Title :
Using multiple genetic algorithms to generate radar point-scatterer models
Author :
Hughes, Evan J. ; Leyland, Maurice
Author_Institution :
Dept. of Aerosp., Power & Sensor, Cranfield Univ., Swindon, UK
fDate :
7/1/2000 12:00:00 AM
Abstract :
This paper covers the use of three different genetic algorithms applied sequentially to radar cross-section data to generate point-scatterer models. The aim is to provide automatic conversion of measured 2D/3D data of low, medium, or, high resolution into scatterer models. The resulting models are intended for use in a missile-target engagement simulator. The first genetic algorithm uses multiple species to locate the scattering centers. The second and third algorithms are for model fine tuning and optimization, respectively. Both of these algorithms use nondominated ranking to generate Pareto-optimal sets of results. The ability to choose results from the Pareto sets allows the designer some flexibility in the creation of the model. A method for constructing compound models to produce full 4 π sr coverage is detailed. Example results from the model generation process are presented
Keywords :
aerospace computing; aerospace simulation; digital simulation; genetic algorithms; missiles; radar theory; GA; Pareto-optimal sets; automatic conversion; measured 2D data; measured 3D data; missile-target engagement simulator; model fine tuning; model optimization; multiple genetic algorithms; nondominated ranking; radar cross-section data; radar point-scatterer model generation; Data conversion; Genetic algorithms; Image converters; Interpolation; Military computing; Missiles; Neural networks; Optical scattering; Radar cross section; Radar scattering;
Journal_Title :
Evolutionary Computation, IEEE Transactions on
DOI :
10.1109/4235.850655