基于大数据和知识图谱的电力系统故障诊断

Q2 Engineering
Yuzhong Zhou, Zhèng-Hóng Lin, Liang Tu, Yufei Song, Zhengrong Wu
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引用次数: 2

摘要

故障检测在电力系统的日常维护中起着重要的作用。研究人员提出了大数据和知识图谱(KG)来解决工业物联网中的许多问题,这也为提高电力系统的故障检测性能提供了很大的潜力。特别地,本文分析了一种用于电力系统故障检测的分布式知识图谱框架,其中多个设备在中央服务器的辅助下训练其本地检测模型用于故障检测。每个设备都拥有由历史故障信息和当前设备状态组成的局部数据集,这些数据集可以用来训练局部模型进行故障检测。为了提高检测性能,分布式设备在KG框架中相互交互,其中设备除了在指定的延迟阈值内进行模型聚合外,还应该实现区域计算。通过在设备上搜索具有活力的特性和确定的能力,在限制延迟和数据传输的条件下,利用最优的能量设备种类来增强知识图谱框架。具体而言,针对分布式知识图谱框架,提出了两种数据传输带宽分配方案,其中方案一是在瞬时设备状态信息(DSI)之后进行数据传输,方案二是在统计DSI的基础上利用粒子群优化(PSO)技术。仿真结果表明,本文提出的分布式KG框架在电力系统故障检测中的优越性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Big Data and Knowledge Graph Based Fault Diagnosis for Electric Power Systems
Fault detection plays an important role in the daily maintenance of power electric system. Big data and knowledge graph (KG) have been proposed by researchers to solve many problems in industrial Internet of Things, which also give lots of potentials in improving the performance of fault detection for electric power systems. In particular, this paper analyzes a distributed knowledge graph framework for fault detection in the electric power systems, where multiple devices train their local detection models used for fault detection assisted with a central server. Each device owns its local data set composed of historical fault information and current device state, which can be used to train a local model for fault detection. To enhance the detection performance, the distributed devices interact with each other in the KG framework, where the devices ought to achieve the regional computation in addition to the model aggregation within a specified latency threshold. Through searching for the vibrant qualities together with determined ability at the devices, we enhance the knowledge graph framework by the optimum variety of energetic devices together with the restriction of latency as well as data transmission. Particularly, two data transmission bandwidth allocation (BA) schemes are developed for the distributed knowledge graph framework, through which scheme I is actually bared after the instantaneous device state information (DSI), and scheme II utilizes particle swarm optimization (PSO) technique along with the statistical DSI. The results of simulation on the examination as well as convergence are lastly demonstrated to show the advantages of the proposed distributed KG framework in the fault detection for the electric power systems.
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来源期刊
CiteScore
4.00
自引率
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发文量
15
审稿时长
10 weeks
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