Products & Services Solutions Academia Support User Community Company


newfftd

Purpose

Create feed-forward input time-delay backpropagation network

Syntax

Description

newfftd(P,T,ID,[S1 S2...SNl],{TF1 TF2...TFNl}, BTF,BLF,PF,IPF,OPF,DDF) takes several arguments,

P
R x Q1 matrix of Q1 sample R-element input vectors
T
SN x Q2 matrix of Q2 sample SN-element input vectors
ID
Input delay vector
Si
Size of ith layer, for N-1 layers, default = [ ].
(Output layer size SN is determined from T.)
TFi
Transfer function of ith layer. (Default = 'tansig' for
hidden layers and 'purelin' for output layer.)
BTF
Backpropagation network training function (default = 'trainlm')
BLF
Backpropagation weight/bias learning function (default = 'learngdm')
PF
Performance function (default = 'mse')
IPF
Row cell array of input processing functions. (Default = {'fixunknowns','removeconstantrows','mapminmax'})
OPF
Row cell array of output processing functions. (Default = {'removeconstantrows','mapminmax'})
DDF
Data divison function (default = 'dividerand')

and returns an N-layer feed-forward input time-delay backpropagation network.

The transfer functions TFi can be any differentiable transfer function such as tansig, logsig, or purelin.

The training function BTF can be any of the backpropagation training functions such as trainlm, trainbfg, trainrp, traingd, etc.

The learning function BLF can be either of the backpropagation learning functions learngd or learngdm.

The performance function can be any of the differentiable performance functions such as mse or msereg.

Examples

Here is a problem consisting of an input sequence P and target sequence T that can be solved by a network with one delay.

A network is created with input delays of 0 and 1, and one hidden layer with five neurons.

The network is simulated.

The network is trained for 50 epochs. Again the network's output is calculated.

Algorithm

Feed-forward networks consist of Nl layers using the dotprod weight function, netsum net input function, and the specified transfer function.

The first layer has weights coming from the input with the specified input delays. Each subsequent layer has a weight coming from the previous layer. All layers have biases. The last layer is the network output.

Each layer's weights and biases are initialized with initnw.

Adaption is done with trains, which updates weights with the specified learning function. Training is done with the specified training function. Performance is measured according to the specified performance function.

See Also

newcf, newelm, sim, init, adapt, train, trains


 Provide feedback about this page 

Previous page newff newfit Next page

Recommended Products

Includes the most popular MATLAB recorded presentations with Q&A sessions led by MATLAB experts.

 © 1984-2009- The MathWorks, Inc.    -   Site Help   -   Patents   -   Trademarks   -   Privacy Policy   -   Preventing Piracy   -   RSS