Abstract:
This paper proposes a novel data-driven power system event detection and classification method based on 5 TB of actual PMU measurements collected from the US western inte...Show MoreMetadata
Abstract:
This paper proposes a novel data-driven power system event detection and classification method based on 5 TB of actual PMU measurements collected from the US western interconnect. Firstly, a set of comprehensive power quality rules are proposed to pre-filter the raw data and extract the regions of interest (ROI). Six distinct event categories are defined, and corresponding patterns are chosen as references. Meanwhile, detailed characteristics of patterns are summarized to enhance our understanding of the actual events. Then, the time-independent feature vectors are generated by extracting the statistical, temporal, and spectral features from the raw time-series data. Furthermore, an ensemble model is proposed to cluster the events by combining multiple K-means clustering models using a voting strategy. Besides, both system-level and PMU-level clustering models are developed. The accuracy and robustness of the event detection method are further improved through interactive evaluation of the two-level clustering results. This paper summarizes the actual characteristics of each event category and provides a reliable basis for accurate label generation. The experiments demonstrate the effectiveness of the proposed event detection and classification method.
Date of Conference: 18-21 October 2021
Date Added to IEEE Xplore: 21 December 2021
ISBN Information: