Preview

Logistics and Supply Chain Management

Advanced search

Temporal approach for solving logistics problems

Abstract

The article explores the temporal approach applicable to solving logistics problems. Temporal models, temporal relations, temporal marks are considered. The article introduces the concept of “temporal analysis”. A taxonomy of temporal models is given. Temporal analysis combines temporal logic and temporal modeling. Temporal cause-and-effect analysis is described as a development of temporal analysis. The content of the concept of temporary uncertainty is revealed. The connection between temporal models and situational models is shown. The features of the use of temporal methods in transport management are described. The features of the use of temporal models in the field of transport are described. The article provides an analysis of time intervals. The concept of local time interval and interval boundaries is introduced. The features of obtaining and using timestamps are described. A formalized description of temporal models is given. The connection of temporal intervals with situations and states of the object is shown. The article gives a formal description of near and distant intervals. Three temporal models of movement are given. The article reveals the content of temporal cause-andeffect analysis. The reasons for its appearance are shown. Methods for reducing temporal uncertainty are described.

About the Author

I. A. Dubchak
Russian University of Transport
Russian Federation

Head of the Directorate of New Projects and Technologies

Moscow, Obraztsova str., 9, p. 9



References

1. Bellini P., Mattolini R., Nesi P. Temporal logic for real-time system specification //ACM Computing Surveys (CSUR). – 2000. – Vol. 32. – No. 1. – pp. 12-42

2. Lindemann L., Dimarogonas D. V. Robust control for signal temporal logic specifications using discrete average space robustness //Automatica. – 2019. – Vol. 101. – pp. 377-387

3. Tsvetkov V.Ya. Methods and systems of processing and presentation of video information. - M.: GKNT, Vnticenter, 1991. – 113 s

4. Sergeev N.E., Tselykh Yu.A. The use of temporal relations in the description of complex scenes from video images // News of the SFU. Technical sciences. 2009. No. 3 (92). pp. 253-259

5. Gorbulin R. P., Uvarov A. I., Garagul A. S. Geodetic monitoring of deformations of steel tanks for storing petroleum products in permafrost conditions //Actual problems of geodesy, land management and cadastre. – 2020. – pp. 25-31.

6. Tarikhazer S. A. Mudflow processes in Azerbaijan and meteorological factors of their formation (on the example of the Greater Caucasus) //Sustainable development of mountain territories. – 2019. – Vol. 11. – No. 1. – pp. 44-54.

7. Kozlov A.V., Matchin V.T. Methods and algorithms for managing groups of mobile objects // Science and Technology of railways. 2020. Vol.4.– 3(15). – pp.15-28.

8. Rosenberg I.N., Toni O.V., Tsvetkov V.Ya. Integrated railway management system using satellite technologies // Transport of the Russian Federation. - 2010. - No. 6. - pp.54-57.

9. Rosenberg I. N., Tsvetkov V. Ya., Romanov I. A. Railway management based on satellite technologies // State Adviser. – 2013. - No. 4. – S.43-50/

10. Dzyuba Yu.V. Multipurpose management of mobile objects // Science and technology of railways. – 2019. – 1(9). – p.53 -60.

11. Tsvetkov V.Ya. Intellectualization of transport logistics // Railway transport. -2011. - No.4. – pp.38-40.

12. Rosenberg I.N., Tsvetkov V.Ya. Application of multi-agent systems in intelligent logistics systems. // International Journal of Experimental Education. - 2012. - No. 6. – pp.107-109.

13. Eremeev A.P., Kovalev S.M. Temporal and fuzzy-temporal models in intelligent control systems of transportation processes.// BULLETIN OF RSUPS. 2011, No. 3. pp.74- 82.

14. Yarkin E. K., Romanenko V. E., Mokhov V. A. Optimization of multimodal cargo transportation routes //Trends in the development of science and education. – 2020. – No. 66-1. – pp. 55-59.

15. Savinykh V.P., Tsvetkov V.Ya. Development of artificial intelligence methods in geoinformatics // Transport of the Russian Federation. - 2010. -No. 5. - pp.41-43

16. Kaffash S., Nguyen A. T., Zhu J. Big data algorithms and applications in intelligent transportation system: A review and bibliometric analysis //International Journal of Production Economics. – 2021. – Vol. 231. – p. 107868.

17. Arena F., Pau G., Severino A. A review on IEEE 802.11 p for intelligent transportation systems //Journal of Sensor and Actuator Networks. – 2020. – Vol. 9. – No. 2. – p. 22.

18. Rosenberg I.N., Tsvetkov V. Ya. Coordinate systems in geoinformatics – MGUPS, 2009. -67 p.

19. Bulgakov S.V. Geotechnical monitoring of transport // Science and technology of railways. 2021. Vol. 5. No. 1 (17). – pp.42-49

20. Matchin V.T. Updating the temporal database in the transport sector // Science and technology of railways. - 2017. Vol.1. -2(2). – pp.39-46.

21. ProskurinD.K., Kolykhalova E.V. Methodological foundations of modeling temporal information structures //Scientific Bulletin of the Voronezh State University of Architecture and Civil Engineering. Series: Information technologies in construction, social and economic systems. - 2013. – No. 1. – pp. 87-90

22. Kotikov P. E. Options for building temporal databases in geoinformation systems // Scientific aspect. – 2014. – №. 4. – Pp. 118-120.

23. Goncharko O. Y. Temporal implication and temporal modalities // Bulletin of St. Petersburg State University. Ser. 6. 2012. Issue 1. pp.21-26.

24. Tsvetkov V. Ya. Not Transitive Method Preferences. // Journal of International Network Center for Fundamental and Applied Research. 2015. 1(3), - pp.34-42./

25. Necklace T.A. Cognitive representation // ITNOU: Information technologies in science, education and management. - 2019. - № 3 (13). – pp.9-17.

26. Madisson M. L., Ventsel A. Strategic conspiracy narratives: A semiotic approach. – Routledge, 2020.

27. Derakhshan A. ‘Should textbook images be merely decorative?’: Cultural representations in the Iranian EFL national textbook from the semiotic approach perspective //Language Teaching Research. – 2021. – pp. 1362168821992264

28. Thomas A., Gupta V. Tacit knowledge in organizations: Bibliometrics and a frameworkbased systematic review of antecedents, outcomes, theories, methods and future directions //Journal of Knowledge Management. – 2022. – Vol. 26. – No. 4. – pp. 1014-1041.

29. Sikombe S., Phiri M. A. Exploring tacit knowledge transfer and innovation capabilities within the buyer–supplier collaboration: A literature review //Cogent Business & Management. – 2019. – Vol. 6. – No. 1. – pp. 1683130

30. Anikina G.A., Polyakov M.G., Romanov L.N., Tsvetkov V.Ya. On the selection of an image contour using linear trainable models. // Proceedings of the Academy of Sciences of the USSR. Technical cybernetics. -1980. - No.6. - pp.36-43.

31. Savinykh V.P. Oppositional analysis in the information field // Slavic Forum, 2016. -3(13). – pp.236-241

32. https://www.sciencedirect.com/topics/engineering/predictive-control-model viewing date 24.09.2023.


Review

For citations:


Dubchak I.A. Temporal approach for solving logistics problems. Logistics and Supply Chain Management. 2023;20(3):31-41. (In Russ.)

Views: 94


Creative Commons License
This work is licensed under a Creative Commons Attribution 4.0 License.


ISSN 2587-6775 (Print)
ISSN 2587-6767 (Online)