Prediction of received signal strength from human joint angles in body area networks

Thang Manh Tran, G. Vejarano
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引用次数: 5

Abstract

Focusing on movements of a human participant performing physical-therapy exercises, this paper presents an algorithm that predicts the received signal strength indicator (RSSI) of wireless sensor nodes attached to the user. The body area network (BAN) formed by the nodes is a motion capture system that measures joint angles of the user at the shoulder and elbow. In order to predict the RSSI, we first show that the wireless signal experiences severe attenuation from human-body shadowing even though distances between transmitters and receiver are less than 3 meters. Second, we show that the RSSI fluctuates periodically with regular body movements (i.e., physical-therapy exercises). We then model the movements using k-means clustering and Markov chains and determine the probability distribution of the RSSI at each state in the movement. Finally, the RSSI is predicted with a maximum a posteriori probability (MAP) detector. Experimental results show that the RSSI can be predicted with a root mean square error (RMSE) of 3.7 dB, which is an error within 4.2% of the average RSSI level, and when a prediction is made, it is valid for the next 1083 milliseconds (ms) on average.
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人体区域网络中人体关节角度接收信号强度的预测
本文以人类参与者进行物理治疗练习的动作为重点,提出了一种预测用户身上无线传感器节点接收信号强度指标(RSSI)的算法。由这些节点组成的身体区域网络(BAN)是测量使用者肩部和肘部关节角度的动作捕捉系统。为了预测RSSI,我们首先表明,即使发射器和接收器之间的距离小于3米,无线信号也会受到人体阴影的严重衰减。其次,我们发现RSSI随有规律的身体运动(即物理治疗运动)而周期性波动。然后,我们使用k-means聚类和马尔可夫链对运动进行建模,并确定运动中每个状态下RSSI的概率分布。最后,使用最大后验概率(MAP)检测器预测RSSI。实验结果表明,RSSI预测的均方根误差(RMSE)为3.7 dB,误差在平均RSSI水平的4.2%以内,预测后平均有效时间为1083 ms。
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