IoT- Application Based on Control and Monitoring System for Single-Phase Induction Motor
DOI:
https://doi.org/10.15662/IJEETR.2026.0802145Keywords:
IoT, relay actuation, induction mo- tor, fault detection, real-time monitoringAbstract
The system uses the ESP32S microcontroller which supports built in Wi- Fi and Bluetooth, enabling wireless control and real time monitoring of the induction motor. Sensors includ- ing voltage, temperature, and vibration are integrated to con- tinuously monitor the motor and detect faults like overcurrent, overheating, and abnormal vibrations. The Blynk application allows users to remotely view sensor readings, receive alerts, and control various parameters through a mobile device, improving ease of access and responsiveness. Load and voltage control is achieved using components like a relay module, dimmer, and potentiometer, allowing precise adjustment to enhance motor ef- ficiency and protect against voltage fluctuations Designed for both industrial and home applications, the system provides a reliable, smart solution for extending motor life and reducing maintenance through automated protection and monitoring features
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