Abstract—Probabilistic graphical models are widely used in the context of fault diagnostics and prognostics, providing a framework to model the relationships between faults and tests in complex systems. Bayesian networks have sufficient repre-sentational power as a model for system-level diagnosis but are inadequate for domains involving prognosis. In order to perform fault prognostics, a model must have the capability to perform probabilistic reasoning over time. One model well suited to this problem is the continuous time Bayesian network (CTBN). In this paper, we propose a method of constructing a continuous time Bayesian network from a D-matrix, a common matrix representation of a diagnostic model. Additionally, we provide procedures fo...
AbstractThe usual methods of applying Bayesian networks to the modeling of temporal processes, such ...
The time duration in continuous time Bayesian networks, i.e., the time that a variable stays in a st...
AbstractPrognostic models are tools to predict the future outcome of disease and disease treatment, ...
We present a continuous-time Bayesian network (CTBN) framework for dynamic systems reliability model...
The maintenance optimization of complex systems is a key question. One important objective is to be ...
In this paper, we review the application of dynamic Bayesian networks to prognostic modelling. An e...
We discuss the main features of Generalized Continuous Time Bayesian Networks (GCTBN) as a reliabili...
The maintenance optimization of complex systems is a key question. One important objective is to be ...
In most industrial fields, the optimization of maintenance policies has become a key issue. To addre...
We discuss the main features of Generalized Continuous Time Bayesian Networks (GCTBN) as a dependabi...
We discuss the main features of Generalized Continuous Time Bayesian Networks (GCTBN) as a dependabi...
Temporal formalisms are useful in several applications such as planning, scheduling and diagnosis. P...
An extension to Continuous Time Bayesian Networks (CTBN) called Generalized CTBN (GCTBN) is presente...
This thesis investigates the use Dynamic Bayesian Networks for the purpose of real time diagnosis an...
Dynamic Bayesian networks (DBNs) are temporal probabilistic graphical models that model temporal eve...
AbstractThe usual methods of applying Bayesian networks to the modeling of temporal processes, such ...
The time duration in continuous time Bayesian networks, i.e., the time that a variable stays in a st...
AbstractPrognostic models are tools to predict the future outcome of disease and disease treatment, ...
We present a continuous-time Bayesian network (CTBN) framework for dynamic systems reliability model...
The maintenance optimization of complex systems is a key question. One important objective is to be ...
In this paper, we review the application of dynamic Bayesian networks to prognostic modelling. An e...
We discuss the main features of Generalized Continuous Time Bayesian Networks (GCTBN) as a reliabili...
The maintenance optimization of complex systems is a key question. One important objective is to be ...
In most industrial fields, the optimization of maintenance policies has become a key issue. To addre...
We discuss the main features of Generalized Continuous Time Bayesian Networks (GCTBN) as a dependabi...
We discuss the main features of Generalized Continuous Time Bayesian Networks (GCTBN) as a dependabi...
Temporal formalisms are useful in several applications such as planning, scheduling and diagnosis. P...
An extension to Continuous Time Bayesian Networks (CTBN) called Generalized CTBN (GCTBN) is presente...
This thesis investigates the use Dynamic Bayesian Networks for the purpose of real time diagnosis an...
Dynamic Bayesian networks (DBNs) are temporal probabilistic graphical models that model temporal eve...
AbstractThe usual methods of applying Bayesian networks to the modeling of temporal processes, such ...
The time duration in continuous time Bayesian networks, i.e., the time that a variable stays in a st...
AbstractPrognostic models are tools to predict the future outcome of disease and disease treatment, ...