Publication detail

Hunting Network Anomalies in a Railway Axle Counter System

KUCHAŘ, K. HOLASOVÁ, E. POSPÍŠIL, O. RUOTSALAINEN, H. FUJDIAK, R. WAGNER, A.

Original Title

Hunting Network Anomalies in a Railway Axle Counter System

Type

journal article in Web of Science

Language

English

Original Abstract

This paper presents a comprehensive investigation of machine learning-based intrusion detection methods to reveal cyber attacks in railway axle counting networks. In contrast to the state-of-the-art works, our experimental results are validated with testbed-based real-world axle counting components. Furthermore, we aimed to detect targeted attacks on axle counting systems, which have higher impacts than conventional network attacks. W present a comprehensive investigation of machine learning-based intrusion detection methods to reveal cyber attacks in railway axle counting networks. According to our findings, the proposed machine learning-based models were able to categorize six different network states (normal and under attack). The overall accuracy of the initial models was ca. 70–100% for the test data set in laboratory conditions. In operational conditions, the accuracy decreased to under 50%. To increase the accuracy, we introduce a novel input data-preprocessing method with the denoted gamma parameter. This increased the accuracy of the deep neural network model to 69.52% for six labels, 85.11% for five labels, and 92.02% for two labels. The gamma parameter also removed the dependence on the time series, enabled relevant classification of data in the real network, and increased the accuracy of the model in real operations. This parameter is influenced by simulated attacks and, thus, allows the classification of traffic into specified classes.

Keywords

attack classification; axle counter; feature selection; ICS; neural network; OT; railway; testbed threat

Authors

KUCHAŘ, K.; HOLASOVÁ, E.; POSPÍŠIL, O.; RUOTSALAINEN, H.; FUJDIAK, R.; WAGNER, A.

Released

14. 3. 2023

Publisher

MDPI

ISBN

1424-8220

Periodical

SENSORS

Year of study

23

Number

6

State

Swiss Confederation

Pages from

1

Pages to

19

Pages count

19

URL

Full text in the Digital Library

BibTex

@article{BUT183121,
  author="Karel {Kuchař} and Eva {Holasová} and Ondřej {Pospíšil} and Henri {Ruotsalainen} and Radek {Fujdiak} and Adrian {Wagner}",
  title="Hunting Network Anomalies in a Railway Axle Counter System",
  journal="SENSORS",
  year="2023",
  volume="23",
  number="6",
  pages="1--19",
  doi="10.3390/s23063122",
  issn="1424-8220",
  url="https://www.mdpi.com/1424-8220/23/6/3122"
}