The system
Is a special case of the Fitzhugh-Nagumo equations, which model the transmission of neural impulses along an axon. The parameter
(a) Show that the system has one critical point regardless of the value of
(b) Find the critical point for
(c) Find the value
(d) For
(e) As
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DIFFERENTIAL EQUATIONS(LL) W/WILEYPLUS
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