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Power Control for Body Area Networks: Accurate Channel Prediction by Lightweight Deep Learning

机译:体积网络电源控制:轻量级深度学习准确的信道预测

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Recent advances in the Internet of Things (IoT) are reforming the health care industry by providing higher communication efficiency, lower costs, and higher mobility. Among the many IoT applications, wireless body area networks (BANs) are a remarkable solution caring for a rapidly growing aged population. Predictive transmit power control schemes improve BAN communications' reliability and energy efficiency through long-term optimal radio resources allocation that supports consistent pervasive healthcare services. Here, we propose LSTM-based neural network (NN) prediction methods that provide long-term accurate channel gain prediction of up to 2 s over nonstationary BAN on-body channels. An incremental learning scheme, which enables the LSTM predictor to operate online, is also developed for dynamic scenarios. Our main contribution is a lightweight NN predictor, "LiteLSTM," that has a compact structure and higher computational efficiency than other variants. We show that LiteLSTM remains functional under an incremental learning scheme, with only marginal performance degradation when implemented on hand-held devices. For optimal power allocation, we develop an interquartile range (IQR)-based power control for our channel prediction. When extensively tested using empirical channel measurements at different sampling rates, our proposed methods outperform the existing state-of-the-art methods in terms of prediction accuracy, power consumption, level crossing rate (LCR), and outage probability and duration.
机译:最近的事情互联网(物联网)通过提供更高的通信效率,降低成本和更高的移动性来改革医疗保健行业。在许多IOT应用中,无线体积网络(禁止)是一种显着的解决方案,用于快速生长的年龄群。预测传输功率控制方案通过长期最佳无线电资源分配来提高禁止通信的可靠性和能效,支持一致的普及医疗保健服务。在这里,我们提出了基于LSTM的神经网络(NN)预测方法,其提供长期精确的信道增益预测,最高可达2秒的非间断禁止体内通道。还为动态方案开发了一种增量学习方案,其使LSTM预测器能够在线运行。我们的主要贡献是轻量级NN预测器,“Litelstm”,具有紧凑的结构和更高的计算效率而不是其他变体。我们表明Litelstm在增量学习计划下仍然是功能,只有在手持设备上实施时的边际性能下降。为了获得最佳功率分配,我们为我们的信道预测开发了基于群位的基数(IQR)的功率控制。当使用不同采样率的经验信道测量进行广泛测试时,我们所提出的方法在预测准确度,功耗,水平交叉率(LCR)和中断概率和持续时间方面优于现有的现有方法。

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