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A Novel Event Detection and Classification Scheme Using Wide-Area Frequency Measurements

机译:使用广域频率测量的新颖事件检测和分类方案

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摘要

Automated event detection and classification are vital to power system monitoring. This article proposes a novel event detection and classification scheme based on wide area frequency measurement system (WAFMS). Raw frequency measurements obtained from WAFMS are used as the only input to the event detection and classification algorithm (EDCA). Wavelet-based signal pre-processing is used to denoise the data. Afterward, the rate of change of frequency (ROCOF) is estimated from the frequency measurements using the Kalman filter (KF). In the same step, phase angle difference (PAD) across different stations is estimated using WAFMS. Thus, the overall algorithm uses three features such as frequency, ROCOF, and PAD to detect and classify events in the power system. In the first step, an event is detected based on standard deviation (SD) of estimated ROCOF and PAD. In the second step, four types of events are classified using wide area frequency measurements. The suggested algorithms have been validated with real WAFMS data from the Indian Power System, recent 9th August 2019 U.K. blackout data collected from the U.K. power system, and 20th July 2017 oscillation event data obtained from ISO New England (ISO-NE) power system. As a promising tool for power system monitoring, the suggested scheme requires less input measurement for decision making and is having a low computational complexity, which is suitable for practical application.
机译:自动化事件检测和分类对电力系统监控至关重要。本文提出了一种基于广域频率测量系统(WAFM)的新型事件检测和分类方案。从WAFM获得的原始频率测量用作事件检测和分类算法(EDCA)的唯一输入。基于小波的信号预处理用于代位数据。之后,使用卡尔曼滤波器(KF)从频率测量估计频率变化率(Rocof)。在相同的步骤中,使用WAFM估计不同站的相位角差(焊盘)。因此,整体算法使用诸如频率,rocof和垫的三个特征来检测和分类电力系统中的事件。在第一步中,基于估计的Rocof和PAD的标准偏差(SD)检测事件。在第二步中,使用宽面积频率测量来分类四种类型的事件。建议的算法已通过来自印度电力系统的真实WAFMS数据验证,2019年8月9日U.K.从U.K.电力系统收集的停电数据,以及2017年7月20日从ISO新英格兰(ISO-NE)电力系统获得的振荡事件数据。作为电力系统监控的有前途的工具,建议的方案需要较少的输入测量来决策,并且具有低计算复杂性,适用于实际应用。

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