Affiliation:
1. Henan Polytechnic Institute Nanyang 473000, China
Abstract
With the rapid development of the Internet, e-commerce business has gradually emerged. However, its logistics distribution route planning method has problems such as redundancy of logistics data, which cannot achieve centralized planning of distribution paths, resulting in low e-commerce logistics distribution efficiency and long distribution distances, higher cost. Therefore, in order to improve the ability of logistics distribution path planning, this paper designs an e-commerce logistics distribution path planning method based on improved genetic algorithm. Optimize the analysis of e-commerce logistics distribution nodes, establish a modern logistics distribution system, and optimize the total transportation time and transportation cost under the location model of the logistics distribution center. Using hybrid search algorithm and improved genetic algorithm parameters, an improved genetic algorithm distribution path planning model is established to select the optimal path of logistics distribution, and realize e-commerce logistics distribution path with high accuracy, low error and good convergence. planning. According to the experimental results, the method in this paper can effectively shorten the distance of e-commerce logistics distribution path, reduce the number of distribution vehicles, reduce distribution costs, improve distribution efficiency, and effectively achieve centralized planning of logistics distribution. Therefore, the e-commerce logistics distribution route planning method based on improved genetic algorithm has high practical application value.
Publisher
North Atlantic University Union (NAUN)
Subject
Electrical and Electronic Engineering,Signal Processing
Reference22 articles.
1. Y. Wang and Q. Shi, “Spare parts closed-loop logistics network optimization problems: model formulation and meta-heuristics solution,” IEEE Access, vol. 7, no. 11, pp. 45048-45060, 2019.
2. E. Mardaneh, R. Loxton, and S. Meka, et al., “A decision support system for grain harvesting, storage, and distribution logistics”, Knowledge-Based Systems, vol. 223, no. 1, pp. 107037, 2021.
3. S. Alomari, S. Salaimeh, E. A. Jarrah, et al., “Enhanced logistics information service systems performance: using theoretical model and cybernetics' principles”, WSEAS Transactions on Business and Economics, vol. 17, no. 29, pp. 278-287, 2020.
4. C. A. Pramono, A. H. Manurung, and P. Heriyati, et al., “Analysis of the influence of entrepreneurship capability, agility, business transformation, opportunity on start-up behavior in e-commerce companies in Indonesia during the Covid 19 pandemic”, WSEAS Transactions on Business and Economics, vol. 18, pp. 1103-1112, 2021.
5. G. H. Wan, “E-commerce logistics distribution path optimization based on improved ant colony optimization algorithm,” Electronic Design Engineering, vol. 29, no. 02, pp. 25-28+33, 2021.