IEEE J Biomed Health Inform. 2021 Mar;25(3):623-633. doi: 10.1109/JBHI.2020.3003924. Epub 2021 Mar 5.
The increasing penetration of wearable and implantable devices necessitates energy-efficient and robust ways of connecting them to each other and to the cloud. However, the wireless channel around the human body poses unique challenges such as a high and variable path-loss caused by frequent changes in the relative node positions as well as the surrounding environment. An adaptive wireless body area network (WBAN) scheme is presented that reconfigures the network by learning from body kinematics and biosignals. It has very low overhead since these signals are already captured by the WBAN sensor nodes to support their basic functionality. Periodic channel fluctuations in activities like walking can be exploited by reusing accelerometer data and scheduling packet transmissions at optimal times. Network states can be predicted based on changes in observed biosignals to reconfigure the network parameters in real time. A realistic body channel emulator that evaluates the path-loss for everyday human activities was developed to assess the efficacy of the proposed techniques. Simulation results show up to 41% improvement in packet delivery ratio (PDR) and up to 27% reduction in power consumption by intelligent scheduling at lower transmission power levels. Moreover, experimental results on a custom test-bed demonstrate an average PDR increase of 20% and 18% when using our adaptive EMG- and heart-rate-based transmission power control methods, respectively. The channel emulator and simulation code is made publicly available at https://github.com/a-moin/wban-pathloss.
可穿戴和植入设备的普及程度不断提高,这就需要高效节能且强大的方式将它们彼此连接,并连接到云端。然而,人体周围的无线信道带来了独特的挑战,例如由于节点相对位置和周围环境频繁变化而导致的高且可变的路径损耗。本文提出了一种自适应无线体域网 (WBAN) 方案,该方案通过从人体运动学和生物信号中学习来重新配置网络。由于这些信号已经由 WBAN 传感器节点捕获,以支持其基本功能,因此该方案的开销非常低。可以利用步行等活动中的周期性信道波动,通过重新使用加速度计数据并在最佳时间调度数据包传输来实现。可以根据观察到的生物信号的变化来预测网络状态,以便实时重新配置网络参数。开发了一个现实的人体信道仿真器来评估日常人体活动的路径损耗,以评估所提出技术的效果。仿真结果表明,通过智能调度在较低的传输功率水平下,数据包传输率 (PDR) 提高了 41%,功耗降低了 27%。此外,在定制测试平台上进行的实验结果表明,当使用我们基于自适应肌电图和心率的传输功率控制方法时,平均 PDR 分别提高了 20%和 18%。信道仿真器和仿真代码可在 https://github.com/a-moin/wban-pathloss 上公开获取。