International audienceIn this paper, Artificial Neural Network (ANN) and quadratic Response Surface (RS) empirical regression models are used as fast-running surrogates of a thermal-hydraulic (T-H) system code to reduce the computational burden associated with the estimation of the functional failure probability of a T-H passive system. The ANN and quadratic RS models are constructed on a limited-size set of input/output data examples of the nonlinear relationships underlying the original T-H code; once built, these models are used for performing, in an acceptable computational time, the numerous system response calculations needed for an accurate uncertainty propagation and failure probability estimation. An application to the functional f...
AbstractPassive system is widely used in new generation nuclear power plant (NPP) such as AP1000 and...
Thermal-Hydraulic (T-H) passive safety systems are potentially more reliable than active systems, an...
International audienceIn this paper, a simulation framework of analysis is presented aiming at evalu...
International audienceIn this work, bootstrapped artificial neural network (ANN) and quadratic respo...
Abstract: In this paper, bootstrapped Artificial Neural Network (ANN) and quadratic Response Surface...
International audienceThe estimation of the functional failure probability of a thermal-hydraulic (T...
The estimation of the functional failure probability of a thermal-hydraulic (T-H) passive system can...
quadratic Response Surfaces for the estimation of the functional failure probability of a thermal-hy...
International audienceThe computation of the reliability of a thermal-hydraulic (T-H) passive system...
International audienceThe quantitative reliability assessment of a thermal-hydraulic (T-H) passive s...
An incremental query learning algorithm is developed for generating an accurate representation of a ...
International audienceThe assessment of the functional failure probability of a thermal-hydraulic (T...
An Adaptive Metamodel-Based Subset Importance Sampling (AM-SIS) approach, previously developed by th...
AbstractPassive system is widely used in new generation nuclear power plant (NPP) such as AP1000 and...
Thermal-Hydraulic (T-H) passive safety systems are potentially more reliable than active systems, an...
International audienceIn this paper, a simulation framework of analysis is presented aiming at evalu...
International audienceIn this work, bootstrapped artificial neural network (ANN) and quadratic respo...
Abstract: In this paper, bootstrapped Artificial Neural Network (ANN) and quadratic Response Surface...
International audienceThe estimation of the functional failure probability of a thermal-hydraulic (T...
The estimation of the functional failure probability of a thermal-hydraulic (T-H) passive system can...
quadratic Response Surfaces for the estimation of the functional failure probability of a thermal-hy...
International audienceThe computation of the reliability of a thermal-hydraulic (T-H) passive system...
International audienceThe quantitative reliability assessment of a thermal-hydraulic (T-H) passive s...
An incremental query learning algorithm is developed for generating an accurate representation of a ...
International audienceThe assessment of the functional failure probability of a thermal-hydraulic (T...
An Adaptive Metamodel-Based Subset Importance Sampling (AM-SIS) approach, previously developed by th...
AbstractPassive system is widely used in new generation nuclear power plant (NPP) such as AP1000 and...
Thermal-Hydraulic (T-H) passive safety systems are potentially more reliable than active systems, an...
International audienceIn this paper, a simulation framework of analysis is presented aiming at evalu...