Hidden Markov Models (HMM) are used to detect abnormal operation of dynamic processes and diagnose sensor and actuator faults. The method is illustrated by monitoring the operation of a pasteurization plant and diagnosing causes of abnormal operation. Process data collected under the influence of faults of different magnitude and duration in sensors and actuators are used to illustrate the use of HMM in the detection and diagnosis of process faults. Case studies with experimental data from a high-temperature-short-time pasteurization system showed that HMM can diagnose the faults with certain characteristics such as fault duration and magnitude.Endnote format citatio
The objective of this project is to evaluate and justify the use of a threshold condition based main...
International audienceThis paper proposes a novel approach to do online analysis of accidental fault...
As key sub-systems of HVACs, air handling systems are used to condition air to satisfy human thermal...
In this paper, fault detection in piecewise stationary industrial processes is investigated. Such pr...
International audienceA fault detection method exploiting Hidden Markov Models (HMMs) is proposed fo...
Hidden Markov Models (HMMs) are widely used in applied sciences and engineering. The potential appli...
International audiencePrediction of physical particular phenomenon is based on partial knowledge of ...
The availability maximization is a goal for any organization because the equipment downtime implies ...
The availability maximization is a goal for any organization because the equipment downtime implies ...
Multivariate statistical process monitoring (SPM), and fault detection and diagnosis (FDD) methods a...
Online condition monitoring and diagnosis systems play an important role in the modern manufacturing...
In this paper, a novel data-driven approach to monitoring of systems operating under variable operat...
Condition Based Maintenance (CBM)) is a concept that has become more and more important as the cost,...
International audienceReliability and safety are two important concepts in industrial applications. ...
In this thesis, we utilize hidden Markov model-based algorithms to address the problem of anomaly de...
The objective of this project is to evaluate and justify the use of a threshold condition based main...
International audienceThis paper proposes a novel approach to do online analysis of accidental fault...
As key sub-systems of HVACs, air handling systems are used to condition air to satisfy human thermal...
In this paper, fault detection in piecewise stationary industrial processes is investigated. Such pr...
International audienceA fault detection method exploiting Hidden Markov Models (HMMs) is proposed fo...
Hidden Markov Models (HMMs) are widely used in applied sciences and engineering. The potential appli...
International audiencePrediction of physical particular phenomenon is based on partial knowledge of ...
The availability maximization is a goal for any organization because the equipment downtime implies ...
The availability maximization is a goal for any organization because the equipment downtime implies ...
Multivariate statistical process monitoring (SPM), and fault detection and diagnosis (FDD) methods a...
Online condition monitoring and diagnosis systems play an important role in the modern manufacturing...
In this paper, a novel data-driven approach to monitoring of systems operating under variable operat...
Condition Based Maintenance (CBM)) is a concept that has become more and more important as the cost,...
International audienceReliability and safety are two important concepts in industrial applications. ...
In this thesis, we utilize hidden Markov model-based algorithms to address the problem of anomaly de...
The objective of this project is to evaluate and justify the use of a threshold condition based main...
International audienceThis paper proposes a novel approach to do online analysis of accidental fault...
As key sub-systems of HVACs, air handling systems are used to condition air to satisfy human thermal...