Predict futures values in ntstool (NAR)
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I have used ntstool to create a neural network say net . I am using NAR. I have a vector v of size 271 x 1 having data of an element at 271 timesteps. I am assuming d to be 5 , i.e, value at each step is dependent of 5 previous steps. Now I need the value of my element at 272th step. What is the syntax to do do?
A peculiar observation is the command sim(net,t); or net(t); where t is any row vector returns me same value independent on the choice of vector t.
Here is my training function:
function results = time_series(input,hiddenLayerSize,train_function, validation_no,test_no,time_step,iterations)
targetSeries = tonndata(input,false,false);
feedbackDelays = 1:time_step;
net = narnet(feedbackDelays,hiddenLayerSize);
% Choose Feedback Pre/Post-Processing Functions
% Settings for feedback input are automatically applied to feedback output
% For a list of all processing functions type: help nnprocess
net.inputs{1}.processFcns = {'removeconstantrows','mapminmax'};
[inputs,inputStates,layerStates,targets] = preparets(net,{},{},targetSeries);
net.divideFcn = 'dividerand'; % Divide data randomly
net.divideMode = 'time'; % Divide up every value
net.divideParam.trainRatio = (100-validation_no-test_no)/100;
net.divideParam.valRatio = validation_no/100;
net.divideParam.testRatio = test_no/100;
net.trainFcn = train_function; % Levenberg-Marquardt
for i= 1:iterations
[net,tr] = train(net,inputs,targets,inputStates,layerStates);
end;
% View the Network
%view(net);
if(closed_loop)
netc = closeloop(net);
[xc,xic,aic,tc] = preparets(netc,{},{},targetSeries);
yc = netc(xc,xic,aic);
perfc = perform(net,tc,yc);
nets = removedelay(net);
[xs,xis,ais,ts] = preparets(nets,{},{},targetSeries);
ys = nets(xs,xis,ais);
closedLoopPerformance = perform(net,tc,yc);
end
results.net = net;
results.inputs = inputs;
end
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