Title :
An Evaluation of Machine Learning Methods to Detect Malicious SCADA Communications
Author :
Beaver, Justin M. ; Borges-Hink, Raymond C. ; Buckner, Mark A.
Author_Institution :
Oak Ridge Nat. Lab., Oak Ridge, TN, USA
Abstract :
Critical infrastructure Supervisory Control and Data Acquisition (SCADA) systems have been designed to operate on closed, proprietary networks where a malicious insider posed the greatest threat potential. The centralization of control and the movement towards open systems and standards has improved the efficiency of industrial control, but has also exposed legacy SCADA systems to security threats that they were not designed to mitigate. This work explores the viability of machine learning methods in detecting the new threat scenarios of command and data injection. Similar to network intrusion detection systems in the cyber security domain, the command and control communications in a critical infrastructure setting are monitored, and vetted against examples of benign and malicious command traffic, in order to identify potential attack events. Multiple learning methods are evaluated using a dataset of Remote Terminal Unit communications, which included both normal operations and instances of command and data injection attack scenarios.
Keywords :
SCADA systems; computer network security; critical infrastructures; industrial control; learning (artificial intelligence); open systems; command and control communication; critical infrastructure monitoring; critical infrastructure systems; cyber security domain; data injection attack; industrial control; machine learning method; malicious SCADA communication detection; network intrusion detection system; open standards; open systems; potential attack event identification; remote terminal unit communication; security threat potential; supervisory control and data acquisition; Intrusion detection; Learning systems; Machine learning algorithms; Pipelines; SCADA systems; Telemetry; SCADA; critical infrastructure protection; intrusion detection; machine learning; network;
Conference_Titel :
Machine Learning and Applications (ICMLA), 2013 12th International Conference on
Conference_Location :
Miami, FL
DOI :
10.1109/ICMLA.2013.105