The 7th International Conference on Next Generation Computing 2021 (2021.11)바로가기
페이지
pp.95-99
저자
Hee-Yong Kwon, Taesic Kim, Mun-Kyu Lee
언어
영어(ENG)
URL
https://www.earticle.net/Article/A448017
원문정보
초록
영어
With advanced internet of things (IoT) and cloud/edge computing, industrial control systems (ICSs) are evolving. However, there are critical concerns and challenges about the cybersecurity of the IoT-enabled ICSs against cyber-attacks. To reduce the risk of cyber-attacks, an intrusion detection system (IDS) is required. In general, IDS utilizes signature-based or behavior-based methods to detect potential harmful anomalies. In this paper, we propose a hybrid intrusion detection approach deploying a statistical filtering method and a composite autoencoder to effectively detect anomalous behaviors caused by cyber-attacks. The proposed method is validated by experimental data acquired from a real water treatment system as a case study of cyberattack on ICSs.
목차
Abstract I. INTRODUCTION II. RELATED WORKS A. Water Treatment ICS B. Composite Autoencoder III. PROPOSED METHOD IV. IMPLEMENTATION AND VALIDATION V. CONCLUSION AND FUTURE WORK ACKNOWLEDGMENT REFERENCES
키워드
AutoencoderNeural NetworkCybersecurityIndustrial Control SystemIntrusion Detection
저자
Hee-Yong Kwon [ Department of Electrical and Computer Engineering Inha University ]
Taesic Kim [ Department of Electrical Engineering and Computer Science Texas A&M University-Kingsville TX, USA ]
Mun-Kyu Lee [ Department of Electrical and Computer Engineering Inha University ]