A Genetic Fuzzy Neural Network for Pattern Recognition
نویسندگان
چکیده
In, th,is paper, a gen,etic fu,zzy n,eu,ro,l n,etwork f o r pattern, recognition, is proposed by applyin,g genwtic algorith,ms to th,e Kuian,-Cai f v z z y n,eural network. A genekic-guided self-organizinq learn,in,g a1gorith.m i s CO,pable of redncinuj th,e nmm'ber of f m z y neurons an,d in,creasinq recognxikion rates f o r th,e fixed n,um,ber of outpu,t neurons. Th.e simulataon,s h,ave indicated that the genetic f u z z y n,eural network can effectively recogn,ize various distorted pa t t e rns with, good recognition, rates.
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تاریخ انتشار 1997