Implementasi Sistem Pemantauan Batuk dengan Sensor Suara dan Akselerometer Berbasis Internet of Things (IoT)
Implementation of Cough Monitoring System With Sound Sensor and Accelerometer Based on Internet of Thing (IoT)
Abstract
Chronic respiratory diseases, have a significant impact on global health, especially in developing countries. Coughing is a major symptom that plays a role in the diagnosis and transmission of TB. This study aims to design an Internet of Things (IoT)-based cough monitoring tool that can measure sound intensity and body movement acceleration. Sound sensor HH_06.03 is used to measure sound intensity (dB), while MPU6050 accelerometer measures acceleration in X, Y, and Z axes. Data was processed by an ESP32 microcontroller and presented via the Blynk app for real-time monitoring. Overall, during the clinical trial, the average cough frequency for participants with TB was significantly higher, at approximately 8 coughs in 90 seconds, compared to healthy participants, who showed an average of 4 coughs in the same duration, with a characteristic sound intensity of ±80 dB. Average accelerations were recorded at ±1.1 m/s² in the X-axis, ±2.5 m/s² in the Y-axis, and ±3.5 m/s² in the Z-axis. This finding suggests a close relationship between cough intensity and body movement. Coughs with high intensity (above 70 dB) are often accompanied by significant body movements in the Y and Z axes, indicating that loud coughs trigger stronger physical movements.
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- Undergraduate Theses [1300]