Development of Temperature Measurement and Monitoring System on Machine with Thermal Camera AMG8833 based Internet of Things (IoT)
Keywords:
AMG8833 Sensor, Engine Temperature, MonitoringAbstract
Engine temperature monitoring needs to be done to prevent engine overheating. In this study, an engine temperature monitoring system was designed using an AMG8833 thermal camera sensor. This system is equipped with an AMG8833 thermal camera sensor to read temperature values, a Raspberry Pi 3B+ as a controller, a buzzer as an indicator if the temperature is more than 60°C, and a monitor screen as a display. In this study, sensor characterization has been done, so that the optimal measurement distance range of the sensor in measuring engine temperature is 1 cm to 7 cm and a sensor accuracy of 99.88%. The sensor can work well in a temperature range of 30°C to 70°C. In addition, the sensor has a resolution of 1°C. Engine temperature monitoring is conduct through a website-based system. The monitoring system has successfully in detecting the temperature of motorbike engines, car engines, and irons. In addition, the system has succeeded in monitoring the temperature for 24 hours. Based on this, it can be concluded that the system can work properly in monitoring the temperature of engines with IoT-based.
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