Development of a Synchronous Measurement System for WBAN Channel Modeling Considering Human Body Motion

Akira Saito, T. Aoyagi
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Abstract

Developments of WBAN channel models require a lot of experiments and simulations. To reduce them, our research group has been proposing a concept of WBAN channel modeling using human motions as parameters. In this report, a human motion and received signal strength synchronization measurement system is proposed. Human motion data is collected by a motion capture device (MOCAP) and the received signal strength (RSSI) data is collected by a BLE wireless device. To synchronize MOCAP and BLE data, a gesture-based method is proposed and confirmed by experiments. We also verified the operation of the measurement system and the possibility of path-loss or channel modeling based on human motion parameters. By using the measured human motion and RSSI data, RSSIs of future times are predicted by machine learning methods, RNN (Recurrent neural network), and LSTM (Long short-term memory). In conclusion, it was found that the RSSI in the future can be predicted to some extent from the past values of human body movements. This result would suggest the possibility of the modeling of WBAN channel variation with human motion as parameters.
考虑人体运动的WBAN信道建模同步测量系统的研制
WBAN信道模型的开发需要大量的实验和仿真。为了减少它们,我们的研究小组提出了一种使用人体运动作为参数的WBAN信道建模概念。本文提出了一种人体运动与接收信号强度同步测量系统。人体运动数据由动作捕捉设备(MOCAP)采集,接收信号强度(RSSI)数据由BLE无线设备采集。为了实现MOCAP和BLE数据的同步,提出了一种基于手势的方法,并通过实验进行了验证。我们还验证了测量系统的运行以及基于人体运动参数的路径损失或通道建模的可能性。通过测量人体运动和RSSI数据,通过机器学习方法、RNN(循环神经网络)和LSTM(长短期记忆)预测未来时间的RSSI。综上所述,我们发现从过去的人体运动值可以在一定程度上预测未来的RSSI。这一结果为以人体运动为参数建立WBAN信道变化模型提供了可能性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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