Construction of Mathematical Model of Logistics Delivering Based on Intelligent Mobilization

Distribution process is the core of logistics enterprise system. Efficient distribution process is the key for enterprises to improve logistics service level, gain competitive advantage, and win customers. In order to reduce the design error of the system and ensure the effective operation of the sy...

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Main Authors: Haijun Liang, Jing Guo
Format: Article
Language:English
Published: Wiley 2022-01-01
Series:Journal of Function Spaces
Online Access:http://dx.doi.org/10.1155/2022/7386227
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author Haijun Liang
Jing Guo
author_facet Haijun Liang
Jing Guo
author_sort Haijun Liang
collection DOAJ
description Distribution process is the core of logistics enterprise system. Efficient distribution process is the key for enterprises to improve logistics service level, gain competitive advantage, and win customers. In order to reduce the design error of the system and ensure the effective operation of the system, this paper establishes the system model and analyzes the properties of the model through the evaluation and analysis of various resources of the distribution system. The future development of intelligent logistics system is not only the key for logistics enterprises to win competition, but also a new measure to promote China’s economic development. This is not only a typical NP hard problem, but also a major challenge for the rational and scientific development of the intelligent logistics industry. Based on the previous theoretical research results, this paper intends to explore the intelligent logistics distribution route selection scheme by using mathematical modeling methods such as particle swarm optimization, so as to provide new technologies and methods for logistics distribution operation and management decision-making. The results show that compared with the traditional genetic algorithm, the accuracy of the improved particle swarm optimization algorithm is improved by 10.36%. This method effectively improves the operation cycle and link efficiency and achieves the purpose of optimization. The improved particle swarm optimization algorithm proposed in this paper is not only more suitable and effective for enterprise decision makers to deal with subjective judgments in an imprecise environment. It is also based on the evaluation sequence of each indicator of the alternative obtained from the evaluation and the comprehensive evaluation of all indicators. By weighting and considering the results, the best solution for enterprise logistics and distribution is selected.
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spelling doaj-art-4dcadce395d84e99a40d16a058d91b682025-02-03T05:50:36ZengWileyJournal of Function Spaces2314-88882022-01-01202210.1155/2022/7386227Construction of Mathematical Model of Logistics Delivering Based on Intelligent MobilizationHaijun Liang0Jing Guo1Hebei Vocational University of Industry and TechnologyHebei Vocational University of Industry and TechnologyDistribution process is the core of logistics enterprise system. Efficient distribution process is the key for enterprises to improve logistics service level, gain competitive advantage, and win customers. In order to reduce the design error of the system and ensure the effective operation of the system, this paper establishes the system model and analyzes the properties of the model through the evaluation and analysis of various resources of the distribution system. The future development of intelligent logistics system is not only the key for logistics enterprises to win competition, but also a new measure to promote China’s economic development. This is not only a typical NP hard problem, but also a major challenge for the rational and scientific development of the intelligent logistics industry. Based on the previous theoretical research results, this paper intends to explore the intelligent logistics distribution route selection scheme by using mathematical modeling methods such as particle swarm optimization, so as to provide new technologies and methods for logistics distribution operation and management decision-making. The results show that compared with the traditional genetic algorithm, the accuracy of the improved particle swarm optimization algorithm is improved by 10.36%. This method effectively improves the operation cycle and link efficiency and achieves the purpose of optimization. The improved particle swarm optimization algorithm proposed in this paper is not only more suitable and effective for enterprise decision makers to deal with subjective judgments in an imprecise environment. It is also based on the evaluation sequence of each indicator of the alternative obtained from the evaluation and the comprehensive evaluation of all indicators. By weighting and considering the results, the best solution for enterprise logistics and distribution is selected.http://dx.doi.org/10.1155/2022/7386227
spellingShingle Haijun Liang
Jing Guo
Construction of Mathematical Model of Logistics Delivering Based on Intelligent Mobilization
Journal of Function Spaces
title Construction of Mathematical Model of Logistics Delivering Based on Intelligent Mobilization
title_full Construction of Mathematical Model of Logistics Delivering Based on Intelligent Mobilization
title_fullStr Construction of Mathematical Model of Logistics Delivering Based on Intelligent Mobilization
title_full_unstemmed Construction of Mathematical Model of Logistics Delivering Based on Intelligent Mobilization
title_short Construction of Mathematical Model of Logistics Delivering Based on Intelligent Mobilization
title_sort construction of mathematical model of logistics delivering based on intelligent mobilization
url http://dx.doi.org/10.1155/2022/7386227
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