This paper considers the problem of providing, for computational processes, soft real-time (or reactive) response without the use of a hard real-time operating system. In particular, we focus on the problem of reactively computing fault diagnosis by means of different Bayesian network inference algorithms on non-real-time operating systems where low-criticality (background) process activity and system load is unpredictable. To address this problem, we take in this paper a reconfigurable adaptive control approach. Computation time is modeled using an ARX model where the input consists of the maximum number of background processes allowed to run at any given time. To ensure that the reactive (high-criticality) diagnosis is computed within a...
This paper presents a new dependency computational algorithm for reliability inference with dynamic ...
Bayesian networks, which may be compiled to arithmetic cir-cuits in the interest of speed and predic...
The paper presents a casual-probabilistic approach to the technical diagnosis in which the solution ...
Abstract-This paper considers the problem of providing, for computational processes, soft real-time ...
This paper investigates the challenge of integrating intelligent systems into varying computational ...
This thesis investigates the use Dynamic Bayesian Networks for the purpose of real time diagnosis an...
Electrical power systems play a critical role in spacecraft and aircraft. This paper discusses our d...
In this paper, we investigate the use of Bayesian networks to construct large-scale diagnostic syste...
We present in this paper a case study of the probabilistic approach to model-based diagnosis. Here, ...
Current trends, such as the increasing quality and consumption of video services, the adoption of 5G...
Bayesian networks, which may be compiled to arithmetic circuits in the interest of speed and predic...
International audienceThe purpose of this article is to present a new method for process diagnosis w...
Abstract: We present a new Bayesian network modeling that learns the behavior of an unknown system f...
Nowadays, chemical plants are becoming complex due to high dependency among operational va...
Bayesian Networks (BN) provides a robust probabilistic method of reasoning under uncertainty. They h...
This paper presents a new dependency computational algorithm for reliability inference with dynamic ...
Bayesian networks, which may be compiled to arithmetic cir-cuits in the interest of speed and predic...
The paper presents a casual-probabilistic approach to the technical diagnosis in which the solution ...
Abstract-This paper considers the problem of providing, for computational processes, soft real-time ...
This paper investigates the challenge of integrating intelligent systems into varying computational ...
This thesis investigates the use Dynamic Bayesian Networks for the purpose of real time diagnosis an...
Electrical power systems play a critical role in spacecraft and aircraft. This paper discusses our d...
In this paper, we investigate the use of Bayesian networks to construct large-scale diagnostic syste...
We present in this paper a case study of the probabilistic approach to model-based diagnosis. Here, ...
Current trends, such as the increasing quality and consumption of video services, the adoption of 5G...
Bayesian networks, which may be compiled to arithmetic circuits in the interest of speed and predic...
International audienceThe purpose of this article is to present a new method for process diagnosis w...
Abstract: We present a new Bayesian network modeling that learns the behavior of an unknown system f...
Nowadays, chemical plants are becoming complex due to high dependency among operational va...
Bayesian Networks (BN) provides a robust probabilistic method of reasoning under uncertainty. They h...
This paper presents a new dependency computational algorithm for reliability inference with dynamic ...
Bayesian networks, which may be compiled to arithmetic cir-cuits in the interest of speed and predic...
The paper presents a casual-probabilistic approach to the technical diagnosis in which the solution ...