The study demonstrates an application of genetic algorithms (GAs) in the optimization of the first core loading pattern. The Massachusetts Institute of Technology (MIT) BEAVRS pressurized water reactor (PWR) model was applied with PARCS nodal-diffusion core simulator coupled with GA numerical tool to perform pattern selection. In principle, GAs have been successfully used in many nuclear engineering problems such as core geometry optimization and fuel confi guration. In many cases, however, these analyses focused on optimizing only a single parameter, such as the effective neutron multiplication factor (keff), and often limited to the simplified core model. On the contrary, the GAs developed in this work are equipped with multiple-purpose f...
AbstractIn this research, for the first time, a new optimization method, i.e., strength Pareto evolu...
Reactor core design is inherently a multi-objective problem which spans a large design space, and po...
In this research, for the first time, a new optimization method, i.e., strength Pareto evolutionary ...
Approaches are examined in the present paper to the application of genetic algorithms for optimizati...
In nuclear power plants feedwater heaters are used to heat feedwater from its temperature leaving th...
The goal of the nuclear reactor in-core fuel management is to analyze and propose new core configura...
The optimization problem of nuclear fuel management, reported in the present study aimed at arrivin...
The paper describes the design of an efficient and robust genetic algorithm for the nuclear fuel loa...
The paper describes the design of an efficient and robust genetic algorithm for the nuclear fuel loa...
This work extends the research related to genetic algorithms (GA) in core design optimization proble...
The design of pressurized water reactor reload cores is not only a formidable optimization problem b...
The Versatile Test Reactor (VTR) is expected to operate in a persistent non-equilibrium state due to...
Nuclear fuel management was done by optimizing fuel loading pattern in a reactor core. Practically, ...
This dissertation develops a core management tool called RELOAD-M capable of optimizing reactor-core...
This paper presents one solution of the Traveling Salesman Problem (TSP) based upon genetic algorith...
AbstractIn this research, for the first time, a new optimization method, i.e., strength Pareto evolu...
Reactor core design is inherently a multi-objective problem which spans a large design space, and po...
In this research, for the first time, a new optimization method, i.e., strength Pareto evolutionary ...
Approaches are examined in the present paper to the application of genetic algorithms for optimizati...
In nuclear power plants feedwater heaters are used to heat feedwater from its temperature leaving th...
The goal of the nuclear reactor in-core fuel management is to analyze and propose new core configura...
The optimization problem of nuclear fuel management, reported in the present study aimed at arrivin...
The paper describes the design of an efficient and robust genetic algorithm for the nuclear fuel loa...
The paper describes the design of an efficient and robust genetic algorithm for the nuclear fuel loa...
This work extends the research related to genetic algorithms (GA) in core design optimization proble...
The design of pressurized water reactor reload cores is not only a formidable optimization problem b...
The Versatile Test Reactor (VTR) is expected to operate in a persistent non-equilibrium state due to...
Nuclear fuel management was done by optimizing fuel loading pattern in a reactor core. Practically, ...
This dissertation develops a core management tool called RELOAD-M capable of optimizing reactor-core...
This paper presents one solution of the Traveling Salesman Problem (TSP) based upon genetic algorith...
AbstractIn this research, for the first time, a new optimization method, i.e., strength Pareto evolu...
Reactor core design is inherently a multi-objective problem which spans a large design space, and po...
In this research, for the first time, a new optimization method, i.e., strength Pareto evolutionary ...