Abstract

A problem on finding the stationary distributions of probabilities of states for the Markov systems under conditions of uncertainty is solved. It is assumed that parameters of the analyzed Markov and semi-Markov systems (matrix of transition intensities, analytical description of distribution functions of the durations of being in states of the system before exiting, as well as a matrix of transition probabilities) are not clearly assigned. In order to describe the fuzziness, we employ the Gaussian membership functions, as well as functions of the type. The appropriate procedure of systems analysis is based on the developed technology for solving the systems of linear algebraic equations with fuzzy coefficients. In the problem on analysis of a semi-Markov system, the estimation of components of the stationary distribution of probabilities of states of the system is obtained by the minimization of a complex criterion. The criterion considers the measure of deviation of the desired distribution from the modal one, as well as the level of compactness of membership functions of the fuzzy result of solution. In this case, we apply the rule introduced for the calculation of expected value of fuzzy numbers. The criterion proposed is modified through the introduction of weight coefficients, which consider possible differences in the levels of requirements to different components of the criterion.

Highlights

  • Traditional problems on describing the behavior and estimation of effectiveness of multiparametric systems are solved on the assumption that basic parameters of the system in the process of its functioning do not change [1,2,3,4]

  • Under conditions of correctly described incoming flow of requests, it is possible to obtain a closed description of the mathematical model, which defines the process the system functions

  • Especially simple correlations occur if we consider that the incoming flow of requests is of Poisson kind and service duration is distributed exponentially

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Summary

Literature review and problem statement

Traditional problems on describing the behavior and estimation of effectiveness of multiparametric systems are solved on the assumption that basic parameters of the system in the process of its functioning do not change [1,2,3,4]. The least demanding is the representation of these elements of SMP by the means of theory of fuzzy sets We shall in this case consider that the analytical descriptions of conditional distribution functions Fij(t) of the duration of being in each of the states before exiting contain a fuzzy parameter θ. In the most frequently occurring situations with a small sample of initial data, the most adequate models are not theoretically-probabilistic, but fuzzy models This circumstance renders relevance to a problem on developing the mathematical tools to solve the problems of systems theory taking into account the uncertainty in the values of their parameters. For systems analysis whose behavior is described by the Markov or semi-Markov process with indistinctly defined parameters

The aim and tasks of the study
A Lagrange function takes the form:
Conclusions
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