This paper presents an approach for the optimisation of geological disposal canister loadings, combining high resolution simulations of used nuclear fuel characteristics with an articial neural network and a genetic algorithm. The used nuclear fuels (produced in an open fuel cycle without reprocessing) considered in this work come from a Swiss Pressurised Water Reactor, taking into account their realistic lifetime in the reactor core and cooling periods, up to their disposal in the final geological repository. The case of 212 representative used nuclear fuel assemblies is analysed, assuming a loading of 4 fuel assemblies per canister, and optimizing two safety parameters: the fuel decay heat (DH) and the canister effective neutron multiplic...
[[abstract]]A method that includes a genetic algorithm (GA), principal component analysis (PCA), and...
International audienceScenario studies simulate the whole fuel cycle over a period of time, from ext...
International audienceSince Sodium cooled Fast Reactors are present in many scenarios and strategies...
This paper presents an approach for the optimisation of geological disposal canister loadings, combi...
Approaches are examined in the present paper to the application of genetic algorithms for optimizati...
This work presents the use of a high-fidelity neural network surrogate model within a Modular Optimi...
International audienceDynamic fuel cycle simulation tools calculate nuclei inventories and mass flow...
Pressurised Water Reactor (PWR) fuel management is an operational problem for nuclear operators, req...
The study demonstrates an application of genetic algorithms (GAs) in the optimization of the first c...
The paper describes the design of an efficient and robust genetic algorithm for the nuclear fuel loa...
This research demonstrates the feasibility of using neural backpropagation networks to perform neutr...
Neural networks are an attractive alternative for modeling complex problems with too many difficulti...
© 2018 Elsevier B.V. The loss of coolant accident (LOCA) of a nuclear power plant (NPP) is a severe ...
The paper describes the design of an efficient and robust genetic algorithm for the nuclear fuel loa...
Machine Learning and Deep Learning techniques are gaining popularity due to the numerous application...
[[abstract]]A method that includes a genetic algorithm (GA), principal component analysis (PCA), and...
International audienceScenario studies simulate the whole fuel cycle over a period of time, from ext...
International audienceSince Sodium cooled Fast Reactors are present in many scenarios and strategies...
This paper presents an approach for the optimisation of geological disposal canister loadings, combi...
Approaches are examined in the present paper to the application of genetic algorithms for optimizati...
This work presents the use of a high-fidelity neural network surrogate model within a Modular Optimi...
International audienceDynamic fuel cycle simulation tools calculate nuclei inventories and mass flow...
Pressurised Water Reactor (PWR) fuel management is an operational problem for nuclear operators, req...
The study demonstrates an application of genetic algorithms (GAs) in the optimization of the first c...
The paper describes the design of an efficient and robust genetic algorithm for the nuclear fuel loa...
This research demonstrates the feasibility of using neural backpropagation networks to perform neutr...
Neural networks are an attractive alternative for modeling complex problems with too many difficulti...
© 2018 Elsevier B.V. The loss of coolant accident (LOCA) of a nuclear power plant (NPP) is a severe ...
The paper describes the design of an efficient and robust genetic algorithm for the nuclear fuel loa...
Machine Learning and Deep Learning techniques are gaining popularity due to the numerous application...
[[abstract]]A method that includes a genetic algorithm (GA), principal component analysis (PCA), and...
International audienceScenario studies simulate the whole fuel cycle over a period of time, from ext...
International audienceSince Sodium cooled Fast Reactors are present in many scenarios and strategies...