@MikeB... Appologies for the delay...
They are ordered by the system, relevant to their sensory relevance for the current task. The efferant axons from the Homunculus/ nervous system model are connected to the motor cortex as part of the initial model design.
Second attempt at an explanation for the pattern lock graph...
Most of my videos include some version of my pattern lock graph; this is (hopefully) a clear explanation of its functions.
The purpose of the graph is show that specific sets of output neurons are firing in response to a given sensory/ input stimulus. The output neurons/ networks are grouped into 80 colour coded blocks represented by the colour gradient (x axis) on the graph. The height of a peak (y axis) corresponds to the confidence or the number of neurons firing within that group.
The graph can also show (x axis) the current test pattern being injected into the model, the small white square moving along the scale shows the current pattern number (1-80)
The graph shows the firing rate of all the output neurons at the same time, and ideally for most testing purposes only one high/ strong peak should accompany any single input pattern.
Video demonstration index…
0:06 Inject 98% white noise, this totally saturates the connectome with white noise to demonstrate the various output neuron groups firing & registering on the graph.
0:15 Start decreasing noise to sensory equivalent level (50%) to show the connectome model begin to ignore/ filter out the white noise, ie no high peaks on the graph.
0:35 Start Injecting the (1-80) learned patterns. Now a peak can be clearly seen following/ matching the input pattern number. The peak is slightly in front of the pattern because the connectome is predicting the next pattern in the sequence. Max-P just highlights the maximum peak.
0:47 Stop the noise to show clean response of connectome to just the sensory input without the white noise interference.
0:58 Clicking on the graph sets/ changes the pattern number, clicking back shows GTP inertia. Although the input pattern has been changed/ moved back, the current recognised pattern keeps running for a few ms.
Note: If you find this explanation confusing or have any questions please comment.