학술논문

Predicting Cascading Failures in Power Grids using Machine Learning Algorithms
Document Type
Conference
Source
2019 North American Power Symposium (NAPS) Power Symposium (NAPS), 2019 North American. :1-6 Oct, 2019
Subject
Power, Energy and Industry Applications
Power grids
Power system faults
Power system protection
Power transmission lines
Machine learning algorithms
Load modeling
Cascading failures
machine learning
MAT-POWER
Monte-Carlo simulation
load shedding
Language
Abstract
Although there has been notable progress in modeling cascading failures in power grids, few works included using machine learning algorithms. In this paper, cascading failures that lead to massive blackouts in power grids are predicted and classified into no, small, and large cascades using machine learning algorithms. Cascading-failure data is generated using a cascading failure simulator framework developed earlier. The data set includes the power grid operating parameters such as loading level, level of load shedding, the capacity of the failed lines, and the topological parameters such as edge betweenness centrality and the average shortest distance for numerous combinations of two transmission line failures as features. Then several machine learning algorithms are used to classify cascading failures. Further, linear regression is used to predict the number of failed transmission lines and the amount of load shedding during a cascade based on initial feature values. This data-driven technique can be used to generate cascading failure data set for any real-world power grids and hence, power-grid engineers can use this approach for cascade data generation and hence predicting vulnerabilities and enhancing robustness of the grid.