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EPKF: Energy Efficient Communication Schemes Based on Kalman Filter for IoT

机译:EPKF:基于卡尔曼滤波器的节能通信方案

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摘要

The Internet of Things (IoT) has been recognized as the next technological revolution. It faces two challenges: 1) how to achieve energy efficient communication for the battery constrained devices and 2) how to connect a very large number of devices to the Internet with low latency, high efficiency, and reliability. To address these problems, this paper proposes two methods based on Kalman filter (KF), termed as extensions of predicable KF (EPKF). They locally reduce the unnecessary transmission (access) of end devices to the network (Internet) utilizing the spatial and temporal correlations with low algorithmic overhead. Each transmitting device (TD) independently controls its transmission using the temporal correlation; and the receiving device (RD) exploits the spatial correlation among the TDs to further improve the reconstruction quality. The reconstruction problem in the RD is nonlinear. To reduce the computation complexity, an in-depth analysis of the local estimate error is conducted and the approximated linear solutions are thereupon obtained. They are fundamental methods applicable to any IoT monitored/controlled physical system that can be modeled as a linear state space representation. The pedestrian-position application is used as a case study to demonstrate the efficiency in the simulation. Remarkably, the EPKF methods using the linear combinations of the local estimates from multiple TDs reduce the transmission rate to 10%, while achieving the same reconstruction quality as using KF in the traditional manner.
机译:物联网(IoT)被公认为是下一场技术革命。它面临两个挑战:1)如何为电池受限的设备实现节能通信,以及2)如何以低延迟,高效率和可靠性将大量设备连接到Internet。为了解决这些问题,本文提出了两种基于卡尔曼滤波器(KF)的方法,称为可预测KF(EPKF)的扩展。它们利用空间和时间相关性以较低的算法开销在本地减少了终端设备到网络(Internet)的不必要的传输(访问)。每个发送设备(TD)使用时间相关性独立地控制其发送;接收设备(RD)利用TD之间的空间相关性来进一步提高重建质量。 RD中的重建问题是非线性的。为了降低计算复杂度,对局部估计误差进行了深入分析,从而获得了近似的线性解。它们是适用于任何可建模为线性状态空间表示形式的IoT监控/受控物理系统的基本方法。以行人位置应用为例,演示了仿真的效率。值得注意的是,使用来自多个TD的局部估计值的线性组合的EPKF方法将传输率降低到10%,同时实现了与传统方式中使用KF相同的重建质量。

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