Mamdani fuzzy-based water quality monitoring and control system in vannamei shrimp farming using the internet of things
Qomaruddin M., Riansyah A., Hermawan H.M.
Abstract
Indonesia's vast ocean expanse, spanning two-thirds of its land, is a treasure trove of marine resources, with shrimp being a vital commodity in the country's fisheries exports. To ensure successful shrimp production, maintaining optimal water conditions is paramount, necessitating extensive, large-scale monitoring. Enter our innovative prototype an internet of things (IoT) system designed for comprehensive pond water quality oversight. This smart system monitors crucial parameters like pH, turbidity, temperature, and dissolved solids in vannamei shrimp cultivation. The Mamdani fuzzy approach dynamically adjusts operations in response to changing weather conditions, fine-tuning both pump and windmill speeds. This adaptive methodology significantly improves water quality control, enhancing overall efficiency. Our IoT infrastructure ensures real-time monitoring and control, creating an ideal environment for shrimp cultivation. The Mamdani fuzzy technique’s effectiveness shines in adapting to dynamic environmental shifts. Noteworthy findings underscore the system's ability to automate and elevate pond water quality, promising increased shrimp production. This technology has the potential to revolutionize traditional shrimp farming, particularly in regions like Rembang, by promoting sustainable aquaculture practices.
Approximations of semiring-valued fuzzy sets with applications in new fuzzy structures
Mockor J., Mockor J.
Fuzzy Implementation for Land Spatial Planning
Gernowo R., Kurniadi D., Riansyah A., Suryono, Gernowo R., Kurniadi D., Riansyah A., Suryono
Closure theory for semirings-valued fuzzy sets with applications to new fuzzy structures
Mockor J., Mockor J.
Order-preserving fuzzy transform for singular boundary value problems of polytropic gas flow and sewage diffusion
Jha N., Kritika, Perfilieva I.
HealthEdge: A Machine Learning-Based Smart Healthcare Framework for Prediction of Type 2 Diabetes in an Integrated IoT, Edge, and Cloud Computing System
Hennebelle A., Ismail L., Ismail L., Materwala H.
Integration of IoT and edge cloud computing for smart microgrid energy management in VANET using machine learning
Arul U., Gnanajeyaraman R., Manikandan T., Michael G., Ramesh S., Selvakumar A.
SyRoC: Symbiotic robotics for QoS-aware heterogeneous applications in IoT-edge-cloud computing paradigm
Guo S., Lu H., Ma M., Zeng Z., Zhou Z., Zhu A.
Dynamic IoT service placement based on shared parallel architecture in fog-cloud computing
Li M., Othman Yahya R., Qin M.
Innovative soft computing-enabled cloud optimization for next-generation IoT in digital twins
Feng H., Lv Z., Qiao L.
Dynamic offloading technique for real-time edge-to-cloud computing in heterogeneous MEC–MCC and IoT devices
Akhter M.P., Khan S., Khan S., Masood Z., Zheng J.
Technologies
Susanto E., Pramudita B.A., Hidayat M.A., Al Munawar H.M., Arifiani R.G.A.
2024 5th International Conference on Smart Sensors and Application Shaping the Future of Intelligent Innovation Icssa 2024