Journal
JOURNAL OF SUPERCOMPUTING
Volume -, Issue -, Pages -Publisher
SPRINGER
DOI: 10.1007/s11227-023-05764-5
Keywords
Big data; Cyber security; SCADA; Intrusion detection; Machine learning; Deep learning
Ask authors/readers for more resources
The growing volume of data, particularly imbalanced datasets, presents challenges in identifying cyberattacks on industrial control systems (ICS) networks. This study proposes an instance-based intrusion detection technique called ICS-IDS, specifically for SCADA networks in ICS systems. The technique utilizes data preparation and detection components to improve accuracy in detecting sophisticated attack vectors.
The growing volume of data, especially in cases of imbalanced datasets, has posed significant challenges in the classification process, particularly when it comes to identifying cyberattacks on industrial control systems (ICS) networks, which have been a source of concern due to the significant destructive impact of viruses such as Slammer, worms, Stuxnet, Duqu, Seismic Net, and Flame on critical infrastructures in various countries. The key challenge is constructing the intrusion detection system (IDS) framework to deal with imbalanced datasets. Many researchers work especially on binary classification, but multi-classification is a more challenging and still active research area. To deal with the multi-class imbalanced classification problem, we outline an instance-based intrusion detection technique named ICS-IDS, for intrusion detection in ICS systems specific to SCADA networks. The developed technique consists of two core components, the data preparation component, and the detection component. The data preparation component uses the normalization, Fisher Discriminant Analysis, and k-neighbor's method to scale the data, reduce the dimensionality, and resample the dataset, respectively. To learn the latent representations and discern harmful vectors from attacked data, the detection/recognition component leverages an efficient instance-based learner. The proposed ICS-IDS model outperforms existing attractive methods in detecting sophisticated attack vectors in ICS data, achieving 99% accuracy and 99% detection rates (DR) on an industrial network dataset. This proves the methodology's practicality for implementing security in real-world ICS networks.
Authors
I am an author on this paper
Click your name to claim this paper and add it to your profile.
Reviews
Recommended
No Data Available