Visible to the public Contextual anomaly detection for cyber-physical security in Smart Grids based on an artificial neural network model

TitleContextual anomaly detection for cyber-physical security in Smart Grids based on an artificial neural network model
Publication TypeConference Paper
Year of Publication2016
AuthorsKosek, A. M.
Conference Name2016 Joint Workshop on Cyber- Physical Security and Resilience in Smart Grids (CPSR-SG)
Keywordsanomaly detection, artificial neural network model, Context, Context modeling, contextual anomaly detection method, Cyber-physical security, Cyber-physical systems, cyberphysical security, Data analysis, Data models, Density estimation robust algorithm, distributed energy resource behaviour, energy resources, intrusion detection system, low voltage distribution grid, malicious voltage control actions, Metrics, neural nets, Neural Network, Neural networks, neural networks security, photovoltaic rooftop power plant data, policy-based governance, power system security, power system stability, Production, pubcrawl, Resiliency, security of data, Smart grid, Smart grids, smart power grids, Voltage control, voltage distribution
Abstract

This paper presents a contextual anomaly detection method and its use in the discovery of malicious voltage control actions in the low voltage distribution grid. The model-based anomaly detection uses an artificial neural network model to identify a distributed energy resource's behaviour under control. An intrusion detection system observes distributed energy resource's behaviour, control actions and the power system impact, and is tested together with an ongoing voltage control attack in a co-simulation set-up. The simulation results obtained with a real photovoltaic rooftop power plant data show that the contextual anomaly detection performs on average 55% better in the control detection and over 56% better in the malicious control detection over the point anomaly detection.

URLhttps://ieeexplore.ieee.org/document/7684103/
DOI10.1109/CPSRSG.2016.7684103
Citation Keykosek_contextual_2016