- https://www.mathworks.com/help/deeplearning/ref/mapminmax.html
Do I need to normalise input and target data when training an ANN using fitnet?
5 views (last 30 days)
Show older comments
I am training an artificial neural network using MATLAB's `fitnet` function with 5 input variables (e.g., compression ratio, HES, SOI, injection duration, RPM) and 10 outputs (e.g., BTE, NOx, BSFC, Torque, CO, etc.).
I understand that `fitnet` automatically normalises input data using `mapminmax`. However, I am not sure whether I also need to manually normalise the **target (output)** data before training.
Do I need to normalise the **outputs** manually, especially when they vary widely in scale (e.g., NOx in ppm, BTE in %, BSFC in kg/kWh)?
Also, what is the correct way to **denormalise predictions** after training?
Any clarification would be appreciated.
0 Comments
Answers (1)
Manish
on 7 Jun 2025
Hi,
The 'mapminmax' function scales inputs and targets to fall within the range [–1, 1].
The following code demonstrates how to use it:
[pn,ps] = mapminmax(p);
[tn,ts] = mapminmax(t);
net = train(net,pn,tn);
No manual effort is required for normalization.
If needed, you can reverse the normalization using the 'reverse' option with 'mapminmax'.
Refer to the documentation link for better understanding:
See Also
Categories
Find more on Transaction Cost Analysis in Help Center and File Exchange
Community Treasure Hunt
Find the treasures in MATLAB Central and discover how the community can help you!
Start Hunting!