Incorrect Neural Network output calculation through weights! Help!

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Hi guys, I confront a problem calculating Neural Network Outputs manually through weights.
The NN has the below specifications:
Input Size 7
1 Hidden Layer of Size 10
Output Size 10
I trained the network train(network,Inputs,Targets) with trainFcn = 'trainlm' and network.layers{1}.transferFcn = 'satlins'. Others defaults.
After training I extracted the weights with the commands below:
b1 = cell2mat(network.b(1)); %Table size 10x1
IW = cell2mat(network.IW); %Table size 10x7
b2 = cell2mat(network.b(2)); %Table size 10x1
LW = cell2mat(network.LW); %Table size 10x10
but when I tried for an input X=[1,1,1,1,1,1,1]':
out1 = purelin( LW * (satlins(IW * X + b1)) + b2 );
out2=network(X);
I took different results out1~=out2.
I have searched similar problems but I cannot adapt them to my problem. Could you help me? Thanks.

Accepted Answer

Greg Heath
Greg Heath on 23 Oct 2017
You did not take into account the default mapminmax normalization of inputs and outputs.
Hope this helps.
Thank you for formally accepting my answer
Greg
  1 Comment
Nikos Vasileiadis
Nikos Vasileiadis on 23 Oct 2017
Thank you Greg! Could you be more specific on how I can modify my calculation to have the right result? I tried to do something like this:
out1 = mapminmax (purelin( LW * (satlins(IW * mapminmax (X) + b1)) + b2 ));
but it didn't work.

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