-
Notifications
You must be signed in to change notification settings - Fork 2
/
IT2TSK_NeuroFM_LS_testExample1func.m
64 lines (62 loc) · 1.92 KB
/
IT2TSK_NeuroFM_LS_testExample1func.m
1
2
3
4
5
6
7
8
9
10
11
12
13
14
15
16
17
18
19
20
21
22
23
24
25
26
27
28
29
30
31
32
33
34
35
36
37
38
39
40
41
42
43
44
45
46
47
48
49
50
51
52
53
54
55
56
57
58
59
60
61
62
63
64
function Results=IT2TSK_NeuroFM_LS_testExample1func(J_max,Iter)
N0=55; % Online Sequence LS
Block=1;
DNum=121;
In=linspace(-10,10,DNum);
In_dim=size(In');
Out=zeros(In_dim);
n=In_dim(2);
for i=1:In_dim(1)
Out(i,1)=sinc(In(i)/pi);
end
N=DNum;
%surfc(X1,X2,Out1)
%% Type reduction method:
QBFAStruc.bound=[min(In(:));max(In(:));[0.3;0.8]];% bound of center m and width sigma
%%
Net(1).IterTrainMax=10;
Net(1).mm=0.5;
Net(1).nn=1-Net(1).mm;
Net(1).rho=0.01; % thresh old
Net(1).tau=0.05; % threshold
Net(1).Data={In',Out};
Net(1).In_dim=In_dim;
Net(1).width = abs(max(In(:))-min(In(:)))/(4*J_max);
Net(1).DataStat=[minmax(In);minmax(Out)];
Net(1).Numb=N;
Net(1).J_max=J_max;
Net(1).DataDim=[In_dim(2),size(Out,2)];
Net(1).Sj=zeros(1,J_max); % Size of cluster j
Net(1).Dim={n,[n,J_max],J_max,1}; % Dimension of network
Net(2).m={zeros(n,J_max),zeros(n,J_max)}; % mean vector UMF/LMF
Net(2).m_Len=n*J_max;
Net(2).sigma_Len=n*J_max;
Net(2).sigma0=0.3*ones(In_dim(2),1);
Net(2).sigma={ones(n,J_max),ones(n,J_max)}; % derivation vector
Net(3).Cj=zeros(J_max,In_dim(2)+1); % height of cluster
Net(3).Cstar=zeros(1,J_max);
Net(3).BSVD.A=zeros(N,J_max);
Net(4).JbestVec=zeros(1,Net(1).IterTrainMax);
Net(4).MSEVec=zeros(1,Net(1).IterTrainMax);
Net(1).Gj=zeros(N,J_max); % firing strength
%% UD parameters
coli=1;
s=n+1;
if s==2
temp=minmax(In);
min_ranges_p=temp(:,1)'*ones(1,2);
max_ranges_p=temp(:,2)'*ones(1,2);
elseif s==3
min_ranges_p=[-15,10,10]
max_ranges_p=[15, 30,20]
end
[X_scaled,Xij]=UniformDesignWithScale(J_max,s,coli,min_ranges_p,max_ranges_p);
for ite=1:Iter
Net=IT2TSKNeuroFM_LS(Net,QBFAStruc,X_scaled(:,1),N0,Block);
Results(ite,:)=[Net(4).MSE,Net(4).NRMSE];
end
% Net(2).m{1}
% Net(2).sigma{1}
% sprintf('%4d',Net(4).MSE)
% Net(4).RMSE
% sprintf('%4d',Net(4).NRMSE)