Bayesian networks (BNs) have been used in different contexts of decision support solutions such as directive, strategic, tactical and operational. These contexts differ from each other only in the realization of the decision support in terms of time. The real-time implementation of BN in an embedded system for resource optimization is very challenging because of the low computation capacity in embedded systems and, to the best of our knowledge, has not been reported yet. In this paper, we present a BN based predictive assistance system that uses real-life data to perform the real-time decision support in industrial cleaning processes
Nowadays, Knowledge-Based systems are widespread decision-making tools applied in product design and...
AbstractAn approach to use Bayesian belief networks in optimization is presented, with an illustrati...
Task recognition and future human activity prediction are of importance for a safe and profitable hu...
Probabilistic machine learning approaches has been successfully applied in various applications and ...
International audienceThis paper deals with decision making in a real time optimization context unde...
The main objective of this paper is to present a new method of predictive maintenance which can dete...
This paper is concerned with decision support system (DSS) development for aid in decision-making wi...
Abstract: We present a new Bayesian network modeling that learns the behavior of an unknown system f...
textabstractRecently, Bayesian methods have been proposed for neural networks to solve regression an...
Bayesian decision theory is increasingly applied to support decision-making processes under environm...
We live in an era where every human entity, from a simple citizen to the head of an entity as large ...
In today's process systems, operators must consider an overwhelming amount of information which is p...
The maintenance optimization of complex systems is a key question. One important objective is to be ...
Abstract. We propose a new type of ubiquitous decision support system that is powered by a General B...
Decision Support Systems are computer based systems that are aimed at assisting decision-makers in t...
Nowadays, Knowledge-Based systems are widespread decision-making tools applied in product design and...
AbstractAn approach to use Bayesian belief networks in optimization is presented, with an illustrati...
Task recognition and future human activity prediction are of importance for a safe and profitable hu...
Probabilistic machine learning approaches has been successfully applied in various applications and ...
International audienceThis paper deals with decision making in a real time optimization context unde...
The main objective of this paper is to present a new method of predictive maintenance which can dete...
This paper is concerned with decision support system (DSS) development for aid in decision-making wi...
Abstract: We present a new Bayesian network modeling that learns the behavior of an unknown system f...
textabstractRecently, Bayesian methods have been proposed for neural networks to solve regression an...
Bayesian decision theory is increasingly applied to support decision-making processes under environm...
We live in an era where every human entity, from a simple citizen to the head of an entity as large ...
In today's process systems, operators must consider an overwhelming amount of information which is p...
The maintenance optimization of complex systems is a key question. One important objective is to be ...
Abstract. We propose a new type of ubiquitous decision support system that is powered by a General B...
Decision Support Systems are computer based systems that are aimed at assisting decision-makers in t...
Nowadays, Knowledge-Based systems are widespread decision-making tools applied in product design and...
AbstractAn approach to use Bayesian belief networks in optimization is presented, with an illustrati...
Task recognition and future human activity prediction are of importance for a safe and profitable hu...