利用特权特征蒸馏法估算物联网中的节点卡定性

Pranav S. Page;Anand S. Siyote;Vivek S. Borkar;Gaurav S. Kasbekar
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引用次数: 0

摘要

物联网(IoT)是一项新兴的关键技术,可将传感器、执行器和电器等资源受限的设备连接到互联网。本文提出了一种在无线网络(如物联网和射频识别(RFID)系统)中估算节点万有引力的新方法,该方法使用了特权特征蒸馏(PFD)技术,并通过师生模型神经网络进行工作。本文首次将功能强大的 PFD 技术用于无线网络中的节点万有性估计。教师利用特权特征和常规特征进行训练,学生则利用教师的预测和常规特征进行训练。基于 PFD 技术,我们提出了适用于同构无线网络和具有 $T geq 2$ 类型节点的异构无线网络的节点万有性估计算法。使用合成数据集和真实数据集进行的大量仿真表明,与先前工作中提出的最先进协议相比,针对同构和异构网络提出的基于 PFD 的算法在计算节点万有性估计值时实现了更低的均方误差 (MSE)。特别是,我们对真实数据集的仿真结果表明,我们针对同构(分别为异构)网络提出的基于 PFD 的技术所实现的 MSE 平均比先前工作中提出的简单 RFID 计数 (SRCs) 协议(分别为 T-SRCs 协议)低 92.35%(分别为 94.08%),而执行所需的时隙数相同。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Node Cardinality Estimation in the Internet of Things Using Privileged Feature Distillation
The Internet of Things (IoT) is emerging as a critical technology to connect resource-constrained devices such as sensors and actuators as well as appliances to the Internet. In this paper, a novel methodology for node cardinality estimation in wireless networks such as the IoT and Radio-Frequency Identification (RFID) systems is proposed, which uses the Privileged Feature Distillation (PFD) technique and works using a neural network with a teacher-student model. This paper is the first to use the powerful PFD technique for node cardinality estimation in wireless networks. The teacher is trained using both privileged and regular features, and the student is trained with predictions from the teacher and regular features. Node cardinality estimation algorithms based on the PFD technique are proposed for homogeneous wireless networks as well as heterogeneous wireless networks with $T \geq 2$ types of nodes. Extensive simulations, using a synthetic dataset as well as a real dataset, are used to show that the proposed PFD based algorithms for homogeneous as well as heterogeneous networks achieve much lower mean squared errors (MSEs) in the computed node cardinality estimates than state-of-the-art protocols proposed in prior work. In particular, our simulation results for the real dataset show that our proposed PFD based technique for homogeneous (respectively, heterogeneous) networks achieves a MSE that is 92.35% (respectively, 94.08%) lower on average than that achieved by the Simple RFID Counting (SRCs) protocol (respectively, T-SRCs protocol) proposed in prior work while taking the same number of time slots to execute.
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