This work aims to propose an adequate graph modeling approach for nuclear safety accident systems and sequences.These systems and sequences come from "Probabilistic Safety Analysis" (PSA) which is an exhaustive analysis of all possible accident scenarios, to estimate their probabilities of occurrence (by grouping them by families) and the associated consequences.Then, an analysis of the resulting networks is performed by network centrality measures. A first application consists on predicting the nuclear Risk Increase Factor, which is a PSA importance factor, using supervised learning algorithms : classification tree methods, logistic regression and ensemble learning methods, on un balanced data. Furthermore, a new synthetic centrality coeff...
In this paper a methodology is proposed to compute spatial concentrations of point-based events on a...
International audienceIn this work, complex network theory is applied for the first time in the fiel...
A probabilistic Structural Equation Model (SEM) based on a Bayesian network construction is introduc...
Ce travail propose une modélisation adéquate en graphes pour les systèmes et séquences accidentelles...
We investigate the use of a topology-based clustering technique on the data generated by dynamic eve...
The recent trend to use a best estimate plus uncertainty (BEPU) approach to nuclear reactor safety a...
AbstractOver the last decade, Nuclear energy has become one of important energy. Nuclear power syste...
This Ph. D. work addresses the vulnerability analysis of safety-critical systems (e.g., nuclear powe...
Radioactive corrosion products released into the primary coolant loop dominate the final shutdown ra...
Bayesian networks can be used for the risk assessment of nuclear waste repositories by (i) modeling ...
Data-clustering tools can be employed to generate new knowledge for the diagnosis and treatment of c...
The method proposed in this paper represents a novel approach where graph-theoretic models used in a...
The harnessing of nuclear energy as means to provide an alternative source of energy has helped prov...
International audienceThe objective of the present work is to develop a novel approach for combining...
The four chapters of this Ph.D. thesis follow two research axes.First, I develop theoretical and sta...
In this paper a methodology is proposed to compute spatial concentrations of point-based events on a...
International audienceIn this work, complex network theory is applied for the first time in the fiel...
A probabilistic Structural Equation Model (SEM) based on a Bayesian network construction is introduc...
Ce travail propose une modélisation adéquate en graphes pour les systèmes et séquences accidentelles...
We investigate the use of a topology-based clustering technique on the data generated by dynamic eve...
The recent trend to use a best estimate plus uncertainty (BEPU) approach to nuclear reactor safety a...
AbstractOver the last decade, Nuclear energy has become one of important energy. Nuclear power syste...
This Ph. D. work addresses the vulnerability analysis of safety-critical systems (e.g., nuclear powe...
Radioactive corrosion products released into the primary coolant loop dominate the final shutdown ra...
Bayesian networks can be used for the risk assessment of nuclear waste repositories by (i) modeling ...
Data-clustering tools can be employed to generate new knowledge for the diagnosis and treatment of c...
The method proposed in this paper represents a novel approach where graph-theoretic models used in a...
The harnessing of nuclear energy as means to provide an alternative source of energy has helped prov...
International audienceThe objective of the present work is to develop a novel approach for combining...
The four chapters of this Ph.D. thesis follow two research axes.First, I develop theoretical and sta...
In this paper a methodology is proposed to compute spatial concentrations of point-based events on a...
International audienceIn this work, complex network theory is applied for the first time in the fiel...
A probabilistic Structural Equation Model (SEM) based on a Bayesian network construction is introduc...