Data Fusion Analysis with Optimal Weight in Smart Grid

Dengjun Zhu, Haiwei Yuan, Jinlong Yan, Yanping Qing, Weijie Yang
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引用次数: 2

Abstract

In recent years, Wireless Sensor Network (WSN) have been widely used in the Industrial Internet of Things (IIOT), especially in smart grid. The sensors not only extract the key attributes of the basic data onto operating state of various underground cables, but also remove the redundant description of the data onto the data systems. Further, the sensors can also deal with inconsistent information about the data systems. In order to ensure the reliable fusion data containing all the key information of the basic data and meeting the standard requirements of underground cable, we could overlap the sensing areas of the sensor nodes with each other. The deployment often has the problems of weak expansion ability, network delay and uneven energy consumption of nodes. Therefore, this paper focuses on the optimal weight data fusion analysis to improve the current situation. This method is more efficient for data fusion processing and data extraction.
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智能电网中最优权值的数据融合分析
近年来,无线传感器网络(WSN)在工业物联网(IIOT)特别是智能电网中得到了广泛的应用。该传感器不仅能将基础数据的关键属性提取到各种地下电缆的运行状态中,而且还能消除数据系统中对数据的冗余描述。此外,传感器还可以处理有关数据系统的不一致信息。为了保证融合数据的可靠性,包含基础数据的所有关键信息,满足地下电缆的标准要求,我们可以将传感器节点的传感区域相互重叠。这种部署往往存在扩展能力弱、网络时延和节点能耗不均匀等问题。因此,本文主要研究最优权重数据融合分析来改善这一现状。该方法在数据融合处理和数据提取方面具有更高的效率。
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