面向智能电网分布式环境监测的高效后处理信号检测

Yujie Liang, R. Ying, Peilin Liu
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引用次数: 0

摘要

在智能电网恶劣复杂的电力系统环境中,观测信号经常受到多信号源、环境噪声或突然丢包的干扰,对可靠的远程监控提出了重大挑战。本文提出了一种新的分布式监控系统无线数据传输的后处理检测方案,能够在传输过程中高度容忍这些干扰,并能准确地从汇聚中心的粗糙数据中重建观测信号。传感器不需要硬件或算法实现来防止可能出现的故障,这完美地解决了实际应用中数千个能量受限的传感器更换电池或更新软件的问题。计算能力强、能量充沛的汇聚中心决定干扰容忍度和重传条件,通过压缩感知估计干扰信号的频域幅值,将传感器的混合感测数据重构为观测信号,使干扰信号的频域幅值为0。在该方案中,我们通过l1-l2优化实现压缩感知,其中代价函数被定义为带有混合参数的l1和l2范数之和,这使我们能够控制观测信号与干扰信号之间的阈值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Efficient Post-Processing Signal Detecting for Distributed Environment Monitoring in Smart Grid
In harsh and complex electric power system environments of Smart Grid, the observed signal is always disturbed by multiple signal sources, environmental noise or sudden packet loss, generating a significant challenge for reliable remote monitoring. In this paper, we propose a new post-processing detecting scheme for wireless data transmission in the distributed monitoring system to highly tolerate these interferences after transmission procedure and exactly reconstruct the observed signal from rough data in the sink center. Hardware or algorithm implementation to prevent the possible failures is not necessary in sensors, which perfectly solves the problem about changing batteries or updating software for practical application with thousands of energy-constrained sensors. The sink center with high computational capability and abundant energy resource decides the tolerance of interference and retransmission condition, reconstructs the observed signal from the mixing sensed data of sensors by the estimation of frequency domain amplitude via compressed sensing with regarding frequency domain amplitude of the interference signal as 0. In the proposed scheme, we implement compressed sensing with an l1-l2 optimization, where the cost function is defined as a sum of l1 and l2 norms with a mixing parameter, which enables us to control the threshold between the observed signal and the interference ones.
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