论文标题

基于元材料传感器的物联网:设计,优化和实施

Meta-material Sensor Based Internet of Things: Design, Optimization, and Implementation

论文作者

Hu, Jingzhi, Zhang, Hongliang, Di, Boya, Han, Zhu, Poor, H. Vincent, Song, Lingyang

论文摘要

对于许多设想的物联网(IoT)设想的应用程序,预计传感器的成本非常低,零功率将通过基于元材料传感器的物联网(即meta-iot)来满足。由于它们的构成元物质可以反映具有环境敏感反射系数的无线信号,因此元iot传感器可以同时进行传感和传输,而无需任何主动调制。但是,为了最大程度地提高感应精度,考虑到它们对感应和传播的关节影响,需要优化元iot传感器的结构,这是由于评估影响的高计算复杂性而具有挑战性的,尤其是考虑到大量传感器。在本文中,我们为具有大量元iot传感器的元iot系统提出了一种关节传感和传输设计方法,该方法可以有效地优化系统的传感精度。具体而言,建立了一个计算高效的信号模型,以评估元物质结构对传感和传输的关节影响。然后,基于深度无监督学习的传感算法旨在以稳健的方式获得准确的感应结果。具有原型的实验证明,与现有设计相比,该系统具有更高的灵敏度和更长的传输范围,并且可以在2米内正确感知环境异常。

For many applications envisioned for the Internet of Things (IoT), it is expected that the sensors will have very low costs and zero power, which can be satisfied by meta-material sensor based IoT, i.e., meta-IoT. As their constituent meta-materials can reflect wireless signals with environment-sensitive reflection coefficients, meta-IoT sensors can achieve simultaneous sensing and transmission without any active modulation. However, to maximize the sensing accuracy, the structures of meta-IoT sensors need to be optimized considering their joint influence on sensing and transmission, which is challenging due to the high computational complexity in evaluating the influence, especially given a large number of sensors. In this paper, we propose a joint sensing and transmission design method for meta-IoT systems with a large number of meta-IoT sensors, which can efficiently optimize the sensing accuracy of the system. Specifically, a computationally efficient received signal model is established to evaluate the joint influence of meta-material structure on sensing and transmission. Then, a sensing algorithm based on deep unsupervised learning is designed to obtain accurate sensing results in a robust manner. Experiments with a prototype verify that the system has a higher sensitivity and a longer transmission range compared to existing designs, and can sense environmental anomalies correctly within 2 meters.

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