Publication | Closed Access
Global exponential stability of competitive neural networks with different time scales
121
Citations
18
References
2003
Year
Different Time ScalesNeural NetworkGlobal Exponential StabilitySocial SciencesNetwork DynamicStabilityNeural MechanismNeurodynamicsStochastic NetworkCompetitive Neural NetworksCognitive ScienceSystem StabilityComplex Dynamic SystemFlow InvarianceEvolving Neural NetworkComputational NeuroscienceNeuronal NetworkNeuroscienceBrain ModelingCortical Cognitive Maps
The dynamics of cortical cognitive maps developed by self-organization must include the aspects of long and short-term memory. The behavior of such a neural network is characterized by an equation of neural activity as a fast phenomenon and an equation of synaptic modification as a slow part of the neural system. We present a new method of analyzing the dynamics of a biological relevant system with different time scales based on the theory of flow invariance. We are able to show the conditions under which the solutions of such a system are bounded being less restrictive than with the K-monotone theory, singular perturbation theory, or those based on supervised synaptic learning. We prove the existence and the uniqueness of the equilibrium. A strict Lyapunov function for the flow of a competitive neural system with different time scales is given and based on it we are able to prove the global exponential stability of the equilibrium point.
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