Warehouse Location Selection and Transportation Cost Control in Performance Network Optimization

Authors

  • Xuetong Liu Ira A. Fulton Schools of Engineering, Arizona State University, Tempe, Arizona, 85281, USA Author

DOI:

https://doi.org/10.71222/zbjrx788

Keywords:

compliance network, warehouse location, transportation cost control, logistics optimization, intelligent scheduling

Abstract

Optimizing the performance network is crucial for the success of supply chain management, with key factors including warehouse location and transportation costs. This paper further explores the impact of these factors on performance network design and leverages geographic information analysis, big data, real-time traffic monitoring, and artificial intelligence algorithms to determine the optimal inventory location. By doing so, it effectively aligns inventory with demand, enhancing overall supply chain efficiency. At the same time, by effectively controlling freight costs to effectively control the cost of compliance, innovative solutions based on dynamic path planning, intelligent scheduling, real-time analysis and automatic regulation are proposed to improve logistics efficiency and reduce costs, and provide data-driven decision-making for the supply chain management.

References

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Published

27 April 2025

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Section

Article

How to Cite

Warehouse Location Selection and Transportation Cost Control in Performance Network Optimization. (2025). Economics and Management Innovation, 2(2), 100-107. https://doi.org/10.71222/zbjrx788