This thesis presents the new methodological approach for carrying out Bayesian inference of the Dynamic hierarchical models for different application areas. The first application is carried out in time series of compositional data. This kind of data comprises of multivariate observations which at each time point are essentially proportion of a whole quantity. This kind of data occurs frequently in many disciplines such as economics, geology and ecology. Usual multivariate statistical procedures available in the literature are not applicable for the analysis of such data since they ignore the inherent constrained nature of these observations as parts of a whole. A new technique for modeling compositional time series data is studied in a hier...