing and Tuning), an Agentic Framework for generating and refining high-quality synthetic data using a combination of expert knowledge, largescale language models, and automated evaluation techniques. Our work lays the foundation for LLM-driven innovations in aquaculture research, advisory systems, and decision-making tools.
- North America > United States (1.00)
- South America > Chile (0.04)
- Oceania > Australia (0.04)
- Europe (0.04)
- Overview (0.67)
- Research Report (0.51)
A Review of Generative AI in Aquaculture: Foundations, Applications, and Future Directions for Smart and Sustainable Farming
Akram, Waseem, Din, Muhayy Ud, Soud, Lyes Saad, Hussain, Irfan
Generative Artificial Intelligence (GAI) has rapidly emerged as a transformative force in aquaculture, enabling intelligent synthesis of multimodal data, including text, images, audio, and simulation outputs for smarter, more adaptive decision-making. As the aquaculture industry shifts toward data-driven, automation and digital integration operations under the Aquaculture 4.0 paradigm, GAI models offer novel opportunities across environmental monitoring, robotics, disease diagnostics, infrastructure planning, reporting, and market analysis. This review presents the first comprehensive synthesis of GAI applications in aquaculture, encompassing foundational architectures (e.g., diffusion models, transformers, and retrieval augmented generation), experimental systems, pilot deployments, and real-world use cases. We highlight GAI's growing role in enabling underwater perception, digital twin modeling, and autonomous planning for remotely operated vehicle (ROV) missions. We also provide an updated application taxonomy that spans sensing, control, optimization, communication, and regulatory compliance. Beyond technical capabilities, we analyze key limitations, including limited data availability, real-time performance constraints, trust and explainability, environmental costs, and regulatory uncertainty. This review positions GAI not merely as a tool but as a critical enabler of smart, resilient, and environmentally aligned aquaculture systems.
- Asia > Middle East > UAE (0.28)
- Asia > Southeast Asia (0.04)
- Africa (0.04)
- (10 more...)
- Overview (1.00)
- Instructional Material (0.92)
- Research Report > Promising Solution (0.67)
- Research Report > New Finding (0.46)
- South America (0.04)
- Europe > United Kingdom > England > South Yorkshire > Sheffield (0.04)
- Asia > Bangladesh (0.04)
- Africa (0.04)
- Food & Agriculture (0.94)
- Machinery > Industrial Machinery (0.47)
- Water & Waste Management > Water Management > Water Supplies & Services (0.41)
Framework for Robust Localization of UUVs and Mapping of Net Pens
Botta, David, Ebner, Luca, Studer, Andrej, Reijgwart, Victor, Siegwart, Roland, Kelasidi, Eleni
This paper presents a general framework integrating vision and acoustic sensor data to enhance localization and mapping in highly dynamic and complex underwater environments, with a particular focus on fish farming. The proposed pipeline is suited to obtain both the net-relative pose estimates of an Unmanned Underwater Vehicle (UUV) and the depth map of the net pen purely based on vision data. Furthermore, this paper presents a method to estimate the global pose of an UUV fusing the net-relative pose estimates with acoustic data. The pipeline proposed in this paper showcases results on datasets obtained from industrial-scale fish farms and successfully demonstrates that the vision-based TRU-Depth model, when provided with sparse depth priors from the FFT method and combined with the Wavemap method, can estimate both net-relative and global position of the UUV in real time and generate detailed 3D maps suitable for autonomous navigation and inspection purposes.
- Europe > Norway (0.04)
- North America > United States > Virginia (0.04)
- Information Technology > Artificial Intelligence > Vision (0.71)
- Information Technology > Artificial Intelligence > Robots (0.51)
Biology and Technology Interaction: Study identifying the impact of robotic systems on fish behaviour change in industrial scale fish farms
Evjemo, Linn Danielsen, Zhang, Qin, Alvheim, Hanne-Grete, Amundsen, Herman Biørn, Føre, Martin, Kelasidi, Eleni
The significant growth in the aquaculture industry over the last few decades encourages new technological and robotic solutions to help improve the efficiency and safety of production. In sea-based farming of Atlantic salmon in Norway, Unmanned Underwater Vehicles (UUVs) are already being used for inspection tasks. While new methods, systems and concepts for sub-sea operations are continuously being developed, these systems generally does not take into account how their presence might impact the fish. This abstract presents an experimental study on how underwater robotic operations at fish farms in Norway can affect farmed Atlantic salmon, and how the fish behaviour changes when exposed to the robot. The abstract provides an overview of the case study, the methods of analysis, and some preliminary results.
- Research Report > New Finding (0.67)
- Research Report > Experimental Study (0.50)
- Information Technology > Artificial Intelligence > Vision (1.00)
- Information Technology > Artificial Intelligence > Robots (1.00)
3D Water Quality Mapping using Invariant Extended Kalman Filtering for Underwater Robot Localization
Joshi, Kaustubh, Liu, Tianchen, Williams, Alan, Gray, Matthew, Lin, Xiaomin, Chopra, Nikhil
Water quality mapping for critical parameters such as temperature, salinity, and turbidity is crucial for assessing an aquaculture farm's health and yield capacity. Traditional approaches involve using boats or human divers, which are time-constrained and lack depth variability. This work presents an innovative approach to 3D water quality mapping in shallow water environments using a BlueROV2 equipped with GPS and a water quality sensor. This system allows for accurate location correction by resurfacing when errors occur. This study is being conducted at an oyster farm in the Chesapeake Bay, USA, providing a more comprehensive and precise water quality analysis in aquaculture settings.
- North America > United States > Maryland (0.34)
- North America > United States > Virginia (0.24)
- Atlantic Ocean > North Atlantic Ocean > Chesapeake Bay (0.24)
- North America > United States > South Carolina (0.04)
Precision Aquaculture: An Integrated Computer Vision and IoT Approach for Optimized Tilapia Feeding
Hossam, Rania, Heakl, Ahmed, Gomaa, Walid
Traditional fish farming practices often lead to inefficient feeding, resulting in environmental issues and reduced productivity. We developed an innovative system combining computer vision and IoT technologies for precise Tilapia feeding. Our solution uses real-time IoT sensors to monitor water quality parameters and computer vision algorithms to analyze fish size and count, determining optimal feed amounts. A mobile app enables remote monitoring and control. We utilized YOLOv8 for keypoint detection to measure Tilapia weight from length, achieving \textbf{94\%} precision on 3,500 annotated images. Pixel-based measurements were converted to centimeters using depth estimation for accurate feeding calculations. Our method, with data collection mirroring inference conditions, significantly improved results. Preliminary estimates suggest this approach could increase production up to 58 times compared to traditional farms. Our models, code, and dataset are open-source~\footnote{The code, dataset, and models are available upon reasonable request.
- Africa > Middle East > Egypt > Alexandria Governorate > Alexandria (0.04)
- South America > Guyana > North Atlantic Ocean (0.04)
- Europe > Netherlands > North Holland > Amsterdam (0.04)
- (3 more...)
- Food & Agriculture > Fishing (1.00)
- Water & Waste Management > Water Management > Water Supplies & Services (0.35)
"Benefit Game: Alien Seaweed Swarms" -- Real-time Gamification of Digital Seaweed Ecology
Fei, Dan-Lu, Wu, Zi-Wei, Zhang, Kang
"Benefit Game: Alien Seaweed Swarms" combines artificial life art and interactive game with installation to explore the impact of human activity on fragile seaweed ecosystems. The project aims to promote ecological consciousness by creating a balance in digital seaweed ecologies. Inspired by the real species "Laminaria saccharina", the author employs Procedural Content Generation via Machine Learning technology to generate variations of virtual seaweeds and symbiotic fungi. The audience can explore the consequences of human activities through gameplay and observe the ecosystem's feedback on the benefits and risks of seaweed aquaculture. This Benefit Game offers dynamic and real-time responsive artificial seaweed ecosystems for an interactive experience that enhances ecological consciousness.
- Asia > China > Hong Kong (0.05)
- Asia > China > Guangdong Province > Guangzhou (0.04)
- North America > United States > California (0.04)
- North America > Canada > British Columbia (0.04)