Abstract:
The present work deals with the study of the existence, uniqueness and stability of the almost automorphic solution and its generalization for deterministic and stochastic dynamic equations
on time scales. We introduce the concept of equipotentially square-mean almost automorphic sequence, square-mean piecewise almost automorphic functions on time scales,
time scale version of the Stepanov like square mean almost automorphic functions and some
new results on composition theorem on time scales for the space of square-mean weighted Stepanov-like pseudo almost automorphic functions. As applications, stochastic Cellular Neural Network, stochastic Nicholson’s Blowflies model and non-autonomous Leslie-Gower prey-predator model are considered. First we derived
some sufficient conditions for the existence of square mean almost automorphic solution for Stochastic Cellular Neural Network on time scales by using Krasnoselskii’s fixed point theorem. Banach contraction principle is also used to show the uniqueness of solution with
some conditions and exponential stability of the obtained unique solution is discussed by taken suitable Lyapunov function on time scales. Moreover, we have derived some sufficient conditions for the existence of square mean almost automorphic solution for stochastic
Nicholson’s Blowflies model on time scales. We establish appropriate conditions and results to discuss Ulam-Hyers-Rassias stability. Furthermore, the model with piecewise constant argument is considered. Then the approximate solution and a nicer bound of this
model using discretization method is established. The significant property permanence is established along with the existence of almost automorphic solution of Leslie-Gower preypredator model system. By constructing a suitable Lyapunov functional, presence of one of a kind all-around attractive positive almost automorphic solution of the system is obtained. Finally we discuss weighted pseudo almost automorphic solution of dynamic equation which models cellular neural network with time varying delay on time scales along the coefficients which are assumed to be Stepanov-like weighted pseudo almost automorphic
functions. These obtained results improve and extend previous related work. Several examples
with simulations for different-different time scales are explained for the adequacy of the hypothetical outcomes. Here the main techniques used are time scales theory, Banach fixed point principle, stochastic analysis theory, Krasnoselskii’s fixed point theorem.