city223 发表于 2010-4-9 16:31

matlab RBF神经网络程序运行出错的问题!!!

有一个RBF的神经网络程序,运行后出现以下错误,      
??? Error using ==> newrb
Inputs and Targets have different numbers of columns.
Error in ==> rbf3 at 143
net=newrb(X,T,err_goal,sc,10000,1);   
好像是p和t的列数要相等,但小弟不知道怎么修改,谁知道怎样修改呀!! 多谢了.
以下是程序源码
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city223 发表于 2010-4-9 16:33

X=m_data(:,1:4);T=m_data(:,5:6);

T=T';
%随机选取中心
C=X;
%定义delta平方为样本各点的协方差之和
delta=cov(X');
delta=sum(delta);
%隐含层输出H
for i=1:1:121
for j=1:1:121
   H(i,j)=((X(i,:)-C(j,:)))*((X(i,:)-C(j,:))');
   H(i,j)=exp(-H(i,j)./delta(j));
end
end
p=H;

%建模
%
err_goal=0.001;
sc=3;
net=newrb(X,T,err_goal,sc);
Y=sim(net,p);
E=T-Y;
SSE=sse(E);
MSE=mse(E);
%拟合图
figure;
for i=1:1:121
    plot(T(i,1),T(i,2),'*');
end
hold on;
plot(Y,'r:');
title('RBF网络拟合曲线图');
legend('化验值','估计值');
ylabel('利用率');
xlabel('输入样本点');
axis();
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