Online intelligent technique for preventing relay maloperation under stressed conditions

Sayari Das, B. K. Panigrahi
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引用次数: 0

Abstract

Various power system blackouts have been caused due to the maloperation of distance relays during stressed conditions like power swing and voltage instability. Thus differentiating fault from stressed conditions and making the protection scheme intelligent enough to stop the relay maloperations has become very important. There are a few computational intelligent techniques proposed in the literature for preventing relay maloperations. However with the increase in size and complexity of the power systems there have been situations during which there is change in network topology or system parameters. An online intelligent technique: online sequential extreme learning machine (OSELM) has been suggested in this paper which under such real time situations successfully furnishes accurate results. This online computational intelligence technique based on synchronized wide area measurements has been implemented to develop a classifier that differentiates fault from power swing and voltage instability. Potential of this online tool in preventing relay maloperations has been validated by comparing it with other offline intelligent techniques during real time scenario.
压力工况下继电器误动在线智能预防技术
在功率波动和电压不稳定等应力条件下,距离继电器的误动作造成了各种电力系统的停电。因此,将故障与应力状态区分开来,并使保护方案足够智能以阻止继电器的误动作变得非常重要。文献中提出了一些用于防止继电器误操作的计算智能技术。然而,随着电力系统规模和复杂性的不断增大,电网拓扑结构或系统参数也会发生变化。本文提出了一种在线智能技术——在线顺序极限学习机(OSELM),在这种实时情况下成功地提供了准确的结果。采用基于同步广域测量的在线计算智能技术,开发了一种区分功率摆动和电压不稳定故障的分类器。通过与其他离线智能技术在实时场景中的比较,验证了该在线工具在防止继电器误操作方面的潜力。
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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