%Notes for Dr. Blackwell from Sriram:
%Different from InpurwithCorrelation: downfreq:0.1 and using makeDaughterInsignal so has both down and up states
%1. What this file does:
% This file makes the input trains that would serve as the cortical and fs input
% for the SPcells. The duplicate and unique input signals are now combined in
% the genesis file SimFile.g. This file also has a variable which contains
% unique random numbers, the function of which is described in the SimFile.g
% file. The noise and inout signals will be combined in this file for the
% next round once the details of the input connection is finalized.
function m = InputwithCorrelation2(numCells, corr_syn_Glu, nAMPA, nAMPA_u, ...
corr_syn_GABA, nGABA, nGABA_u, perc_single_repeats, upFreq, maxTime,allowVar, randSeed)
rand('seed', randSeed);
randSeed = rand('seed');
downFreq = 0.1;
disp(['Setting random seed to ' num2str(randSeed)])
disp(['All upstate input, freq ' num2str(upFreq)])
path = [pwd '/INPUTDATA/'];
fprintf('%s\n',path);
nAMPA_d = nAMPA - nAMPA_u;
nGABA_d = nGABA - nGABA_u;
if(allowVar)
disp('Generating input with varying number of duplicates within a neuron')
dupAMPAInsignal = makeDaughterInsignal(corr_syn_Glu, nAMPA_d, ...
upFreq,downFreq, maxTime);
dupGABAInsignal = makeDaughterInsignal(corr_syn_GABA, nGABA_d, ...
25,downFreq, maxTime);
for nCtr = 1:numCells
% Generate input to neurons that are correlated within the neuron
% but not correlated between neurons. This input is then mixed
% with the population shared input.
% Neuron specific input
AMPAInsignal{nCtr} = makeDaughterInsignal(corr_syn_Glu, nAMPA_u, ...
upFreq,downFreq, maxTime);
GABAInsignal{nCtr} = makeDaughterInsignal(corr_syn_GABA, nGABA_u, ...
25, downFreq, maxTime);
end
else
disp('Generating input with constant number of duplicates within a neuron')
dupAMPAInsignal = makeTrainInsignal(corr_syn_Glu, nAMPA_d, ...
upFreq, downFreq, maxTime);
dupGABAInsignal = makeTrainInsignal(corr_syn_GABA, nGABA_d, ...
25, downFreq, maxTime);
for nCtr = 1:numCells
% Generate input to neurons that are correlated within the neuron
% but not correlated between neurons. This input is then mixed
% with the population shared input.
% Neuron specific input
AMPAInsignal{nCtr} = makeTrainInsignal(corr_syn_Glu, nAMPA_u, ...
upFreq,downFreq, maxTime);
GABAInsignal{nCtr} = makeTrainInsignal(corr_syn_GABA, nGABA_u, ...
25,downFreq, maxTime);
end
end
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
% Presently both makeDaughterInput and makeTrainInput send the inputs with padded zeros.
% Eventually clean it up to send it as matrix.
writeInput([path 'AMPAinsignal_dup_'], dupAMPAInsignal);
writeInput([path 'GABAinsignal_dup_'], dupGABAInsignal);
for nCtr = 1:numCells
temp_AMPA = [path 'AMPAinsignal_' num2str(nCtr) '_'];
temp_GABA = [path 'GABAinsignal_' num2str(nCtr) '_'];
writeInput(temp_AMPA, AMPAInsignal{nCtr});
writeInput(temp_GABA, GABAInsignal{nCtr});
end
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
fid = fopen([path 'inputInfo.txt'], 'w');
fprintf(fid, '%s\n', 'Inputwithcorrelation');
fprintf(fid, '%f\n', corr_syn_Glu);
fprintf(fid, '%f\n', corr_syn_GABA);
fprintf(fid, '%f\n', upFreq);
fprintf(fid, '%f\n', downFreq);
fprintf(fid, '%f\n', maxTime);
fprintf(fid, '%d\n', randSeed);
fprintf(fid, '%d\n', numCells);
fclose(fid);