Abstract

Critical infrastructures have recently been integrated with digital controls to support intelligent decision making. Although this integration provides various benefits and improvements, it also exposes the system to new cyberattacks. In particular, the injection of false data and commands into communication is one of the most common and fatal cyberattacks in critical infrastructures. Hence, in this paper, we investigate the effectiveness of machine-learning algorithms in detecting False Data Injection Attacks (FDIAs). In particular, we focus on two of the most widely used critical infrastructures, namely power systems and water treatment plants. This study focuses on tackling two key technical issues: (1) finding the set of best features under a different combination of techniques and (2) resolving the class imbalance problem using oversampling methods. We evaluate the performance of each algorithm in terms of time complexity and detection accuracy to meet the time-critical requirements of critical infrastructures. Moreover, we address the inherent skewed distribution problem and the data imbalance problem commonly found in many critical infrastructure datasets. Our results show that the considered minority oversampling techniques can improve the Area Under Curve (AUC) of GradientBoosting, AdaBoost, and kNN by 10–12%.

Highlights

  • Today, the umbrella term ’Industry 4.0’ represents the integration of digital control, Information and Communications Technology (ICT), and intelligent decision-making into critical infrastructures

  • We present the details of False Data Injection Attacks (FDIAs) and other attacks targeted to the CyberPhysical System (CPS) and provide a summary of existing FDIA detection methods based on machine learning

  • The performance improvement was tested and validated through various experimental results. These experiments include feature selection methods, oversampling techniques, and training and testing Machine Learning (ML) algorithms on two popular datasets related to power systems and water treatment plants

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Summary

Introduction

The umbrella term ’Industry 4.0’ represents the integration of digital control, Information and Communications Technology (ICT), and intelligent decision-making into critical infrastructures. This upgrade is possible due to the amalgamation of information and industrial technologies into standard components and processes [1,2]. Electricity distribution and usage can be optimized in smart grids. In-time data about usage and plant treatment capacity can reduce water wastage. Along with various benefits and improvements, the addition of new components into critical infrastructures presents new vulnerabilities [3,4,5]. Even a low-scale attack that causes a few critical infrastructure components to malfunction can impact the whole system

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