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CLUSTERING-BASED METHODS FOR DATA-DRIVEN OPTIMIZATION IN URBAN COURIER LOGISTICS

https://doi.org/10.55452/1998-6688-2025-22-2-94-109

Abstract

With the rapid development of cities and their infrastructure, the demand for high-quality urban deliveries is increasing at the same rate. This work explores the possibilities of dynamically allocating delivery zones for courier deliveries based on data provided by the courier company. Traditional manually created delivery zones often do not ensure that the picture is relevant to the real situation in the city (weather, traffic, roads, etc.). This study presents the results of how K-Means and DBSCAN clustering algorithms can contribute to the dynamic distribution of delivery zones in clusters. The comparative analysis includes consideration of such indicators as Silhouette value and computational complexity of Big-O Notation. The results show that the K-Means algorithm creates structured and uniform clusters, while DBSCAN shows results in defining flexible clusters based on the density of data in the region. Multi-level DBSCAN provides an opportunity to reduce the concentration of “noise”, thereby increasing the coverage of all delivery points. The results obtained highlight the advantages of using clustering algorithms in creating dynamic delivery zones to improve the distribution of orders between couriers and reduce operating costs. Further research should include obtaining continuous real-time data flow to monitor the operation of algorithms in a dynamic environment.

About the Authors

Zh. Talgatuly
Astana IT University
Kazakhstan

 Researcher 

 Astana 



B. Ye. Amirgaliyev
Astana IT University
Kazakhstan

 PhD, Professor 

 Astana 



D. Yedilkhan
Astana IT University
Kazakhstan

 PhD, Associate Professor 

 Astana 



A. Turginbekov
Astana IT University
Kazakhstan

 Researcher 

 Astana 



Kh. S. Gadaborshev
Almaty Management University
Kazakhstan

 MBA 

Almaty 



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Review

For citations:


Talgatuly Zh., Amirgaliyev B.Ye., Yedilkhan D., Turginbekov A., Gadaborshev Kh.S. CLUSTERING-BASED METHODS FOR DATA-DRIVEN OPTIMIZATION IN URBAN COURIER LOGISTICS. Herald of the Kazakh-British Technical University. 2025;22(2):94-109. https://doi.org/10.55452/1998-6688-2025-22-2-94-109

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ISSN 1998-6688 (Print)
ISSN 2959-8109 (Online)