Wide area power grid health state diagnosis and early warning system based on fault power flow fingerprint identification and MAS technology

Pengjiang Ge, Qian Guo, Haina Zhou, Xinran Li, Wen Xu, G. Tang, Qingshan Xu
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引用次数: 3

Abstract

The stability and security of the power grid is deteriorated due to the recent large-scale power grid interconnection and the power marketing. The stability character of the power grid becomes complex more and more. The new theory and technique need to be applied to diagnose the real-time state of the power grid in order to ensure the safe and economical operation of the power grid. The power flow fingerprint character during the normal and fault state is analyzed and the power grid health diagnosis repository with the Self-learning ability is constituted. The diagnosis method adaptable for the wide area power grid health state diagnosis is put forward in the paper. The power flow character is extracted using AFIS technology, and the intelligent matching arithmetic is used to diagnose the power grid health state, so the power grid health state factor and the uncertain probability distributing between the failure and symptom is present. The early warning and decision support architecture is constructed based on the Power Flow Fingerprint Identification and MAS Technology. The health diagnosis results can be integrated with the other intelligent diagnosis results and can alarm the dispatcher using the technology of visualization. The application of power flow fingerprint identification technique to diagnose the health state of the power grid can eliminate the potential fault in the power grid and prevent the happening of the paroxysmal accident.
基于故障潮流指纹识别和MAS技术的广域电网健康状态诊断预警系统
近年来大规模的电网互联和电力市场化,使得电网的稳定性和安全性不断恶化。电网的稳定特性变得越来越复杂。为了保证电网的安全、经济运行,需要应用新的理论和技术对电网进行实时状态诊断。分析了正常和故障状态下的潮流指纹特征,构建了具有自学习能力的电网健康诊断库。本文提出了一种适用于广域电网健康状态诊断的诊断方法。利用AFIS技术提取潮流特征,并采用智能匹配算法对电网健康状态进行诊断,从而得到电网健康状态因子和故障与症状之间的不确定概率分布。基于潮流指纹识别和MAS技术,构建了潮流预警与决策支持体系结构。健康诊断结果可以与其他智能诊断结果集成,并利用可视化技术向调度员报警。应用潮流指纹识别技术诊断电网的健康状态,可以消除电网中的潜在故障,防止突发事故的发生。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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