IoT Based Smart Fluid Flow Meter
DOI:
https://doi.org/10.15662/IJEETR.2026.0802265Keywords:
IoT- Smart Fluid Flow Meter, Flow Measurement, Automation- Real-time Monitoring, Sensor Technology, Industrial IoT, Water ManagementAbstract
Efficient management and monitoring of fluid systems are essential in many sectors such as industrial processes, residential water supply, and agricultural irrigation. With increasing demand for water and other fluid resources, it is important to develop intelligent systems that can monitor fluid consumption accurately and prevent unnecessary wastage. Traditional flow monitoring methods often require manual inspection and lack real-time data analysis capabilities, which can lead to inefficient resource utilization and delayed detection of leaks or abnormal flow conditions. To address these challenges, this project proposes an IoT-based Smart Flow Meter that enables continuous monitoring of fluid flow in pipelines and provides real-time data access through internet connectivity.The proposed system uses a flow sensor to measure the volume and rate of fluid passing through a pipeline. The sensor generates pulses proportional to the flow rate, which are then read and processed by an Arduino UNO microcontroller. The microcontroller calculates the flow rate and total volume of fluid passing through the pipe. This data is then transmitted to a cloud server using Internet of Things (IoT) technology. The integration of IoT allows users to monitor fluid usage remotely through web-based or mobile applications. This remote monitoring capability provides convenience and improves system efficiency by allowing users to access real-time data from anywhere.
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