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Online Detection of Events With Low-Quality Synchrophasor Measurements Based on iForest

机译:基于IFOSTEST的低质量同步测量的事件在线检测事件

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摘要

In this article, we propose an online data-driven approach that leverages the isolation mechanism for fast event detection with low-quality data measurement. The proposed adaptive and online isolation forest (iForest)-based detection (AOIFD) method adopts a hierarchical subspace feature selection scheme to design two levels of detectors. As such, it is capable of differentiating events from low-quality data measurements, preventing false alarms in the presence of low-quality data measurements. We further propose a data augmentation method to address the training data imbalance, which is caused by the rare occurrence of events. Moreover, we propose an adaptive training process to update the AOIFD method so that it can adapt to the time-varying operating conditions of power systems. The proposed AOIFD algorithm is practical in the sense that it is a fast-response method that requires no system modeling information and no global communications. Case studies with both synthetic and realistic PMU data are conducted to validate the effectiveness of the proposed method.
机译:在本文中,我们提出了一种在线数据驱动方法,利用了利用低质量数据测量的快速事件检测的隔离机制。基于分层子空间特征选择方案,所提出的自适应和在线隔离林(AOIFD)的检测(AOIFD)方法采用分层子空间特征选择方案来设计两个级别的探测器。因此,它能够区分从低质量数据测量的事件,防止存在低质量数据测量的错误警报。我们进一步提出了一种数据增强方法来解决培训数据不平衡,这是由罕见的事件发生引起的。此外,我们提出了一种自适应训练过程来更新AOIFD方法,使得它可以适应电力系统的时变运行条件。所提出的AOIFD算法在这种意义上是实用的,即它是一种不需要系统建模信息和全局通信的快速响应方法。进行了合成和现实PMU数据的案例研究以验证所提出的方法的有效性。

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