Abstract

Supervisory Control and Data Acquisition (SCADA) systems play a significant role in providing remote access, monitoring and control of critical infrastructures (CIs) which includes electrical power systems, water distribution systems, nuclear power plants, etc. The growing interconnectivity, standardization of communication protocols and remote accessibility of modern SCADA systems have contributed massively to the exposure of SCADA systems and CIs to various forms of security challenges. Any form of intrusive action on the SCADA modules and communication networks can create devastating consequences on nations due to their strategic importance to CIs’ operations. Therefore, the prompt and efficient detection and classification of SCADA systems intrusions hold great importance for national CIs operational stability. Due to their well-recognized and documented efficiencies, several literature works have proposed numerous supervised learning techniques for SCADA intrusion detection and classification (IDC). This paper presents a critical review of recent studies whereby supervised learning techniques were modelled for SCADA intrusion solutions. The paper aims to contribute to the state-of-the-art, recognize critical open issues and offer ideas for future studies. The intention is to provide a research-based resource for researchers working on industrial control systems security. The analysis and comparison of different supervised learning techniques for SCADA IDC systems were critically reviewed, in terms of the methodologies, datasets and testbeds used, feature engineering and optimization mechanisms and classification procedures. Finally, we briefly summarized some suggestions and recommendations for future research works.

Highlights

  • Supervisory Control and Data Acquisition (SCADA) systems play a significant role in providing remote access, monitoring and control of critical infrastructures (CIs), which includes power systems, water distribution systems, gas plants, wastewater collection systems, etc. [1,2,3,4]

  • This paper presents a critical review of recent research works whereby supervised learning algorithms ranging from artificial neural networks (ANN), k-nearest neighbors (k-NN), etc. were modelled for SCADA intrusion detection and classification (IDC)

  • Security is a major issue in modern-day SCADA system operations as the networks are constantly under high threats of sophisticated intrusions and attacks

Read more

Summary

A Review of Research Works on Supervised Learning

Oyeniyi Akeem Alimi 1, * , Khmaies Ouahada 1 , Adnan M.

Introduction
Materials and Methods
Brief Overview of Modern SCADA Architecture
Supervised Learning for SCADA Security
Datasets Generation Mechanism Overview
Feature Engineering and Optimization Mechanism
Classification Mechanism
Method Strength
Suggestions and Recommendations for Future Works
Findings
Conclusions
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call