AN AUTOMATED FEED MANAGEMENT SYSTEM FOR HIGH-DENSITY CATFISH AQUACULTURE USING ACOUSTIC SENSORS AND MACHINE LEARNING

Mai Kamal (1), Mona Abdallah (2), Tamer Youssef (3)
(1) The German University in Cairo, Egypt,
(2) Alexandria University, Egypt,
(3) Helwan University, Egypt

Abstract

The rapid expansion of high-density catfish aquaculture has increased the demand for efficient and precise feed management systems to optimize growth performance, reduce feed waste, and maintain water quality. Conventional feeding practices largely depend on fixed schedules and visual estimation, which often result in overfeeding or underfeeding, leading to increased production costs and environmental degradation. Recent advances in sensing technologies and artificial intelligence offer new opportunities to transform aquaculture management through data-driven and automated approaches. The purpose of this study is to develop and evaluate an automated feed management system for high-density catfish aquaculture by integrating acoustic sensors and machine learning algorithms. The system aims to accurately detect feeding activity and dynamically regulate feed delivery based on real-time fish behavior. This study employed a research and development design combined with experimental field testing. Acoustic sensors were deployed in catfish ponds to capture underwater sound patterns associated with feeding behavior. The collected acoustic data were processed using machine learning models to classify feeding intensity and determine optimal feeding duration. System performance was evaluated through accuracy testing, feed efficiency analysis, and comparative assessment against conventional feeding methods. The results show that the proposed system successfully identified feeding activity with high classification accuracy and significantly reduced feed waste compared to manual feeding practices. Feed conversion ratios improved, and water quality indicators remained more stable due to reduced excess feed accumulation. In conclusion, the automated feed management system demonstrates strong potential as an intelligent aquaculture solution for high-density catfish farming. By integrating acoustic sensing and machine learning, the system enhances feeding precision, supports sustainable aquaculture practices, and contributes to increased productivity and environmental efficiency.

Full text article

Generated from XML file

References

Aït Kaddour, A., Makmuang, S., Musa, N., & Hassoun, A. (2026). Chapter 7—Smart sensors and remote sensing for seafood. In A. Hassoun & J. Lerfall (Eds.), Seafood 4.0 (pp. 171–198). Elsevier. https://doi.org/10.1016/B978-0-443-33750-5.00018-4

Akram, W., Din, M. U., Saad Saoud, L., & Hussain, I. (2026). A review of generative AI in aquaculture: Applications, case studies and challenges for smart and sustainable farming. Aquacultural Engineering, 112, 102637. https://doi.org/10.1016/j.aquaeng.2025.102637

Benjamin, Z., Najmeh, T., & Shariati, M. (2024). Applications of Artificial Intelligence in Weather Prediction and Agricultural Risk Management in India. Agriculturae Studium of Research, 1(1), 15–27. https://doi.org/10.55849/agriculturae.v1i1.172

Bernal-Higuita, F., Acosta-Coll, M., Ballester-Merelo, F., & De-la-Hoz-Franco, E. (2023). Implementation of information and communication technologies to increase sustainable productivity in freshwater finfish aquaculture – A review. Journal of Cleaner Production, 408, 137124. https://doi.org/10.1016/j.jclepro.2023.137124

Biazi, V., & Marques, C. (2023). Industry 4.0-based smart systems in aquaculture: A comprehensive review. Aquacultural Engineering, 103, 102360. https://doi.org/10.1016/j.aquaeng.2023.102360

Bouzembrak, Y., & Marvin, H. (2026). Chapter 4—Big data in the seafood supply chain. In A. Hassoun & J. Lerfall (Eds.), Seafood 4.0 (pp. 79–104). Elsevier. https://doi.org/10.1016/B978-0-443-33750-5.00003-2

Cai, W., Liu, Z., Zhang, M., & Wang, C. (2023). Cooperative Artificial Intelligence for underwater robotic swarm. Robotics and Autonomous Systems, 164, 104410. https://doi.org/10.1016/j.robot.2023.104410

Chen, Z., Feng, R., Zhou, Q., Zhang, X., Fan, Y., Fang, D., Zheng, R., Zhang, W., Lu, Z., Chen, J., Zhang, Q.-W., Jiang, C., Li, P., Yu, H., & Li, G. (2026). Biomaterials and biosensing technologies in the detection and removal of pesticide residues: Current trends and future prospects. Coordination Chemistry Reviews, 547, 217110. https://doi.org/10.1016/j.ccr.2025.217110

Chong, J. W. R., Khoo, K. S., Chew, K. W., Ting, H.-Y., & Show, P. L. (2023). Trends in digital image processing of isolated microalgae by incorporating classification algorithm. Biotechnology Advances, 63, 108095. https://doi.org/10.1016/j.biotechadv.2023.108095

Concepcion, R., Cruz-Abeledo, C. C. V., Estropia, I., Relano, R.-J., Nicolas, J., Valencia, I. J., Alejandrino, J., Mayol, A. P., Dadios, E., & Duarte, B. (2026). From reef ecology to industry 4.0: Strategic, smart and sustainable framework for crown-of-thorns starfish outbreak management. Ecological Informatics, 93, 103576. https://doi.org/10.1016/j.ecoinf.2025.103576

Dao, N.-N., Tu, N. H., Thanh, T. T., Bao, V. N. Q., Na, W., & Cho, S. (2023). Neglected infrastructures for 6G—Underwater communications: How mature are they? Journal of Network and Computer Applications, 213, 103595. https://doi.org/10.1016/j.jnca.2023.103595

Derk, K., Nathan, S., & Jonathan, O. (2024). The Role of Biotechnology in Plant Breeding for Sustainable Agriculture in Brazil. Agriculturae Studium of Research, 1(1), 41–55. https://doi.org/10.55849/agriculturae.v1i1.172

Djandja, O. S., Zhong, X., Yang, J., McIntyre, H., He, Q. S., & Ali, U. (2026). Navigating the blue frontier: A review of machine learning approaches for sustainable marine bioresource utilization. Ecological Informatics, 93, 103549. https://doi.org/10.1016/j.ecoinf.2025.103549

Gharibzahedi, S. M. T., Barba, F. J., Mofid, V., & Altintas, Z. (2023). Chapter 20—Biosensing technology in food production and processing. In A. Barhoum & Z. Altintas (Eds.), Advanced Sensor Technology (pp. 743–824). Elsevier. https://doi.org/10.1016/B978-0-323-90222-9.00023-6

Guilin, X., Jiao, D., & Wang, Y. (2024). The Precision Agriculture Revolution in Asia: Optimizing Crop Yields with IoT Technology. Agriculturae Studium of Research, 1(1), 1–14. https://doi.org/10.55849/agriculturae.v1i1.172

Jiang, F., Selvi, A. R., Li, A., Huang, W., Chen, J., & Ma, Q. (2026). Chapter 19—Geothermal energy technologies. In F. Sher (Ed.), Renewable Energy Technologies (pp. 671–709). Elsevier. https://doi.org/10.1016/B978-0-443-33771-0.00019-8

Kang, T. W., Park, K., & Kim, M. S. (2026). Advances in stimuli-responsive polymers for biomedical and environmental applications. Materials Science and Engineering: R: Reports, 168, 101140. https://doi.org/10.1016/j.mser.2025.101140

Liu, C., Wang, Z., Li, Y., Zhang, Z., Li, J., Xu, C., Du, R., Li, D., & Duan, Q. (2023). Research progress of computer vision technology in abnormal fish detection. Aquacultural Engineering, 103, 102350. https://doi.org/10.1016/j.aquaeng.2023.102350

Machado, E. G., Oliveira de Sá, A., & Melo, W. S. (2026). Distributed measuring systems: A systematic review on technological shifts towards security. Measurement, 120301. https://doi.org/10.1016/j.measurement.2026.120301

Mochiwa, Z. O., Okoye, C. O., Sulemana, H., Ezenwanne, B. C., Olalowo, O. O., & Gao, L. (2026). Research progress in biosensor-based antibiotic detection: Innovative applications, challenges, and sustainable solutions. Microchemical Journal, 221, 116822. https://doi.org/10.1016/j.microc.2026.116822

Napier, T., & Lee, I. (2023). Using mobile-based augmented reality and object detection for real-time Abalone growth monitoring. Computers and Electronics in Agriculture, 207, 107744. https://doi.org/10.1016/j.compag.2023.107744

Pavko ?uden, A. (2023). 24—Sustainability in functional and technical textiles. In S. Maity, K. Singha, & P. Pandit (Eds.), Functional and Technical Textiles (pp. 779–818). Woodhead Publishing. https://doi.org/10.1016/B978-0-323-91593-9.00012-2

Peixoto, S., Takahashi, V. K., Costa Filho, F., Lima, P. C. M., Santos Melo, J. V. dos, Mendonça, M. E. de M., Sánchez-Gendriz, I., & Soares, R. (2026). The noisy eaters: Acoustic characterization of clicks emitted by Penaeus vannamei fed fresh food items and pelletized diet. Aquacultural Engineering, 113, 102675. https://doi.org/10.1016/j.aquaeng.2025.102675

Rogger, T., Jonathan, H., & Lindsey, K. (2024). Smart Fertilization Technology for Agricultural Efficiency in Canada. Agriculturae Studium of Research, 1(1), 56–70. https://doi.org/10.55849/agriculturae.v1i1.172

Sen, K., Dey, S., Ganguly, A., & Rajak, P. (2026). Artificial intelligence in aquaculture: Advancing sustainable fish farming through AI-driven monitoring, optimization, and disease management. Aquaculture, 614, 743602. https://doi.org/10.1016/j.aquaculture.2025.743602

Singh, S. K., Paul, M. C., & Kumar, P. (2026). Emerging trends in the integration of AI technology with FBG and SPR sensors for environmental health monitoring. Materials Science in Semiconductor Processing, 202, 110127. https://doi.org/10.1016/j.mssp.2025.110127

Sivarajaboopathy, R. P., & Krishnakumar, S. (2026). An efficient Corona ring based data collection scheme using wireless sensor networks with Internet of Things for aeration control in smart shrimp aquaculture. Ad Hoc Networks, 182, 104091. https://doi.org/10.1016/j.adhoc.2025.104091

Sridhar, A., Ponnuchamy, M., Kumar, P. S., Kapoor, A., Nguyen Vo, D.-V., & Rangasamy, G. (2023). Digitalization of the agro-food sector for achieving sustainable development goals: A review. Sustainable Food Technology, 1(6), 783–802. https://doi.org/10.1039/d3fb00124e

Su, B., Bjørnson, F. O., Tsarau, A., Endresen, P. C., Ohrem, S. J., Føre, M., Fagertun, J. T., Klebert, P., Kelasidi, E., & Bjelland, H. V. (2023). Towards a holistic digital twin solution for real-time monitoring of aquaculture net cage systems. Marine Structures, 91, 103469. https://doi.org/10.1016/j.marstruc.2023.103469

Takahashi, M., Saccò, M., Kestel, J. H., Nester, G., Campbell, M. A., van der Heyde, M., Heydenrych, M. J., Juszkiewicz, D. J., Nevill, P., Dawkins, K. L., Bessey, C., Fernandes, K., Miller, H., Power, M., Mousavi-Derazmahalleh, M., Newton, J. P., White, N. E., Richards, Z. T., & Allentoft, M. E. (2023). Aquatic environmental DNA: A review of the macro-organismal biomonitoring revolution. Science of The Total Environment, 873, 162322. https://doi.org/10.1016/j.scitotenv.2023.162322

Wan, L., Ma, F., Zhou, J., & Du, C. (2026). Green agriculture enabled by versatile metal-organic frameworks: A review. Journal of Integrative Agriculture. https://doi.org/10.1016/j.jia.2026.01.007

Xia, P., You, H., & Du, J. (2023). Visual-haptic feedback for ROV subsea navigation control. Automation in Construction, 154, 104987. https://doi.org/10.1016/j.autcon.2023.104987

Xie, B., Jin, Y., Faheem, M., Gao, W., Liu, J., Jiang, H., Cai, L., & Li, Y. (2023). Research progress of autonomous navigation technology for multi-agricultural scenes. Computers and Electronics in Agriculture, 211, 107963. https://doi.org/10.1016/j.compag.2023.107963

Zhang, L., Li, B., Sun, X., Hong, Q., & Duan, Q. (2023). Intelligent fish feeding based on machine vision: A review. Biosystems Engineering, 231, 133–164. https://doi.org/10.1016/j.biosystemseng.2023.05.010

Zhang, Q., Wang, S., Zhang, T., Ren, G., Zhang, L., Wang, Y., Zheng, B., Li, J., & Zheng, H. (2026). Toward smart aquaculture: A review of multimodal methods, datasets, and applications from the modality perspective. Computers and Electronics in Agriculture, 240, 111227. https://doi.org/10.1016/j.compag.2025.111227

Authors

Mai Kamal
maikamal@gmail.com (Primary Contact)
Mona Abdallah
Tamer Youssef
Kamal, M., Abdallah, M. ., & Youssef, T. . (2025). AN AUTOMATED FEED MANAGEMENT SYSTEM FOR HIGH-DENSITY CATFISH AQUACULTURE USING ACOUSTIC SENSORS AND MACHINE LEARNING. Techno Agriculturae Studium of Research, 2(6), 321–331. https://doi.org/10.70177/agriculturae.v2i6.2962

Article Details