C. I. Nwakanma, F. Islam, Mareska Pratiwi Maharani, Dong-Seong Kim, Jae-Min Lee
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引用次数: 10
摘要
在本文中,我们使用了一种称为G-Link 200的振动传感器来收集实时振动数据。传感器通过互联网网关和LSTM (Long Short Term Memory)连接,LSTM用于对传感器数据进行分类。该分类允许检测正常和异常活动情况,从而允许触发紧急情况。这是在智能家居中实现的,隐私是一个值得关注的问题。洗手间、卧室和更衣室就是这样的地方。它也可以应用于智能工厂,检测过度或异常振动对工厂运行至关重要。该系统消除了视频监控给用户带来的不便。所收集的数据对研究社区在传感器数据增强的类似研究领域也很有用。采用MATLAB R2019b开发LSTM。结果表明,LSTM的准确率为97.39%,优于其他机器学习算法,可用于紧急分类。
IoT-Based Vibration Sensor Data Collection and Emergency Detection Classification using Long Short Term Memory (LSTM)
In this paper, we used a vibration sensor known as G-Link 200 to collect real time vibration data. The sensor is connected through the internet gateway and Long Short Term Memory (LSTM) used for the classification of sensor data. The classification allows for detecting normal and anomaly activity situation which allows for triggering emergency situation. This is implemented in smart homes where privacy is an issue of concern. Example of such places are toilets, bedrooms and dressing rooms. It can also be applied to smart factory where detecting excessive or abnormal vibration is of critical importance to factory operation. The system eliminates the discomfort for video surveillance to the user. The data collected is also useful for the research community in similar research areas of sensor data enhancement. MATLAB R2019b was used to develop the LSTM. The result showed that the accuracy of the LSTM is 97.39% which outperformed other machine learning algorithm and is reliable for emergency classification.