Analysis of the Technical Application and Effectiveness of Intelligent Algorithms Empowering Regional Logistics Resource Matching

Authors

  • Yanfang Chen Fuzhou Dongdong Logistics Co., Ltd. Author

DOI:

https://doi.org/10.71411/ef.2025.v1i3.1372

Keywords:

Regional logistics networks, Feature reconstruction matching, Adaptive dynamic quotation, Divergent transform learning, Industry standardization

Abstract

The pervasive information asymmetries and scalability bottlenecks inherent in regional micro logistics networks present formidable challenges to operational efficiency and resource synergy. To address the complex dynamics of supply and demand matching, this study proposes a comprehensive algorithmic matrix that integrates feature reconstruction matching for structural resource alignment , an adaptive dynamic quotation model for market responsive pricing , and a divergent transform learning scheduling mechanism designed to suppress peak operational risks. Empirical implementations across extensive regional networks demonstrate that this integrated approach mitigates operational inefficiencies, yielding an observed warehouse utilization enhancement exceeding twenty five percent and a reduction in short distance empty vehicle runs by thirty percent. Considering the multifaceted nature of supply chain variables, these algorithmic interventions contribute to a systemic logistical cost reduction ranging from fifteen to twenty percent. The empirical thresholds derived from these implementations have fundamentally informed the formulation of multiple national industry standards, suggesting that transitioning from heuristic driven practices to algorithmically standardized paradigms offers a sustainable trajectory for regional logistics, although the long term adaptability of these models across diverse geographic networks warrants further research.

Published

2026-03-30

Issue

Section

Articles

How to Cite

Analysis of the Technical Application and Effectiveness of Intelligent Algorithms Empowering Regional Logistics Resource Matching. (2026). Engineering Frontiers, 1(3). https://doi.org/10.71411/ef.2025.v1i3.1372