====== sim_coba_benchmark ====== This is the Vogels-Abbott Benchmark (from [[http://link.springer.com/article/10.1007%2Fs10827-007-0038-6|Brette et al. 2007]]) network adapted from the [[http://neuralensemble.org/trac/PyNN/wiki/Examples/VogelsAbbott|examples]] included in [[http://neuralensemble.org/trac/PyNN|PyNN]]. It implements a smaller version of the conductance based, self-sustained balanced network from ([[http://www.jneurosci.org/content/25/46/10786.short|Vogels and Abbott (2005)]]). ===== Running the program ===== To run the program the network first needs priming with external Poisson noise before it can self-sustain its activity. To do that invoke the program with the following command line arguments ./sim_coba_benchmark --dir /tmp --simtime 5 The ''prime'' keyword in the first command causes the network to run with external Poisson input and save its network state at the end of the run to a set of files created under ''/tmp''. Note that you can give any other directory name where you want the files to be created. The second call to the progrem without the ''--prime'' argument causes the program to read the current network state from these saved files and runs the network for the specified period in ''simtime''. All spiking output and the memory trace ([[mem]] file) of a single neuron are written to the directory specified with ''--dir'' and are prefixed with ''coba.*''. If you are interested in running the code in parallel please see the [[manual:parallel execution]] howto. ==== Output example ==== In the above example the output is written to ''/tmp''. bash-4.1$ ls -l /tmp/coba.0.* 8 -rw-r--r-- 1 zenke lcn1 5447 Jan 13 11:17 /tmp/coba.0.log 3208 -rw-r--r-- 1 zenke lcn1 3282541 Jan 13 11:17 /tmp/coba.0.e.ras 764 -rw-r--r-- 1 zenke lcn1 780757 Jan 13 11:17 /tmp/coba.0.i.ras 928 -rw-r--r-- 1 zenke lcn1 950019 Jan 13 11:17 /tmp/coba.0.e.mem 916 -rw-r--r-- 1 zenke lcn1 935976 Jan 13 11:17 /tmp/coba.0.e.gaba 880 -rw-r--r-- 1 zenke lcn1 900018 Jan 13 11:17 /tmp/coba.0.e.ampa {{ :examples:coba_ras.png?300 |}} This figure shows the raster plot of the spiking activity of the excitatory population written to ''/tmp/coba.0.e.ras''. {{ :examples:coba_mem.png?300 |}} The figure shows the evolution of the membrane potential of one excitatory cell during the simulation. ===== The important bits ===== TIFGroup * neurons_e = new TIFGroup( ne); TIFGroup * neurons_i = new TIFGroup( ni); neurons_e->random_mem(-70e-3,10e-3); neurons_i->random_mem(-70e-3,10e-3); This part instantiates two groups of neurons of type [[TIFGroup]] which corresponds to the conductance based model with exponentially decaying PSCs and an absolute refractoriness of 5ms. The ''random_mem'' methods randomize the initial membrane potentials with a Gaussian (mean=-70mV and standard deviation 10mV). The sparse random connectivity is initialized as follows: SparseConnection * con_ee = new SparseConnection( neurons_e,neurons_e, w, sparseness, GLUT); SparseConnection * con_ei = new SparseConection( neurons_e,neurons_i, w,sparseness,GLUT); SparseConnection * con_ie = new SparseConnection( neurons_i,neurons_e,wi,sparseness,GABA); SparseConnection * con_ii = new SparseConnection( neurons_i,neurons_i,wi,sparseness,GABA); here ''w'' contains the synaptic weight of excitatory synapses and ''wi'' the one of their inhibitory counter part. The network has a global ''sparseness'' of 2%. The following code snipped is responsible for running the simulation for ''simtime'' seconds. The second parameter ''true'' indicates that we wan the simulation to be interrupted if the [[RateChecker]] detects too high firing rates, which usually suggests that something is going wrong. if (!sys->run(simtime,true)) errcode = 1; if ( prime ) { oss.str(""); oss << dir << "/save"; sys->save_network_state(oss.str()); } The second part of the above code saves the network state if ''prime==true'' and is therefore used to create the initial conditions of the self-sustained activity.