General purpose models of dynamical systems are based on extracting important information regarding the underlying processes directly from the measurable process data. Commonly used methods for system analysis and modeling are based on second order statistics. Lately, however, solutions exceeding its limitations have been proposed. Growing potential of contemporary computer systems has encouraged the use of methods originating from information theory in this field. The definitions of basic measures in information theory, i.e., entropy, divergence and average mutual information, are based on probability theory and statistics. Each of these measures in its own frame determines the quantity of information and uncertainty of random variables an...