Abstract:
A method of multiobjective optimization on the basis of the NSGA-II algorithm
with approximate models for an optimized object is proposed. Artificial neural
networks with radial basis functions (RBF networks) are used to construct the
approximate models whose parameters are determined with an evolutionary algorithm.
The multiobjective optimization of the working process of a gas turbine engine
is studied as an example.
Keywords:approximation; response surface model (RSM); RBF networks; multiobjective optimization; gas turbine engine parameters.