Unsupervised Event Detection, Clustering, and Use Case Exposition in Micro-PMU Measurements
Armin Aligholian, Alireza Shahsavari, Emma Stewart, Ed Cortez, Hamed, Mohsenian-Rad

TL;DR
This paper introduces an unsupervised framework using GANs and mixed integer programming to detect and categorize power distribution events from micro-PMU data, aiding utility analysis.
Contribution
It presents a novel unsupervised event detection and clustering approach tailored for micro-PMU measurements, requiring minimal prior knowledge.
Findings
Outperforms existing methods in real-world micro-PMU data analysis.
Effectively detects abnormal events with GAN-based anomaly detection.
Clusters events dynamically, revealing new event types over time.
Abstract
Distribution-level phasor measurement units, a.k.a, micro-PMUs, report a large volume of high resolution phasor measurements which constitute a variety of event signatures of different phenomena that occur all across power distribution feeders. In order to implement an event-based analysis that has useful applications for the utility operator, one needs to extract these events from a large volume of micro-PMU data. However, due to the infrequent, unscheduled, and unknown nature of the events, it is often a challenge to even figure out what kind of events are out there to capture and scrutinize. In this paper, we seek to address this open problem by developing an unsupervised approach, which requires minimal prior human knowledge. First, we develop an unsupervised event detection method based on the concept of Generative Adversarial Networks (GAN). It works by training deep neural…
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