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Method of testing the readiness of means of transport with the use of semi-Markov processes

    Anna Borucka Affiliation

Abstract

In the analysis of the readiness of means of transport, the Markov and semi-Markov processes are particularly applicable, allowing for the description of the usage process over long periods of time, determination of indicators of the exploitability and readiness of the used set of objects, as well as simulation of long-term forecasts of the usage process results. The studies presented in the literature usually concern the theoretical side of the matter, mainly the construction of formal models of the process of changing the operating states of a vehicle. Less attention is paid to the empirical side, especially with regard to the actual conditions of use. Examples of experimental observations presented in the literature most often concern individual cases. This paper lists selected irregularities and presents an example of a study of a real transport system based on semi-Markov processes.

Keyword : semi-Markov model, readiness, reliability, transport enterprise, means of transport, Markov property, variable distribution

How to Cite
Borucka, A. (2021). Method of testing the readiness of means of transport with the use of semi-Markov processes. Transport, 36(1), 75-83. https://doi.org/10.3846/transport.2021.14370
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Mar 30, 2021
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