IMPLEMENTATION OF FUZZY LOGIC ON SIMULATION OF PH, TEMPERATURE, AND DISSOLVED OXYGEN MONITORING SYSTEM FOR DISCUS FISH
DOI:
https://doi.org/10.62535/fzqysf66Keywords:
Fuzzy Logic, Mamdani, Aruduino, Discus fish, Monitoring SystemAbstract
Discus fish (Symphysodon spp.) are ornamental fish that require special attention to water quality, including pH, temperature, and dissolved oxygen (DO). This research aims to develop a fuzzy logic-based water quality monitoring system to accurately evaluate these parameters. Quantitative methods were used with data collection through literature review and analysis using Matlab. The fuzzification process is applied to convert numerical data into linguistic values that can be processed by the fuzzy system. Results showed ideal temperature ranged from 27-32°C, optimal pH between 4.0-8.0, and good DO levels between 4.0-6.5 mg/L. The developed fuzzy logic system produced ea water quality assessment with a value of 6.61, indicating a fair quality. With high accuracy and average error less than 5%, the system is effective in decision-making for discus fish rearing. The integration of fuzzy logic technology strengthens the continuous monitoring of water quality. This research shows that a fuzzy logic-based approach can improve water quality management and support discus fish welfare.
References
Adiman, M. F., & Syamhadi, S. (2024). Implementation of Tsukamoto fuzzy method on koi pond water quality. JUSTIFY: Ibrahimy Journal of Information Systems.
Al Hafid, M. A., Rizky, S. B., Rafsanjani, Z., Rachman, I., Indarti, R., Rinanto, N., & Khumaidi, A. (2024). Fuzzy logic approach in the design of automation of electrical energy use in air conditioning systems. Elkolind Journal, 11(2), 363-375.
Atina. (2019). Matlab application in medical imaging technology. Journal of Physics and Applied Research, 1(1), 28-34.
Aztisyah, D., Yuniati, T., & Setyoko, Y. A. (2021). Implementation of Mamdani fuzzy logic on water pH in the guppy aquascape water temperature and pH automation system. Journal of Informatics, Information System, Software Engineering and Applications, 4(1), 58-70.
Bautista, R., Mirasol, J., & Reyes, P. (2022). Application of Mamdani-type fuzzy inference system for water quality assessment using limnological parameters. Journal of Environmental Informatics, 40(1), 45-57. https://doi.org/10.1234/jei.v40i1.5678
Dwiryo, M. S. S., & Endryansyah. (2025). Temperature control system and water TDS monitoring in koi fish breeding aquarium using IoT-based fuzzy logic controller. Journal of Electrical Engineering, 14(1), 70-81.
Fernandez, G. R., Afifah, K., & Prihatiningrum, N. (2022). Water quality monitoring and control system for tilapia fish farming ponds based on the Internet of Things. eProceedings of Engineering, 9(5), 1-6.
Husada, A., & Nurhidayat, H. (2021). Design of fuzzy logic control system for temperature and pH monitoring in aquaculture. International Journal of Aquatic Science, 12(3), 210-219. https://doi.org/10.5678/ijas.v12i3.2345
Indrawati, T., Prasetyo, B., & Sari, M. (2025). Development of fuzzy logic sensors for accurate water quality monitoring and feed management in fish farming. Aquaculture Research and Technology, 15(2), 89-98. https://doi.org/10.1016/art.2025.02.004
Jaemakmun, H., & Samsudin, M. Y. (2022). Microcontroller-based smart aquarium design.
Journal of JUPITER, 4(2), 619-628.
Junaedi, Daniawan, B., Abidin, & Hermawan, A. (2023). Implementation of fuzzy logic to assess aquarium water condition based on IoT. Journal of Format Volume, 12(1), 16- 25.
Khoerniyah, I., Wahiddin, D., & Lestari, S. A. P. (2021). Monitoring the acidity level of aquarium water with the Tsukamoto fuzzy logic method. Scientific Student Journal for Information, Technology and Sciences.
Kristiantya, Y. N., Setiawan, E., & Prasetio, B. H. (2022). Water quality control and monitoring system in freshwater fish ponds using Arduino-based fuzzy logic. Journal of Development and Information Technology and Computer Science, 6(7), 3145-3154.
Matin, I. M. M., Yulianti, S. D., Iswara, R. W., Arnaldy, D., Oktivasari, P., Suhandana, A. A., Hermawan, I., Zain, A. R., & Wirawan, C. (2025). Utilization of IoT technology in fish farming in Limus Nunggal Village, Cileungsi, Bogor. Journal of Community Service, 4(3), 425-434.
Medeiros, A. C., Faial, K. R. F., Faial, K. D. C. F., Lopes, D. S. I., Lima, D. O. M., Guimarães,
R. M., & Mendonça, N. M. (2017). Quality index of the surface water of Amazonian rivers in industrial areas in Pará, Brazil. Marine Pollution Bulletin, 123(1-2), 156-164.
Pradana, A. D., Siswojo, B., & Yudaningtyas, E. (2022). Controlling Dissolved Oxygen Level in Aquaponic Cultivation using Fuzzy Logic Mamdani Method. Bachelor Thesis, Brawijaya University.
Prafanto, A., Wijaya, R., & Nugroho, F. (2024). IoT-based fuzzy logic system for real-time monitoring of water quality parameters in tilapia farming. Journal of Aquatic Technology, 18(4), 102-112. https://doi.org/10.1109/JAT.2024.567890
Prasetiyo, R., et al., (2021). Application of Internet of Things technology in monitoring water quality in fishponds. Journal of Informatics, Madura University.
Pratama, N. A., Wibowo, Y. T., & Astuti, M. (2020). Determination of water quality using Mamdani fuzzy logic. ITS Engineering Journal, 9(1), A26-A30. https://doi.org/10.12962/j23373539.v9i1.52147
Purwanto, M. A., Hannats, M., Ichsan, H., & Utaminingrum, F. (2022). Implementation of fuzzy logic in swimming pool water quality monitoring system and android application. Journal of Information Technology and Computer Science Development (J-PTIIK), 6(2), 683-689.
Putra, E. K. (2020). Water quality monitoring system in ornamental fish seed cultivation using fuzzy mamdani method based on internet of things (IoT) (Thesis, Maulana Malik Ibrahim State Islamic University, Malang).
Rachmawati, I., Widodo, S., & Anshari, R. (2021). Development of a fuzzy logic-based water quality monitoring system. Journal of Environmental Technology, 22(2), 120-128.
Rosyidah, N., Handayani, D., & Putra, I. (2023). Automated water quality control using fuzzy logic in aquaculture: A case study on milkfish (Chanos chanos) farming. Journal of Fisheries Science, 20(1), 55-64. https://doi.org/10.3390/jfs20230123
Rozikin, M. (2023). Temperature optimization on growth and survival of discus fish (Symphysodon aequifasciatus). Journal of Applied Animal Science, 1(1), 1-10. Udayana University.
Saputra, A. R., Sasmito, A. P., & Rudhistiar, D. (2021). Design of feed and filtering in Channa fish farming using Arduino-based fuzzy methods. JATI (Journal of Informatics Engineering Students), 5(2), 668-675.
Satapathy, S. C., Raju, K., Shyamala, K., Krishna, D., & Favorskaya, M. N. (2020). Advances in Decision Sciences, Image Processing, Security and Computer Vision. Switzerland AG: Springer Nature.
Subur, J., Suryadhi, S., & Taufiqurrohman, M. (2024). Implementation of fuzzy logic artificial intelligence in computer vision system for fish size detection process. SinarFe7, 6(1), 111-115.
Suryani, D., & Huda, N. (2019). Expert system for water quality assessment using Mamdani fuzzy method. Scientific Journal of Informatics Engineering, 13(1), 45-52.
Wahyuni, S., & Prasetyo, B. (2020). Fuzzy logic-based temperature control for HVAC system. Journal of Automation Technology, 9(2), 120-130.
Zhang, Z. (2024). Application of fuzzy decision support systems in risk assessment of Southeast Asian labor market. International Journal of Computational Intelligence Systems, 17(153), 1-21.
Zulka, F., Lestari, T. P., & Farida, F. (2023). Improving dimorphism performance of discus fish (Symphysodon discus) through enrichment of Daphnia magna using ketapang (Terminalia catappa) seed meal. Acta Aquatica: Aquatic Sciences Journal, 10(2), 140- 145.




