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Cyber-Physical Systems Virtual Organization
Read-only archive of site from September 29, 2023.
CPS-VO
topological parameters
biblio
Predicting Cascading Failures in Power Grids using Machine Learning Algorithms
Submitted by grigby1 on Fri, 04/24/2020 - 3:38pm
MAT-POWER
cascading failure data set
cascading failure prediction
cascading failure simulator framework
Cascading Failures
data-driven technique
edge betweenness centrality
linear regression
load shedding
massive blackouts
cascading failure data
Monte-Carlo simulation
power grid operating parameters
power-grid engineers
real-world power grids
regression analysis
topological parameters
transmission line failures
Vulnerability prediction
Power Grid Vulnerability Assessment
power grids
machine learning
machine learning algorithms
pubcrawl
resilience
Resiliency
power engineering computing
composability
Load modeling
pattern classification
learning (artificial intelligence)
Metrics
failure analysis
power system reliability
power system faults
Power system protection
power transmission lines
average shortest distance
cascade data generation