Bayesian networks, which may be compiled to arithmetic circuits in the interest of speed and predictability, provide a probabilistic method for system fault diagnosis. Currently, there is a limitation in arithmetic circuits in that they can only represent discrete random variables, while important fault types such as drift and offset faults are continuous and induce continuous sensor data. In this paper, we investigate how to handle continuous behavior by using discrete random variables with a small number of states, without using soft evidence, which is a traditional technique for handling continuous sensor data. We do so by integrating a method from statistical quality control, known as cumulative sum (CUSUM), with probabilistic rea...
This paper considers the problem of providing, for computational processes, soft real-time (or react...
The paper presents a casual-probabilistic approach to the technical diagnosis in which the solution ...
We propose a novel single event fault/error model based on Logic Induced Fault Encoded Directed Acyc...
Bayesian networks, which may be compiled to arithmetic cir-cuits in the interest of speed and predic...
Reliable systems health management is an important research area of NASA. A health management system...
We present in this paper a case study of the probabilistic approach to model-based diagnosis. Here, ...
Electrical power systems play a critical role in spacecraft and aircraft. This paper discusses our d...
Both intermittent and persistent faults may occur in a wide range of systems. We present in this pap...
In this paper, we investigate the use of Bayesian networks to construct large-scale diagnostic syste...
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 research develops a fault diagnosis method for complex systems in the presence of uncertainties...
Bayesian Network (BN) models are being successfully applied to improve fault diagnosis, which in tur...
International audienceIn the literature, several fault diagnosis methods, qualitative as well quanti...
Diagnosis applications relying on Artificial Intelligence methods must deal with uncertain knowledge...
This paper considers the problem of providing, for computational processes, soft real-time (or react...
The paper presents a casual-probabilistic approach to the technical diagnosis in which the solution ...
We propose a novel single event fault/error model based on Logic Induced Fault Encoded Directed Acyc...
Bayesian networks, which may be compiled to arithmetic cir-cuits in the interest of speed and predic...
Reliable systems health management is an important research area of NASA. A health management system...
We present in this paper a case study of the probabilistic approach to model-based diagnosis. Here, ...
Electrical power systems play a critical role in spacecraft and aircraft. This paper discusses our d...
Both intermittent and persistent faults may occur in a wide range of systems. We present in this pap...
In this paper, we investigate the use of Bayesian networks to construct large-scale diagnostic syste...
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 research develops a fault diagnosis method for complex systems in the presence of uncertainties...
Bayesian Network (BN) models are being successfully applied to improve fault diagnosis, which in tur...
International audienceIn the literature, several fault diagnosis methods, qualitative as well quanti...
Diagnosis applications relying on Artificial Intelligence methods must deal with uncertain knowledge...
This paper considers the problem of providing, for computational processes, soft real-time (or react...
The paper presents a casual-probabilistic approach to the technical diagnosis in which the solution ...
We propose a novel single event fault/error model based on Logic Induced Fault Encoded Directed Acyc...