Consistency-based diagnosis relies on the computation of discrepancies between model predictions and sensor observations. The traditional assumption that these discrepancies can be detected accurately (by means of thresholding for example) is in many cases reasonable and leads to strong performance. However, in situations of substantial uncertainty (due, for example, to sensor noise or model abstraction), more robust schemes need to be designed to make a binary decision on whether predictions are consistent with observations or not. However, if an accurate binary decision is not made, there are risks of occurrence of false alarms and missed alarms. Moreover when multiple sensors (with differing sensing properties) are available the degree...
The paper presents a casual-probabilistic approach to the technical diagnosis in which the solution ...
Bayesian networks have proven their value in solving complex diagnostic problems. The main bottlenec...
Bayesian networks, which may be compiled to arithmetic circuits in the interest of speed and predic...
Diagnosis applications relying on Artificial Intelligence methods must deal with uncertain knowledge...
One of NASA’s key mission requirements is robust state estimation. Sensing, using a wide range of se...
Bayesian Network (BN) models are being successfully applied to improve fault diagnosis, which in tur...
Bayesian networks have been widely used for classification problems. These models, structure of the ...
Classical model-based diagnosis uses a model of the system to infer diagnoses – explanations – of a ...
The author’s approach generates diagnosis model in the face of uncertainty in the relationship among...
The identification of sensors returning unreliable data is an important task when working with senso...
This research develops a fault diagnosis method for complex systems in the presence of uncertainties...
In the modern world, systems are becoming increasingly complex, consisting of large numbers of compo...
Besides detecting failures and predicting future health conditions of technical systems, fault diagn...
The feasibility of diagnostic reasoning in a Bayesian belief network, based on a genetic algorithm i...
AbstractModel-based diagnosis concerns using a model of the structure and behaviour of a system or d...
The paper presents a casual-probabilistic approach to the technical diagnosis in which the solution ...
Bayesian networks have proven their value in solving complex diagnostic problems. The main bottlenec...
Bayesian networks, which may be compiled to arithmetic circuits in the interest of speed and predic...
Diagnosis applications relying on Artificial Intelligence methods must deal with uncertain knowledge...
One of NASA’s key mission requirements is robust state estimation. Sensing, using a wide range of se...
Bayesian Network (BN) models are being successfully applied to improve fault diagnosis, which in tur...
Bayesian networks have been widely used for classification problems. These models, structure of the ...
Classical model-based diagnosis uses a model of the system to infer diagnoses – explanations – of a ...
The author’s approach generates diagnosis model in the face of uncertainty in the relationship among...
The identification of sensors returning unreliable data is an important task when working with senso...
This research develops a fault diagnosis method for complex systems in the presence of uncertainties...
In the modern world, systems are becoming increasingly complex, consisting of large numbers of compo...
Besides detecting failures and predicting future health conditions of technical systems, fault diagn...
The feasibility of diagnostic reasoning in a Bayesian belief network, based on a genetic algorithm i...
AbstractModel-based diagnosis concerns using a model of the structure and behaviour of a system or d...
The paper presents a casual-probabilistic approach to the technical diagnosis in which the solution ...
Bayesian networks have proven their value in solving complex diagnostic problems. The main bottlenec...
Bayesian networks, which may be compiled to arithmetic circuits in the interest of speed and predic...