

Information criterion model for assessing production efficiency in various modes of transport
https://doi.org/10.46684/2687-1033.2025.2.176-181
EDN: TYNGCO
Abstract
A model for forecasting the state of a complex transport system is being developed, based on the use of an information criterion for assessing the effectiveness of actions to restructure it. The measure of the amount of information introduced into a complex logistics transport system to eliminate the uncertainty of behavior, both of the system itself and of individual events, is taken as a parameter of the information criterion. At the same time, the developed model ensures the unity of efficiency measures in logistics transport systems, since it is based on methods for forecasting the value of the influence of factor space on the process under study in order to improve the efficiency of the system as a whole.
About the Authors
N. V. SolovyovRussian Federation
Nikolay V. Solovyov — researcher at the Department of Research Coordination; State University of Management,
99 Ryazansky prospect, Moscow, 109542
M. Yu. Karelina
Maria Yu. Karelina — Dr. Sci. (Eng.), Dr. Sci. (Ped.), Professor, 99 Ryazansky prospect, Moscow, 109542;
Vice-Rector, Head of the Department of “Machine Parts and Theory of Mechanisms”, 64 Leningradsky ave., Moscow, 125319
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Supplementary files
Review
For citations:
Solovyov N.V., Karelina M.Yu. Information criterion model for assessing production efficiency in various modes of transport. Transport Technician: Education and Practice. 2025;6(2):176-181. (In Russ.) https://doi.org/10.46684/2687-1033.2025.2.176-181. EDN: TYNGCO