Does the brain function as a quantum phase computer using phase ternary
computation?
- URL: http://arxiv.org/abs/2012.06537v1
- Date: Fri, 4 Dec 2020 08:00:23 GMT
- Title: Does the brain function as a quantum phase computer using phase ternary
computation?
- Authors: Andrew Simon Johnson and William Winlow
- Abstract summary: We provide evidence that the fundamental basis of nervous communication is derived from a pressure pulse/soliton capable of computation.
We demonstrate that the contemporary theory of nerve conduction based on cable theory is inappropriate to account for the short computational time necessary.
Deconstruction of the brain neural network suggests that it is a member of a group of Quantum phase computers of which the Turing machine is the simplest.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Here we provide evidence that the fundamental basis of nervous communication
is derived from a pressure pulse/soliton capable of computation with sufficient
temporal precision to overcome any processing errors. Signalling and computing
within the nervous system are complex and different phenomena. Action
potentials are plastic and this makes the action potential peak an
inappropriate fixed point for neural computation, but the action potential
threshold is suitable for this purpose. Furthermore, neural models timed by
spiking neurons operate below the rate necessary to overcome processing error.
Using retinal processing as our example, we demonstrate that the contemporary
theory of nerve conduction based on cable theory is inappropriate to account
for the short computational time necessary for the full functioning of the
retina and by implication the rest of the brain. Moreover, cable theory cannot
be instrumental in the propagation of the action potential because at the
activation-threshold there is insufficient charge at the activation site for
successive ion channels to be electrostatically opened. Deconstruction of the
brain neural network suggests that it is a member of a group of Quantum phase
computers of which the Turing machine is the simplest: the brain is another
based upon phase ternary computation. However, attempts to use Turing based
mechanisms cannot resolve the coding of the retina or the computation of
intelligence, as the technology of Turing based computers is fundamentally
different. We demonstrate that that coding in the brain neural network is
quantum based, where the quanta have a temporal variable and a phase-base
variable enabling phase ternary computation as previously demonstrated in the
retina.
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