Prediction of the Sinus Function using Neural Networks
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My objective is to create a NN that is able to predict the sinus function. For that I tried using several types of networks, including feed-forward using the Fit Tool and NARX net using the time series tool.
The sinus has a period of 365.
Using Fiting Tool(default configurations except i give it 5 neurons)
%The input I give for training is:
input = linspace(1,270,100); % I used several variations of this
target = sin(2*pi*input/365);
%Results: Samples MSE R
%Training: 70 7.23e-7 9.9999e-1
%Validation: 15 6.84e-7 9.9999e-1
%Testing: 15 3.171e-6 9.99993e-1
Which I think look pretty good.
In the next step I try to predict the remaining function using the following sample:
pred_inp=linspace(271,365,100);
pred_targ= sin(2*pi*pred_inp/365);
% Results: Samples MSE R
% 100 1.33175e-0 -3.6286e-1
%And this is where it gets crazy, sometimes it gives a good prediction,
%other times it just goes down.
%It gets even worse if I try to predict for more than one period:
pred_inp=linspace(271,730,100);
I have no idea of what is going wrong. Anyone here could assist me? Or showing me another way to do this?
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4 个评论
Greg Heath
2013-5-16
Static fitting or classification nets are defined over specific ranges of input variables. They can be excellent interpolators but tend to be poor extrapolators.
Dynamic nets are, effectively, driven by significant lags in auto and/or cross correlation functions. That allows them to be good extrapolators. They are not directly driven by the independent variable, time, but tend to depend on past values of input and output.
Pedro
2013-5-16
Greg Heath
2016-3-25
1. There was no attempt to find the significant auto and cross correlation lags.
2. With smooth curves the minimum number of hidden nodes is equal to the number of local extrema
Hope this helps
Greg
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