This paper develops a generic degradation model based on Dynamic Bayesian Networks (DBN) which predicts the condition of a technical system. Besides handling bi-directional reasoning, a major benefit of this degradation model using a DBN is its ability to adequately model stochastic processes as well as Markov chains. We will assume that the behavior of the degradation can be represented as a P–F-curve (also called degradation or life curve). The model developed here is able to combine information from expert knowledge, any kind of sensor and operating data as well as information from the machine operator. Using the Bayesian approach, uncertain knowledge can be handled appropriately. Thus it is even possible to take into account the environ...
Abstract — The maintenance of complex systems is a discipline that requires great knowledge and grea...
In this a paper an approach for monitoring the degradation of a guiding system as a component of a l...
We consider a three-state continuous-time semi-Markov process with Weibull-distributed transition ti...
This paper develops a generic degradation model based on Dynamic Bayesian Networks (DBN) which predi...
In this paper a generic degradation model based on Dynamic Bayesian Networks (DBN) which predicts th...
Abstract: The work reported here presents an original method to model dependability of systems, taki...
International audienceThis paper presents a procedure for failure prognostic by using Dynamic Bayesi...
SAFEPROCESS'15 - 9th IFAC Symposium on Fault Detection, Supervision and Safety for Technical Process...
In this paper, we review the application of dynamic Bayesian networks to prognostic modelling. An e...
The maintenance optimization of complex systems is a key question. One important objective is to be ...
Abstract – The degradation checking of critical components is one of the efficient means to minimize...
Nowadays, the main challenge in maintenance is to establish a dynamic maintenance strategy to signif...
The maintenance optimization of complex systems is a key question. One important objective is to be ...
A generic framework for stochastic modeling of deterioration processes is proposed, based on dynamic...
Abstract: Nowadays, the complex manufacturing processes have to be dynamically modelled and controll...
Abstract — The maintenance of complex systems is a discipline that requires great knowledge and grea...
In this a paper an approach for monitoring the degradation of a guiding system as a component of a l...
We consider a three-state continuous-time semi-Markov process with Weibull-distributed transition ti...
This paper develops a generic degradation model based on Dynamic Bayesian Networks (DBN) which predi...
In this paper a generic degradation model based on Dynamic Bayesian Networks (DBN) which predicts th...
Abstract: The work reported here presents an original method to model dependability of systems, taki...
International audienceThis paper presents a procedure for failure prognostic by using Dynamic Bayesi...
SAFEPROCESS'15 - 9th IFAC Symposium on Fault Detection, Supervision and Safety for Technical Process...
In this paper, we review the application of dynamic Bayesian networks to prognostic modelling. An e...
The maintenance optimization of complex systems is a key question. One important objective is to be ...
Abstract – The degradation checking of critical components is one of the efficient means to minimize...
Nowadays, the main challenge in maintenance is to establish a dynamic maintenance strategy to signif...
The maintenance optimization of complex systems is a key question. One important objective is to be ...
A generic framework for stochastic modeling of deterioration processes is proposed, based on dynamic...
Abstract: Nowadays, the complex manufacturing processes have to be dynamically modelled and controll...
Abstract — The maintenance of complex systems is a discipline that requires great knowledge and grea...
In this a paper an approach for monitoring the degradation of a guiding system as a component of a l...
We consider a three-state continuous-time semi-Markov process with Weibull-distributed transition ti...