Big Data Platform for Smart Aquaculture
References
Bondad-Reantaso, M., Subasinghe, R., & Arthur, J. R. (2020). Health management and biosecurity maintenance in shrimp aquaculture. Aquaculture Reports, 18, 100401.
Cheng, W., Liu, C. H., & Chen, J. C. (2006). The effects of body weight, temperature, salinity, pH, light intensity and ammonia on the ammonia tolerance of white shrimp Litopenaeus vannamei. Aquaculture, 253(1–4), 552–560.
FAO. (2020). Digital technologies in aquaculture: Opportunities, challenges and outlook. FAO Fisheries and Aquaculture Circular No. 1218. https://www.fao.org/documents/card/en/c/ca9046en
FAO. (2021). The State of World Fisheries and Aquaculture 2020. Food and Agriculture Organization.
FAO. (2023). Smart Aquaculture in Southeast Asia: Use of IoT and AI in Monitoring Systems. FAO Fisheries Circular No. 1182.
FAO. (2024). Technical Feasibility Study Reports: Smart Monitoring System for Shrimp Risk Management in Sri Lanka and Peru.
FAO. (2025). Guidelines for Sustainable Aquaculture (GSA). Food and Agriculture Organization.
Funge-Smith, S., & Briggs, M. (2000). Ecosystem perspectives on management of disease in shrimp pond farming. Aquaculture, 191(1-3), 145–161.
Islam, M. M., & Wahid, M. A. (2024). Smart aquaculture analytics: Enhancing shrimp farming in Bangladesh through real-time IoT monitoring and predictive machine learning analysis. Heliyon, 10(1).
Jayanthi, R., et al. (2021). Prediction of White Spot Disease in Shrimp Aquaculture Using Machine Learning Techniques. Aquaculture Reports, 20, 100700.
Molnar, C. (2022). Interpretable Machine Learning. 2nd Edition. Leanpub.
Shinn, A. P., et al. (2018). Asian shrimp production and the economic costs of disease. Asian Fisheries Science, 31S, 29–58.
Suantika, G., et al. (2023). Implementation of automated feeding to improve feed utilization in intensive vannamei shrimp culture. Aquaculture Engineering, 97, 102406.
Tzounis, A., et al. (2017). Internet of Things in agriculture, recent advances and future challenges. Biosystems Engineering, 164, 31–48.
Uddin, M.G., et al. (2022). Predictive modeling for growth and disease resistance in aquaculture. Aquaculture Engineering, 94.
Wang, J., et al. (2025). A review of the application prospects of cloud-edge-end collaborative technology in freshwater aquaculture. Artificial Intelligence in Agriculture, 15(2), 232–251.
World Bank. (2022). Smart Aquaculture in South Asia: Digital Technologies and Impact Assessment.
