Nuclear simulations are often computationally expensive, time-consuming, and high-dimensional with respect to the number of input parameters. Thus exploring the space of all possible simulation outcomes is infeasible using finite computing resources. During simulation-based probabilistic risk analysis, it is important to discover the relationship between a potentially large number of input parameters and the output of a simulation using as few simulation trials as possible. This is a typical context for performing adaptive sampling where a few observations are obtained from the simulation, a surrogate model is built to represent the simulation space, and new samples are selected based on the model constructed. The surrogate model is then up...
An adaptive high dimensional model representation (HDMR) is used to decompose the response parameter...
Studying complex phenomena in detail by performing real experiments is often an unfeasible task. Vir...
Mathematical numerical models are increasingly employed to simulate system behavior and identify seq...
Nuclear simulations are often computationally expensive, time-consuming, and high-dimensional with r...
Understanding and describing expensive black box functions such as physical simulations is a common ...
A recent trend in the nuclear power engineering field is the implementation of heavily computational...
Dynamic probabilistic risk assessment (DPRA) methodologies couple system simulator codes (e.g., RELA...
simulator codes accurately model system dynamics (deterministically), simulation controller codes in...
The next generation of methodologies for nuclear reactor Probabilistic Risk Assessment (PRA) explici...
The next generation of methodologies for nuclear reactor Probabilistic Risk Assessment (PRA) explici...
Simulation-based system reliability prediction may require significant computations, particularly wh...
Interest in atomically detailed simulations has grown significantly with recent advances in computat...
International audienceIn the framework of the estimation of safety margins in nuclear accident analy...
International audienceThe computational burden of Large-eddy Simulation for reactive flows is exacer...
An adaptive Monte Carlo method for nuclear data evaluation is presented. A fast evaluation method ba...
An adaptive high dimensional model representation (HDMR) is used to decompose the response parameter...
Studying complex phenomena in detail by performing real experiments is often an unfeasible task. Vir...
Mathematical numerical models are increasingly employed to simulate system behavior and identify seq...
Nuclear simulations are often computationally expensive, time-consuming, and high-dimensional with r...
Understanding and describing expensive black box functions such as physical simulations is a common ...
A recent trend in the nuclear power engineering field is the implementation of heavily computational...
Dynamic probabilistic risk assessment (DPRA) methodologies couple system simulator codes (e.g., RELA...
simulator codes accurately model system dynamics (deterministically), simulation controller codes in...
The next generation of methodologies for nuclear reactor Probabilistic Risk Assessment (PRA) explici...
The next generation of methodologies for nuclear reactor Probabilistic Risk Assessment (PRA) explici...
Simulation-based system reliability prediction may require significant computations, particularly wh...
Interest in atomically detailed simulations has grown significantly with recent advances in computat...
International audienceIn the framework of the estimation of safety margins in nuclear accident analy...
International audienceThe computational burden of Large-eddy Simulation for reactive flows is exacer...
An adaptive Monte Carlo method for nuclear data evaluation is presented. A fast evaluation method ba...
An adaptive high dimensional model representation (HDMR) is used to decompose the response parameter...
Studying complex phenomena in detail by performing real experiments is often an unfeasible task. Vir...
Mathematical numerical models are increasingly employed to simulate system behavior and identify seq...