基于PMU的电力系统安全评估在线集成学习

H. T. Nguyen, L. Le
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引用次数: 2

摘要

本文提出了一种基于支持向量机(SVM)集成的在线Adaboost算法,该算法利用相量测量单元(pmu)的在线测量数据进行电力系统安全评估。我们提出的学习方案由一个强学习器和多个弱学习器组成。弱学习器是一种线性支持向量机,易于实现和增量更新,计算复杂度低。强学习器利用增强方法补偿线性支持向量机不可避免的分类误差。由于数据是不平衡的,即不安全场景的数量远远少于安全场景的数量,传统的在线Adaboost可能会导致较高的误检率。因此,我们提出了一种能够适应不平衡在线数据的在线Adaboost算法。此外,可以通过调整设计参数来实现误检测(即未检测到未保护的样本)和假警报(即错误地分类保护的样本)之间的有效权衡。数值结果表明,该方案具有较高的安全评估效率和准确性,为未来智能电网的高级安全监控应用提供了潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Online ensemble learning for security assessment in PMU based power system
This paper presents an online Adaboost algorithm for ensemble of support vector machines (SVM) for power system security assessment utilizing online measurement data obtained from Phasor Measurement Units (PMUs). Our proposed learning scheme consists of a strong learner and multiple weak learners. The weak learners are linear SVMs which are easy to implement and incrementally updated with low computation complexity. The strong learner compensates for inevitable classification errors of linear SVMs by using the boosting approach. Since the data is unbalanced, i.e., the number unsecured scenarios is much smaller than the number of secured scenarios, conventional online Adaboost may result in the high misdetection rate. Hence, we propose an online Adaboost algorithm that can adapt itself to the unbalanced online data. In addition, efficient tradeoff between misdetection (i.e., failing to detect unsecured samples) and false alarm (i.e., classifying secured samples wrongly) can be achieved by tuning a design parameter. Numerical results show that our proposed scheme can achieve high security assessment efficiency and accuracy, which is potential for the advanced security monitoring application in future smartgrid.
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