# Normalize/denormalize and testing & validate ANN matlab

I am trying to design neural network in Matlab, I see in many source that the data that used with training neural network better to be normalize, use `[pn,ps] = mapstd(Input)` to normalize the input and target, then I train the network, last thing i test the network by `a=sim(net,pn)`; my problem is:

how to convert the result to normal result?

last thing, is there any way to train the network with new data to increase the performance? i mean train with more data where the weighing change slightly to increase the old performance it is clear that normalize is mean by this function `[pn,ps] = mapstd(Input)` all value will be in range of -1 to 1 as i think, the sim of neural network will be normalize result while i have to convert it again to the original range how?

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i didnt know how they are thinking who vote in negative!! –  Sayed Jun 16 '14 at 11:45
The negative votes are because your question is too vague and its pretty badly and unclearly explained. You should follow SO rules ig you want some help! give some code, how what is going wrong with it and what have you tried. As far as I know you can retune your NN but I dont know how. Also, the result of sim() is already a normal result. What do you mean by normal? Edit your question with some xexample, code to run, etc and i will help you and upvote you –  Ander Biguri Jun 16 '14 at 11:47
@AnderBiguri thank you very much, the normalize is done by [pn,ps] = mapstd(Input) where the result from neural network will be in same range from -1 to 1, while we have to return it to original range –  Sayed Jun 17 '14 at 5:24

To answer the first question you dont need to go very far. Read the documentation of mapstd(). In there you have a section called "Definition" you have exactly what you are looking for. It is explained why/how to use `mapstd()` and how to reverse the results in a network (ANN in your case) results after simulation. Read that and you'll now how to do it!