DocumentCode
641196
Title
A stochastic method for the detection of anomalous energy consumption in hybrid industrial systems
Author
Windmann, Stefan ; Shuo Jiao ; Niggemann, Oliver ; Borcherding, Holger
Author_Institution
Applic. Center Ind. Autom., Fraunhofer Inst. IOSB-INA, Germany
fYear
2013
fDate
29-31 July 2013
Firstpage
194
Lastpage
199
Abstract
In the presented work, the detection of anomalous energy consumption in hybrid industrial production systems is investigated. A model-based approach with a timed hybrid automaton as overall system model is employed for anomaly detection. The approach is based on the assumption of several system modes, i.e. phases with continuous system behavior. Transitions between the modes are attributed to discrete control events such as on/off signals. The underlying discrete event system which comprises both system modes and transitions is modeled as finite state machine. The focus of this paper is set on the modeling of the energy consumption in the particular system modes. Sequences of stochastic state space models are employed for this purpose. Model learning and anomaly detection for this approach are considered. The proposed approach is further evaluated in a small model factory. The experimental results show significant improvements compared to existing approaches to anomaly detection in hybrid industrial systems.
Keywords
energy consumption; fault diagnosis; manufacturing systems; state-space methods; stochastic automata; stochastic processes; anomalous energy consumption detection; discrete control events; hybrid automaton; hybrid industrial systems; model learning; stochastic method; stochastic state space models; Automata; Energy consumption; Equations; Kalman filters; Learning automata; Mathematical model; Standards;
fLanguage
English
Publisher
ieee
Conference_Titel
Industrial Informatics (INDIN), 2013 11th IEEE International Conference on
Conference_Location
Bochum
Type
conf
DOI
10.1109/INDIN.2013.6622881
Filename
6622881
Link To Document