Publication | Open Access
Fluid limit theorems for stochastic hybrid systems with application to neuron models
109
Citations
28
References
2010
Year
Stochastic Hybrid SystemLimit TheoremsEngineeringFluid Limit TheoremsComputational NeuroscienceEntropyStochastic ProcessesStochastic SystemStochastic Dynamical SystemStochastic AnalysisContinuous Deterministic DynamicsFunctional LawStochastic Hybrid SystemsStochastic Differential Equation
In this paper we establish limit theorems for a class of stochastic hybrid systems (continuous deterministic dynamics coupled with jump Markov processes) in the fluid limit (small jumps at high frequency), thus extending known results for jump Markov processes. We prove a functional law of large numbers with exponential convergence speed, derive a diffusion approximation, and establish a functional central limit theorem. We apply these results to neuron models with stochastic ion channels, as the number of channels goes to infinity, estimating the convergence to the deterministic model. In terms of neural coding, we apply our central limit theorems to numerically estimate the impact of channel noise both on frequency and spike timing coding.
| Year | Citations | |
|---|---|---|
Page 1
Page 1