Robust Event Classification Using Imperfect Real-world PMU Data
- URL: http://arxiv.org/abs/2110.10128v1
- Date: Tue, 19 Oct 2021 17:41:43 GMT
- Title: Robust Event Classification Using Imperfect Real-world PMU Data
- Authors: Yunchuan Liu, Lei Yang, Amir Ghasemkhani, Hanif Livani, Virgilio A.
Centeno, Pin-Yu Chen, Junshan Zhang
- Abstract summary: We study robust event classification using imperfect real-world phasor measurement unit (PMU) data.
We develop a novel machine learning framework for training robust event classifiers.
- Score: 58.26737360525643
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: This paper studies robust event classification using imperfect real-world
phasor measurement unit (PMU) data. By analyzing the real-world PMU data, we
find it is challenging to directly use this dataset for event classifiers due
to the low data quality observed in PMU measurements and event logs. To address
these challenges, we develop a novel machine learning framework for training
robust event classifiers, which consists of three main steps: data
preprocessing, fine-grained event data extraction, and feature engineering.
Specifically, the data preprocessing step addresses the data quality issues of
PMU measurements (e.g., bad data and missing data); in the fine-grained event
data extraction step, a model-free event detection method is developed to
accurately localize the events from the inaccurate event timestamps in the
event logs; and the feature engineering step constructs the event features
based on the patterns of different event types, in order to improve the
performance and the interpretability of the event classifiers. Based on the
proposed framework, we develop a workflow for event classification using the
real-world PMU data streaming into the system in real-time. Using the proposed
framework, robust event classifiers can be efficiently trained based on many
off-the-shelf lightweight machine learning models. Numerical experiments using
the real-world dataset from the Western Interconnection of the U.S power
transmission grid show that the event classifiers trained under the proposed
framework can achieve high classification accuracy while being robust against
low-quality data.
Related papers
- A CLIP-Powered Framework for Robust and Generalizable Data Selection [51.46695086779598]
Real-world datasets often contain redundant and noisy data, imposing a negative impact on training efficiency and model performance.
Data selection has shown promise in identifying the most representative samples from the entire dataset.
We propose a novel CLIP-powered data selection framework that leverages multimodal information for more robust and generalizable sample selection.
arXiv Detail & Related papers (2024-10-15T03:00:58Z) - Improving Event Definition Following For Zero-Shot Event Detection [66.27883872707523]
Existing approaches on zero-shot event detection usually train models on datasets annotated with known event types.
We aim to improve zero-shot event detection by training models to better follow event definitions.
arXiv Detail & Related papers (2024-03-05T01:46:50Z) - A hybrid feature learning approach based on convolutional kernels for
ATM fault prediction using event-log data [5.859431341476405]
We present a predictive model based on a convolutional kernel (MiniROCKET and HYDRA) to extract features from event-log data.
The proposed methodology is applied to a significant real-world collected dataset.
The model was integrated into a container-based decision support system to support operators in the timely maintenance of ATMs.
arXiv Detail & Related papers (2023-05-17T08:55:53Z) - pmuBAGE: The Benchmarking Assortment of Generated PMU Data for Power
System Events [2.4775353203585797]
pmuGE (phasor measurement unit Generator of Events) is one of the first data-driven generative model for power system event data.
We have trained this model on thousands of actual events and created a dataset denoted pmuBAGE.
The dataset consists of almost 1000 instances of labeled event data to encourage benchmark evaluations on phasor measurement unit (PMU) data analytics.
arXiv Detail & Related papers (2022-10-25T17:50:24Z) - Avoiding Post-Processing with Event-Based Detection in Biomedical
Signals [69.34035527763916]
We propose an event-based modeling framework that directly works with events as learning targets.
We show that event-based modeling (without post-processing) performs on par with or better than epoch-based modeling with extensive post-processing.
arXiv Detail & Related papers (2022-09-22T13:44:13Z) - pmuBAGE: The Benchmarking Assortment of Generated PMU Data for Power
System Events -- Part I: Overview and Results [2.4775353203585797]
We present pmuGE (phasor measurement unit Generator of Events), one of the first data-driven generative model for power system event data.
We have trained this model on thousands of actual events and created a dataset denoted pmuBAGE.
The dataset consists of almost 1000 instances of labeled event data to encourage benchmark evaluations on phasor measurement unit (PMU) data analytics.
arXiv Detail & Related papers (2022-04-03T15:30:08Z) - Event Data Association via Robust Model Fitting for Event-based Object Tracking [66.05728523166755]
We propose a novel Event Data Association (called EDA) approach to explicitly address the event association and fusion problem.
The proposed EDA seeks for event trajectories that best fit the event data, in order to perform unifying data association and information fusion.
The experimental results show the effectiveness of EDA under challenging scenarios, such as high speed, motion blur, and high dynamic range conditions.
arXiv Detail & Related papers (2021-10-25T13:56:00Z) - EventPoint: Self-Supervised Local Descriptor Learning for Event Cameras [2.3300629798610446]
We propose a method of extracting intrest points and descriptors using self-supervised learning method on frame-based event data, which is called EventPoint.
We train our model on real event-form driving dataset--DSEC with the self-supervised learning method we proposed, the training progress fully consider the characteristics of event data.
arXiv Detail & Related papers (2021-09-01T06:58:14Z) - Event-Related Bias Removal for Real-time Disaster Events [67.2965372987723]
Social media has become an important tool to share information about crisis events such as natural disasters and mass attacks.
Detecting actionable posts that contain useful information requires rapid analysis of huge volume of data in real-time.
We train an adversarial neural model to remove latent event-specific biases and improve the performance on tweet importance classification.
arXiv Detail & Related papers (2020-11-02T02:03:07Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.