Prediction Model of Aqua Fisheries Using IoT Devices
Md. Monirul Islam

TL;DR
This paper presents an IoT-based water quality monitoring system for aquaculture, utilizing sensors and machine learning to assess pond suitability for fish farming with high accuracy.
Contribution
It introduces a novel IoT framework with sensor data analysis and machine learning for real-time aquaculture pond assessment, achieving high classification accuracy.
Findings
Three ponds were suitable for fish farming based on water quality standards.
Random Forest achieved 94.42% accuracy in classifying pond suitability.
The system effectively integrates IoT sensors and ML for aquaculture monitoring.
Abstract
Aquaculture involves cultivating marine and freshwater organisms, with real-time monitoring of aquatic parameters being crucial in fish farming. This thesis proposes an IoT-based framework using sensors and Arduino for efficient monitoring and control of water quality. Different sensors including pH, temperature, and turbidity are placed in cultivating pond water and each of them is connected to a common microcontroller board built on an Arduino Uno. The sensors read the data from the water and store it as a CSV file in an IoT cloud named Thingspeak through the Arduino Microcontroller. In the experimental part, we collected data from 5 ponds with various sizes and environments. After getting the real-time data, we compared these with the standard reference values. As a result, we can make the decision about which ponds are satisfactory for cultivating fish and what is not. After that,…
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Taxonomy
TopicsWater Quality Monitoring Technologies
