Machine Learning Assisted Bad Data Detection for High-throughput Substation Communication

02/12/2023
by   Suman Sourav, et al.
0

Electrical substations are becoming more prone to cyber-attacks due to increasing digitalization. Prevailing defense measures based on cyber rules are often inadequate to detect attacks that use legitimate-looking measurements. In this work, we design and implement a bad data detection solution for electrical substations called ResiGate, that effectively combines a physics-based approach and a machine-learning-based approach to provide substantial speed-up in high-throughput substation communication scenarios, while still maintaining high detection accuracy and confidence. While many existing physics-based schemes are designed for deployment in control centers (due to their high computational requirement), ResiGate is designed as a security appliance that can be deployed on low-cost industrial computers at the edge of the smart grid so that it can detect local substation-level attacks in a timely manner. A key challenge for this is to continuously run the computationally demanding physics-based analysis to monitor the measurement data frequently transmitted in a typical substation. To provide high throughput without sacrificing accuracy, ResiGate uses machine learning to effectively filter out most of the non-suspicious (normal) data and thereby reducing the overall computational load, allowing efficient performance even with a high volume of network traffic. We implement ResiGate on a low-cost industrial computer and our experiments confirm that ResiGate can detect attacks with zero error while sustaining a high throughput.

READ FULL TEXT
research
06/28/2021

Realtime Robust Malicious Traffic Detection via Frequency Domain Analysis

Machine learning (ML) based malicious traffic detection is an emerging s...
research
04/14/2021

Towards an Interpretable Data-driven Trigger System for High-throughput Physics Facilities

Data-intensive science is increasingly reliant on real-time processing c...
research
08/29/2021

Outlier Detection in Smart Grid Communication

Industrial Control System (ICS) networks transmit control and monitoring...
research
11/10/2021

Cross-Layered Distributed Data-driven Framework For Enhanced Smart Grid Cyber-Physical Security

Smart Grid (SG) research and development has drawn much attention from a...
research
08/12/2022

High-Throughput Condensed-Phase Hybrid Density Functional Theory for Large-Scale Finite-Gap Systems: The SeA Approach

High-throughput DFT calculations are key to screening existing/novel mat...
research
05/15/2020

kiwiPy: Robust, high-volume, messaging for big-data and computational science workflows

In this work we present kiwiPy, a Python library designed to support rob...
research
05/05/2019

Performance evaluation of a NDN forwarder using statistical model checking

Named Data Networking (NDN) is an emerging technology for a future inter...

Please sign up or login with your details

Forgot password? Click here to reset