Blood Pressure Measuring Device for Hypertension Monitoring Based on Internet of Things with E-KTP Authentication

Muhammad Kirana Baiduri, D. Perdana, S. Sussi
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Abstract

Hypertension is a condition when blood pressure values exceed a certain number range. Hypertension can occur complications that can threaten life. Handling and fast detection can be done with the help of the Internet of Things. In this study, designed a device that can detect the risk of hypertension in patients by monitoring the patient’s blood pressure. The accuracy of the systolic value is 96.83 percent and the diastole value of 90.1 percent. The average delay from the device to the firebase for 77.72 ms, 78.89 ms, and 79.34 ms. Then from firebase to the application for 240.23 ms, 241.86 ms, and 242.47 ms. The farther the distance, the higher the delay. The jitter is 124.49 ms from device to Firebase, while from Firebase to the application is 125.62 ms. The throughput is 4,194 bps from Firebase to the application, while from the device to Firebase is 12,543 bps.
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基于E-KTP认证的物联网高血压监测血压测量装置
高血压是一种血压值超过一定数值范围的疾病。高血压可发生危及生命的并发症。在物联网的帮助下,处理和快速检测可以完成。在本研究中,设计了一种可以通过监测患者血压来检测患者高血压风险的装置。其收缩期值和舒张期值的准确率分别为96.83%和90.1%。从设备到firebase的平均延迟分别为77.72 ms、78.89 ms和79.34 ms。然后从firebase到应用程序分别用240.23 ms、241.86 ms和242.47 ms。距离越远,延迟越高。从设备到Firebase的抖动是124.49 ms,而从Firebase到应用程序的抖动是125.62 ms。从Firebase到应用程序的吞吐量为4,194 bps,而从设备到Firebase的吞吐量为12,543 bps。
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