학술논문

Data Driven Machine Learning Model for Condition Monitoring and Anomaly Detection in Power Grids
Document Type
Conference
Source
2023 IEEE Power & Energy Society General Meeting (PESGM) Power & Energy Society General Meeting (PESGM), 2023 IEEE. :1-5 Jul, 2023
Subject
Engineering Profession
Power, Energy and Industry Applications
Fault diagnosis
Renewable energy sources
Voltage fluctuations
Machine learning algorithms
Forestry
Power system stability
Benchmark testing
Climate change
Renewable penetration
power system faults
grid disturbances
anomaly detection
data analytics
unsupervised learning
Language
ISSN
1944-9933
Abstract
The power system complexity and associated stability problems are greatly linked to the increasing penetration of unconventional energy sources and loads, such as renewable energies. The application of renewable for climate change, sustainability, and Net Zero come at the cost of deteriorated power quality, faults, instability, and disturbances in the power system. It gives rise to various problems such as equipment malfunctioning, power factor problems, transformer heating, inertia, voltage sags/swells, transmission lines overloading, etc. This requires and adjudicates the need for efficient monitoring and identification of faults and anomalies happening in the power system so as to accordingly mitigate these in a timely manner. The fault data however is not readily available and requires on-site inspection and accumulation. This paper thus aims at developing a synthetic database for various abnormal power system conditions captured from a well-known Kundr’s two-area system. These include symmetrical and asymmetrical faults, frequency, and phase variations, as well as voltage amplitude disturbances (sag/swell). The synthetic database is then combined with artificial intelligence techniques to enable fault detection and identification featuring low linear complexity and small memory requirements. The paper includes a benchmark study for three unsupervised anomaly detection algorithms, evaluating their performance in terms of both Area under the ROC Curve (AUC) and the execution time. The results show that iForest and iNNE provide competitive results in detecting anomalies of all fault types, with iNNE providing significantly better execution time performance.