Industrial network communication is highly deterministic as result of availability requirement of control systems in automated industrial production systems. This deterministic character helps with initial step of self-learning anomaly detection systems to detect periodic production cycle in industrial network communication. The methods for frequent episode mining in event sequences fits well to solve the challenge of production cycle detection for self-learning system. We encode the network communication events to serial and parallel episodes. Methods for discovery of frequent episodes in event sequences are briefly explained. These methods would be further adapted in future to our encoded network communication traffic to extract productio...
Frequent episode mining has been proposed as a data mining task with the goal of recovering sequenti...
The deterministic and restricted nature of industrial control system networks sets them apart from m...
The deterministic and restricted nature of industrial control system networks sets them apart from m...
Industrial network communication is highly deterministic as result of availability requirement of co...
Lion's share of process mining research focuses on the discovery of end-to-end process models descri...
Abstract. Lion’s share of process mining research focuses on the discov-ery of end-to-end process mo...
The main objective of network monitoring is to discover the event patterns that happen frequently. I...
The main objective of network monitoring is to discover the event patterns that happen frequently. I...
International audienceSequences of events describing the behavior and actions of agents or systems c...
Frequent episode discovery is a popular framework for pattern discovery from sequential data. It has...
Understanding the functioning of a neural system in terms of its underlying circuitry is an importan...
Abstract—In order to discover behavior patterns, current algorithms only analyze historical data in ...
This paper is concerned with the framework of frequent episode discovery in event sequences. A new t...
Frequent episode discovery is a popular framework in temporal data mining with many applications. An...
Understanding the functioning of a neural system in terms of its underlying circuitry is an importan...
Frequent episode mining has been proposed as a data mining task with the goal of recovering sequenti...
The deterministic and restricted nature of industrial control system networks sets them apart from m...
The deterministic and restricted nature of industrial control system networks sets them apart from m...
Industrial network communication is highly deterministic as result of availability requirement of co...
Lion's share of process mining research focuses on the discovery of end-to-end process models descri...
Abstract. Lion’s share of process mining research focuses on the discov-ery of end-to-end process mo...
The main objective of network monitoring is to discover the event patterns that happen frequently. I...
The main objective of network monitoring is to discover the event patterns that happen frequently. I...
International audienceSequences of events describing the behavior and actions of agents or systems c...
Frequent episode discovery is a popular framework for pattern discovery from sequential data. It has...
Understanding the functioning of a neural system in terms of its underlying circuitry is an importan...
Abstract—In order to discover behavior patterns, current algorithms only analyze historical data in ...
This paper is concerned with the framework of frequent episode discovery in event sequences. A new t...
Frequent episode discovery is a popular framework in temporal data mining with many applications. An...
Understanding the functioning of a neural system in terms of its underlying circuitry is an importan...
Frequent episode mining has been proposed as a data mining task with the goal of recovering sequenti...
The deterministic and restricted nature of industrial control system networks sets them apart from m...
The deterministic and restricted nature of industrial control system networks sets them apart from m...