five

An Embedded IoT Architecture for Continuous Output Pressure Surveillance in Medical Oxygen Concentrators

收藏
Mendeley Data2026-04-09 收录
下载链接:
https://data.mendeley.com/datasets/b668kmn864
下载链接
链接失效反馈
官方服务:
资源简介:
The increasing demand for portable and reliable medical oxygen delivery systems has highlighted the need for continuous monitoring of key performance parameters, particularly output pressure, to ensure patient safety and device efficiency. Traditional oxygen concentrators often lack real-time monitoring capabilities, making it difficult to detect pressure anomalies that may compromise therapeutic effectiveness. To address this limitation, a cost-effective, IoT-enabled monitoring system has been developed. The proposed system integrates a 1.2 MPa atmospheric pressure sensor with an HX710B analog-to-digital converter to accurately measure output pressure levels. An ATmega328 microcontroller processes the data and displays real-time readings on an LCD screen, while an ESP8266 module transmits the information to the Blynk cloud platform for remote access and data logging. This architecture allows healthcare providers and users to receive immediate alerts when pressure deviates from safe thresholds, enabling timely maintenance and minimizing risks. The system demonstrates stable performance, reliable wireless communication, and effective pressure monitoring. Its low cost, ease of integration, and remote accessibility make it well-suited for home healthcare, telemedicine applications, and smart medical device development.

随着便携式且可靠的医用供氧系统需求日益增长,持续监测其关键性能参数(尤其是输出压力)以保障患者安全与设备效能的必要性愈发凸显。传统医用制氧机往往缺乏实时监测功能,难以检测可能影响治疗效果的压力异常情况。为解决这一局限,本研究开发了一款低成本、支持物联网(Internet of Things, IoT)的监测系统。该系统集成了1.2兆帕(MPa)气压传感器与HX710B模数转换器,可精准测量输出压力值。ATmega328微控制器负责处理数据并在液晶显示屏(Liquid Crystal Display, LCD)上显示实时读数,同时ESP8266模块将数据传输至Blynk云平台,以实现远程访问与数据记录。该架构可在压力偏离安全阈值时,向医疗服务提供者与用户发送即时警报,便于及时开展维护工作并降低风险。该系统表现出稳定的运行性能、可靠的无线通信能力与高效的压力监测效果。其低成本、易于集成以及远程可及性的特点,使其非常适用于家庭医疗、远程医疗应用以及智能医疗设备开发场景。
提供机构:
Karunya University; Indian Council of Medical Research
5,000+
优质数据集
54 个
任务类型
进入经典数据集
二维码
社区交流群

面向社区/商业的数据集话题

二维码
科研交流群

面向高校/科研机构的开源数据集话题

数据驱动未来

携手共赢发展

商业合作