Technol Health Care. 2024;32(4):2837-2846. doi: 10.3233/THC-240167.
Incubators, especially the ones for babies, require continuous monitoring for anomaly detection and taking action when necessary.
This study aims to introduce a system in which important information such as temperature, humidity and gas values being tracked from incubator environment continuously in real-time.
Multiple sensors, a microcontroller, a transmission module, a cloud server, a mobile application, and a Web application were integrated Data were made accessible to the duty personnel both remotely via Wi-Fi and in the range of the sensors via Bluetooth Low Energy technologies. In addition, potential emergencies were detected and alarm notifications were created utilising a machine learning algorithm. The mobile application receiving the data from the sensors via Bluetooth was designed such a way that it stores the data internally in case of Internet disruption, and transfers the data when the connection is restored.
The obtained results reveal that a neural network structure with sensor measurements from the last hour gives the best prediction for the next hour measurement.
The affordable hardware and software used in this system make it beneficial, especially in the health sector, in which the close monitoring of baby incubators is vitally important.
婴儿保育箱等设备需要持续监测异常情况,并在必要时采取行动。
本研究旨在引入一种系统,实时连续跟踪保育箱环境中的温度、湿度和气体值等重要信息。
本系统集成了多个传感器、微控制器、传输模块、云服务器、移动应用程序和 Web 应用程序。通过 Wi-Fi 远程和蓝牙低能技术在传感器范围内为值班人员提供数据访问。此外,利用机器学习算法检测潜在的紧急情况并创建报警通知。接收传感器数据的移动应用程序通过蓝牙进行设计,以便在网络中断时内部存储数据,并在连接恢复时传输数据。
研究结果表明,使用上一小时的传感器测量值的神经网络结构对下一小时的测量值进行最佳预测。
该系统使用的硬件和软件价格实惠,尤其在医疗保健领域具有优势,在该领域,对婴儿保育箱的密切监测至关重要。