I have a very strange problem
The weights that I get from training, when implied directly on input , return different results!
Ill show it on a very simple example
lets say we have an input vector `x= 0:0.01:1;`

and target vector `t=x^2`

(I know it better to use non linear network )
after training ,2 layer ,linear network ,with one neuron at each layer, we get:

`sim(net,0.95) = 0.7850`

(some error in training - thats ok and should be )
weights from `net.IW,net.LW,net.b:`

IW =

```
0.4547
```

LW =

```
2.1993
```

b =

```
0.3328 -1.0620
```

if I use the weights : Out = purelin(purelin(0.95*IW+b(1))*LW+b(2)) = 0.6200! , I get different result from the result of the sim!!! how can it be? whats wrong? after several hours of exploring , Im desperate:-(

the code:

```
%Main_TestWeights
close all
clear all
clc
t1 = 0:0.01:1;
x = t1.^2;
hiddenSizes = 1;
net = feedforwardnet(hiddenSizes);
[Xs,Xi,Ai,Ts,EWs,shift] = preparets(net,con2seq(t1),con2seq(x));
net.layers{1,1}.transferFcn = 'purelin';
[net,tr,Y,E,Pf,Af] = train(net,Xs,Ts,Xi,Ai);
view(net);
IW = cat(2,net.IW{1});
LW = cat(2,net.LW{2,1});
b = cat(2,[net.b{1,1},net.b{2,1}]);
%REsult from Sim
t2=0.95;
Yk = sim(net,t2)
%Result from Weights
x1 = IW*t2'+b(1)
x1out = purelin(x1)
x2 = purelin(x1out*(LW)+b(2))
```