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. Mode...
Innovative methods have been developed for diagnosis, activity monitoring, and state estimation that...
In this paper, stochastic models for fault detection in industrial automation processes are investig...
Anomaly detection is concerned with identifying rare events/ observations that differ substantially ...
In the presented work, the detection of anomalous energy consumption in hybrid industrial production...
This paper presents a novel model-based approach for the prediction of energy consumption in product...
Electricity, water or air are some Industrial energy carriers which are struggling under the prices ...
Model-learning is the key to the new generation of intelligent automation systems: Without the autom...
Modern industrial plants become more complex and consequently monitoring them often exceeds the capa...
The topic of early detection of faults has great relevance for the implementation of more rational a...
This paper proposes a new efficient approach to optimize energy consumption for energy aware buildin...
In the present work, fault detection in industrial automation processes is investigated. A fault det...
In times of rising energy costs and increasing customer awareness of sustainable production methods,...
The contribution of renewable energies to the reduction of the impact of fossil fuels sources and es...
A tailored model of a system is the prerequisite for various analysis tasks, such as anomaly detecti...
To overcome the environmental impacts of a manufacturing factory over its life cycle, the role of su...
Innovative methods have been developed for diagnosis, activity monitoring, and state estimation that...
In this paper, stochastic models for fault detection in industrial automation processes are investig...
Anomaly detection is concerned with identifying rare events/ observations that differ substantially ...
In the presented work, the detection of anomalous energy consumption in hybrid industrial production...
This paper presents a novel model-based approach for the prediction of energy consumption in product...
Electricity, water or air are some Industrial energy carriers which are struggling under the prices ...
Model-learning is the key to the new generation of intelligent automation systems: Without the autom...
Modern industrial plants become more complex and consequently monitoring them often exceeds the capa...
The topic of early detection of faults has great relevance for the implementation of more rational a...
This paper proposes a new efficient approach to optimize energy consumption for energy aware buildin...
In the present work, fault detection in industrial automation processes is investigated. A fault det...
In times of rising energy costs and increasing customer awareness of sustainable production methods,...
The contribution of renewable energies to the reduction of the impact of fossil fuels sources and es...
A tailored model of a system is the prerequisite for various analysis tasks, such as anomaly detecti...
To overcome the environmental impacts of a manufacturing factory over its life cycle, the role of su...
Innovative methods have been developed for diagnosis, activity monitoring, and state estimation that...
In this paper, stochastic models for fault detection in industrial automation processes are investig...
Anomaly detection is concerned with identifying rare events/ observations that differ substantially ...