This work presents the use of a high-fidelity neural network surrogate model within a Modular Optimization Framework for treatment of crud deposition as a constraint within light-water reactor core loading pattern optimization. The neural network was utilized for the treatment of crud constraints within the context of an advanced genetic algorithm applied to the core design problem. This proof-of-concept study shows that loading pattern optimization aided by a neural network surrogate model can optimize the manner in which crud distributes within a nuclear reactor without impacting operational parameters such as enrichment or cycle length. Several analysis methods were investigated. Analysis found that the surrogate model and genetic algori...
The link between reactor design studies and scenarios calculations is usually sequential. From a lis...
This dissertation develops a core management tool called RELOAD-M capable of optimizing reactor-core...
Reactor core design is inherently a multi-objective problem which spans a large design space, and po...
A strong correlation exists between subcooled boiling in assembly subchannels and CRUD deposition. I...
Pressurised Water Reactor (PWR) fuel management is an operational problem for nuclear operators, req...
This paper presents an approach for the optimisation of geological disposal canister loadings, combi...
In recent years, various types of surrogate optimization models have been proposed to reduce the com...
A new system to optimize both control rod pattern and fuel-loading design in boiling water reactors ...
The goal of the nuclear reactor in-core fuel management is to analyze and propose new core configura...
This paper investigates the applicability of surrogate model optimization (SMO) using deep learning ...
The study demonstrates an application of genetic algorithms (GAs) in the optimization of the first c...
Approaches are examined in the present paper to the application of genetic algorithms for optimizati...
This paper investigates the applicability of surrogate model optimization (SMO) using deep learning ...
Optimal performance of the crystallization process is of utmost importance for industries handling b...
During loading pattern (LP) optimization and reactor design, a lot of time consumption spent on eval...
The link between reactor design studies and scenarios calculations is usually sequential. From a lis...
This dissertation develops a core management tool called RELOAD-M capable of optimizing reactor-core...
Reactor core design is inherently a multi-objective problem which spans a large design space, and po...
A strong correlation exists between subcooled boiling in assembly subchannels and CRUD deposition. I...
Pressurised Water Reactor (PWR) fuel management is an operational problem for nuclear operators, req...
This paper presents an approach for the optimisation of geological disposal canister loadings, combi...
In recent years, various types of surrogate optimization models have been proposed to reduce the com...
A new system to optimize both control rod pattern and fuel-loading design in boiling water reactors ...
The goal of the nuclear reactor in-core fuel management is to analyze and propose new core configura...
This paper investigates the applicability of surrogate model optimization (SMO) using deep learning ...
The study demonstrates an application of genetic algorithms (GAs) in the optimization of the first c...
Approaches are examined in the present paper to the application of genetic algorithms for optimizati...
This paper investigates the applicability of surrogate model optimization (SMO) using deep learning ...
Optimal performance of the crystallization process is of utmost importance for industries handling b...
During loading pattern (LP) optimization and reactor design, a lot of time consumption spent on eval...
The link between reactor design studies and scenarios calculations is usually sequential. From a lis...
This dissertation develops a core management tool called RELOAD-M capable of optimizing reactor-core...
Reactor core design is inherently a multi-objective problem which spans a large design space, and po...