2025, Vol. 6, Issue 1, Part C
Investigation of logistic and route planning utilizing machine learning algorithms
Author(s): Ameer Taha Abdul-Razzaq and Essa Ibrahim Essa
Abstract: Logistics and route planning are key modules of supply chain management, influencing efficiency and cost-effectiveness. This study investigates machine learning techniques to develop logistic operations and optimize route planning, such as supervised learning, reinforcement learning, and clustering techniques, to estimate demand, assess traffic patterns, and determine best delivery routes using data-driven approaches. The study evaluates the algorithms' effectiveness in real-world scenarios, emphasizing their ability to adapt to changing perspectives and improve decision-making processes. Furthermore, the findings show considerable improvements in delivery times and resource allocation, highlighting machine learning's ability to transform logistics and route planning. The paper finishes with recommendations for future research and practical applications, underlining the significance of continual innovation in the logistics industry.
DOI: 10.33545/2707661X.2025.v6.i1c.130Pages: 170-182 | Views: 275 | Downloads: 138Download Full Article: Click Here
How to cite this article:
Ameer Taha Abdul-Razzaq, Essa Ibrahim Essa.
Investigation of logistic and route planning utilizing machine learning algorithms. Int J Commun Inf Technol 2025;6(1):170-182. DOI:
10.33545/2707661X.2025.v6.i1c.130