Research of Large-Scale Logistics Management Optimization Model

The process of large-scale logistics management, logistics vehicle scheduling is the core content in logistics management process. In order to achieve optimal scheduling of vehicles, saving transportation costs, and taking into account the defect of high computational complexity exists in traditional vehicle scheduling algorithm, which is not practical for application, this paper proposes an improved vehicle scheduling optimization model. Experimental results show that the new algorithm is applied to large-scale logistics management optimization model, which can improve its practicality and effectiveness.

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