Randomness in natural systems come from various sources, for example from the discrete nature of the underlying dynamical process when viewed on a small scale. In this thesis we study the effect of stochasticity on the dynamics in three applications, each with different sources and effects of randomness. In the first application we study the Hodgkin-Huxley model of the neuron with a random ion channel mechanism via numerical simulation. Randomness affects the nonlinear mechanism of a neuron’s firing behavior by spike induction as well as by spike suppression. The sensitivity to different types of channel noise is explored and robustness of the dynamical properties is studied using two distinct stochastic models. In the second application we...
In this work the hierarchical structure of three diverse stochastic systems is studied by investigat...
Stochastic processes are probabilistic models of data streams such as speech, audio and video signal...
We study a stochastic spatially extended population model with diffusion, where we find the coexiste...
A problem of the stochastic nonlinear analysis of neuronal activity is studied by the example of the...
Thesis (Ph.D.)--University of Washington, 2018Stochastic dynamical systems, as a rapidly growing are...
Fluctuating parameters appear in a variety of physical systems and phenomena. They typically come ei...
In this thesis we study several topics in Probability Theory and Mathematical Physics. These include...
Many real-world systems exhibit noisy evolution; interpreting their finite-time behavior as arising ...
<p>In the preface of his book entitled 'Theory and applications of stochastic differential equ...
In this thesis we extend the foundational theory behind and areas of application of non-autonomous r...
Thesis (M. Eng. and S.B.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering an...
Inherent randomness and unpredictability is an underlying property in most realistic phenomena. In ...
This thesis studies the large scale behaviour of biological processes in a random en- vironment. We ...
In this paper we examine two specific models of dynamical systems in which noise plays a central rol...
Inherent randomness and unpredictability is an underlying property in most realistic phenomena. In ...
In this work the hierarchical structure of three diverse stochastic systems is studied by investigat...
Stochastic processes are probabilistic models of data streams such as speech, audio and video signal...
We study a stochastic spatially extended population model with diffusion, where we find the coexiste...
A problem of the stochastic nonlinear analysis of neuronal activity is studied by the example of the...
Thesis (Ph.D.)--University of Washington, 2018Stochastic dynamical systems, as a rapidly growing are...
Fluctuating parameters appear in a variety of physical systems and phenomena. They typically come ei...
In this thesis we study several topics in Probability Theory and Mathematical Physics. These include...
Many real-world systems exhibit noisy evolution; interpreting their finite-time behavior as arising ...
<p>In the preface of his book entitled 'Theory and applications of stochastic differential equ...
In this thesis we extend the foundational theory behind and areas of application of non-autonomous r...
Thesis (M. Eng. and S.B.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering an...
Inherent randomness and unpredictability is an underlying property in most realistic phenomena. In ...
This thesis studies the large scale behaviour of biological processes in a random en- vironment. We ...
In this paper we examine two specific models of dynamical systems in which noise plays a central rol...
Inherent randomness and unpredictability is an underlying property in most realistic phenomena. In ...
In this work the hierarchical structure of three diverse stochastic systems is studied by investigat...
Stochastic processes are probabilistic models of data streams such as speech, audio and video signal...
We study a stochastic spatially extended population model with diffusion, where we find the coexiste...