| Neural Network Toolbox | ![]() |
Calculate network outputs and other signals
Syntax
[Ac,N,LWZ,IWZ,BZ] = calca(net,Pd,Ai,Q,TS)
Description
This function calculates the outputs of each layer in response to a network's delayed inputs and initial layer delay conditions.
[Ac,N,LWZ,IWZ,BZ] = calca(net,Pd,Ai,Q,TS) takes,
net - Neural network.
Pd - Delayed inputs.
Ai - Initial layer delay conditions.
Q - Concurrent size.
TS - Time steps.
Ac - Combined layer outputs = [Ai, calculated layer outputs].
N - Net inputs.
LWZ - Weighted layer outputs.
IWZ - Weighted inputs.
BZ - Concurrent biases.
Examples
Here we create a linear network with a single input element ranging from 0 to 1, three neurons, and a tap delay on the input with taps at zero, two, and four time steps. The network is also given a recurrent connection from layer 1 to itself with tap delays of [1 2].
net = newlin([0 1],3,[0 2 4]);net.layerConnect(1,1) = 1;net.layerWeights{1,1}.delays = [1 2];
Here is a single (Q = 1) input sequence P with eight time steps (TS = 8), and the four initial input delay conditions Pi, combined inputs Pc, and delayed inputs Pd.
P = {0 0.1 0.3 0.6 0.4 0.7 0.2 0.1};Pi = {0.2 0.3 0.4 0.1};Pc = [Pi P];Pd = calcpd(net,8,1,Pc)
Here the two initial layer delay conditions for each of the three neurons are defined:
Ai = {[0.5; 0.1; 0.2] [0.6; 0.5; 0.2]};
Here we calculate the network's combined outputs Ac, and other signals described above.
[Ac,N,LWZ,IWZ,BZ] = calca(net,Pd,Ai,1,8)
| boxdist | calca1 | ![]() |