Intelligent information systems for power grid fault analysis by computer communication technology

Q2 Energy Energy Informatics Pub Date : 2025-01-16 DOI:10.1186/s42162-024-00465-6
Ronglong Xu, Jing Zhang
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引用次数: 0

Abstract

This study aims to enhance the intelligence level of power grid fault analysis to address increasingly complex fault scenarios and ensure grid stability and security. To this end, an intelligent information system for power grid fault analysis, leveraging improved computer communication technology, is proposed and developed. The system incorporates a novel fault diagnosis model, combining advanced communication technologies such as distributed computing, real-time data transmission, cloud computing, and big data analytics, to establish a multi-layered information processing architecture for grid fault analysis. Specifically, this study introduces a fusion model integrating Transformer self-attention mechanisms with graph neural networks (GNNs) based on conventional fault diagnosis techniques. GNNs capture the complex relationships between different nodes within the grid topology, effectively identifying power transmission characteristics and fault propagation paths across grid nodes. The Transformer’s self-attention mechanism processes time-series operational data from the grid, enabling precise identification of temporal dependencies in fault characteristics. To improve system response speed, edge computing moves portions of fault data preprocessing and analysis to edge nodes near data sources, significantly reducing transmission latency and enhancing real-time diagnosis capability. Experimental results demonstrate that the proposed model achieves superior diagnostic performance across various fault types (e.g., short circuits, overloads, equipment failures) in simulation scenarios. The system achieves a fault identification and location accuracy of 99.2%, an improvement of over 10% compared to traditional methods, with an average response time of 85 milliseconds, approximately 43% faster than existing technologies. Moreover, the system exhibits strong robustness in complex scenarios, with an average fault prediction error rate of just 1.1% across multiple simulations. This study provides a novel solution for intelligent power grid fault diagnosis and management, establishing a technological foundation for smart grid operations.

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基于计算机通信技术的电网故障分析智能信息系统
本研究旨在提高电网故障分析的智能化水平,以应对日益复杂的故障场景,保障电网的稳定与安全。为此,利用改进的计算机通信技术,提出并开发了电网故障分析智能信息系统。该系统采用新颖的故障诊断模型,结合分布式计算、实时数据传输、云计算、大数据分析等先进通信技术,建立了面向电网故障分析的多层次信息处理体系。具体而言,本文提出了一种基于传统故障诊断技术的变压器自关注机制与图神经网络的融合模型。gnn捕获网格拓扑中不同节点之间的复杂关系,有效识别电网节点间的电力传输特征和故障传播路径。Transformer的自关注机制处理来自电网的时间序列运行数据,从而能够精确识别故障特征中的时间依赖性。为了提高系统的响应速度,边缘计算将部分故障数据的预处理和分析工作转移到数据源附近的边缘节点,大大降低了传输延迟,增强了实时诊断能力。实验结果表明,该模型在各种故障类型(如短路、过载、设备故障)的仿真场景中具有优异的诊断性能。该系统实现了99.2%的故障识别和定位精度,与传统方法相比提高了10%以上,平均响应时间为85毫秒,比现有技术快了约43%。此外,该系统在复杂场景中表现出较强的鲁棒性,多次模拟的平均故障预测错误率仅为1.1%。本研究为电网智能故障诊断与管理提供了一种新的解决方案,为电网智能运行奠定了技术基础。
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来源期刊
Energy Informatics
Energy Informatics Computer Science-Computer Networks and Communications
CiteScore
5.50
自引率
0.00%
发文量
34
审稿时长
5 weeks
期刊最新文献
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