National Repository of Grey Literature 2 records found  Search took 0.02 seconds. 
Automata Learning for Fast Detection of Anomalies in Network Traffic
Hošták, Viliam Samuel ; Matoušek, Petr (referee) ; Holík, Lukáš (advisor)
The focus of this thesis is the fast network anomaly detection based on automata learning. It describes and compares several chosen automata learning algorithms including their adaptation for the learning of network characteristics. In this work, various network anomaly detection methods based on learned automata are proposed which can detect sequential as well as statistical anomalies in target communication. For this purpose, they utilize automata's mechanisms, their transformations, and statistical analysis. Proposed detection methods were implemented and evaluated using network traffic of the protocol IEC 60870-5-104 which is commonly used in industrial control systems.
Automata Learning for Fast Detection of Anomalies in Network Traffic
Hošták, Viliam Samuel ; Matoušek, Petr (referee) ; Holík, Lukáš (advisor)
The focus of this thesis is the fast network anomaly detection based on automata learning. It describes and compares several chosen automata learning algorithms including their adaptation for the learning of network characteristics. In this work, various network anomaly detection methods based on learned automata are proposed which can detect sequential as well as statistical anomalies in target communication. For this purpose, they utilize automata's mechanisms, their transformations, and statistical analysis. Proposed detection methods were implemented and evaluated using network traffic of the protocol IEC 60870-5-104 which is commonly used in industrial control systems.

Interested in being notified about new results for this query?
Subscribe to the RSS feed.