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S. Uguz, Yapay Sinir A?lar?-Matlab Uygulamas?

. Mathworks, Fit Data with a Neural Network

. N2=input,

. N3=input,

. N4=input,

, %% Normalization A=0.8*

, E3=A*(3.9526)+B*

, F6=1, pp.1-6

, F7=1, pp.1-7

. Emin=min,

. Emax=max,

, E=((F9-0.1)/0.8)*(Emax-Emin)+Emin