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电网中的磁电能量收集技术:综述

Magnetic and Electric Energy Harvesting Technologies in Power Grids: A Review.

作者信息

Yang Feng, Du Lin, Yu Huizong, Huang Peilin

机构信息

College of Engineering and Technology, Southwest University, Chongqing 400716, China.

State Key Laboratory of Power Transmission Equipment and System Security and New Technology, Chongqing University, Chongqing 400044, China.

出版信息

Sensors (Basel). 2020 Mar 9;20(5):1496. doi: 10.3390/s20051496.

Abstract

With the development of intelligent modern power systems, real-time sensing and monitoring of system operating conditions have become one of the enabling technologies. Due to their flexibility, robustness and broad serviceable scope, wireless sensor networks have become a promising candidate for achieving the condition monitoring in a power grid. In order to solve the problematic power supplies of the sensors, energy harvesting (EH) technology has attracted increasing research interest. The motivation of this paper is to investigate the profiles of harnessing the electric and magnetic fields and facilitate the further application of energy scavenging techniques in the context of power systems. In this paper, the fundamentals, current status, challenges, and future prospects of the two most applicable EH methods in the grid-magnetic field energy harvesting (MEH) and electric field energy harvesting (EEH) are reviewed. The characteristics of the magnetic field and electric field under typical scenarios in power systems is analyzed first. Then the MEH and EEH are classified and reviewed respectively according to the structural difference of energy harvesters, which have been further evaluated based on the comparison of advantages and disadvantages for the future development trend.

摘要

随着智能现代电力系统的发展,系统运行状况的实时传感与监测已成为关键技术之一。由于其灵活性、鲁棒性和广泛的适用范围,无线传感器网络已成为实现电网状态监测的一个有前景的选择。为了解决传感器的供电问题,能量收集(EH)技术已引起越来越多的研究兴趣。本文的目的是研究利用电场和磁场的情况,并促进能量采集技术在电力系统中的进一步应用。本文综述了电网中两种最适用的能量收集方法——磁场能量收集(MEH)和电场能量收集(EEH)的基本原理、现状、挑战和未来前景。首先分析了电力系统典型场景下的磁场和电场特性。然后根据能量采集器的结构差异对MEH和EEH进行分类和综述,并基于优缺点比较对未来发展趋势进行了进一步评估。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/7ec7/7085584/426e6a8773c5/sensors-20-01496-g001.jpg

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