One of NASA’s key mission requirements is robust state estimation. Sensing, using a wide range of sensors and sensor fusion approaches, plays a central role in robust state estimation, and there is a need to diagnose sensor failure as well as component failure. Sensor validation techniques address this problem: given a vector of sensor readings, decide whether sensors have failed, therefore producing bad data. We take in this paper a probabilistic approach, using Bayesian networks, to diagnosis and sensor validation, and investigate several relevant but slightly different Bayesian network queries. We emphasize that on-board inference can be performed on a compiled model, giving fast and predictable execution times. Our results are illustrat...
Electrical power systems play a critical role in spacecraft and aircraft. This paper discusses our d...
Bayesian networks have been widely used for classification problems. These models, structure of the ...
Sensor networks are widely used in industrial and academic applications as the pervasive sensing mod...
One of NASA’s key mission requirements is robust state estimation. Sensing, using a wide range of se...
Consistency-based diagnosis relies on the computation of discrepancies between model predictions and...
This paper develops a new theory and model for information and sensor validation. The model represen...
The identification of sensors returning unreliable data is an important task when working with senso...
The anticipated 'sensing environments' of the near future pose new requirements to the data manageme...
Bayesian networks, which may be compiled to arithmetic circuits in the interest of speed and predic...
Modelling based on probabilistic inference can be used to estimate the quality of information delive...
In the modern world, systems are becoming increasingly complex, consisting of large numbers of compo...
Data faults in sensor networks must be marked to ensure accurate inferences. We introduce a two pha...
For many real time applications, it is important to validate the information received form the senso...
Modelling based on probabilistic inference can be used to estimate the quality of information delive...
Reliable systems health management is an important research area of NASA. A health management system...
Electrical power systems play a critical role in spacecraft and aircraft. This paper discusses our d...
Bayesian networks have been widely used for classification problems. These models, structure of the ...
Sensor networks are widely used in industrial and academic applications as the pervasive sensing mod...
One of NASA’s key mission requirements is robust state estimation. Sensing, using a wide range of se...
Consistency-based diagnosis relies on the computation of discrepancies between model predictions and...
This paper develops a new theory and model for information and sensor validation. The model represen...
The identification of sensors returning unreliable data is an important task when working with senso...
The anticipated 'sensing environments' of the near future pose new requirements to the data manageme...
Bayesian networks, which may be compiled to arithmetic circuits in the interest of speed and predic...
Modelling based on probabilistic inference can be used to estimate the quality of information delive...
In the modern world, systems are becoming increasingly complex, consisting of large numbers of compo...
Data faults in sensor networks must be marked to ensure accurate inferences. We introduce a two pha...
For many real time applications, it is important to validate the information received form the senso...
Modelling based on probabilistic inference can be used to estimate the quality of information delive...
Reliable systems health management is an important research area of NASA. A health management system...
Electrical power systems play a critical role in spacecraft and aircraft. This paper discusses our d...
Bayesian networks have been widely used for classification problems. These models, structure of the ...
Sensor networks are widely used in industrial and academic applications as the pervasive sensing mod...