Abstract
In order to improve the centralized planning ability of logistics distribution path data, improve the efficiency of logistics distribution and reduce the cost of logistics distribution, this paper proposes an optimal path selection algorithm based on machine vision. Using machine vision technology to calibrate the coordinates of logistics distribution path, combined with EMD decomposition method and wavelet denoising method to remove redundant data in logistics distribution data, particle swarm optimization algorithm to complete logistics distribution path planning, and ant colony algorithm to realize the optimal path selection of logistics distribution. The experimental results show that the average distribution cost of this method is only 766.7 yuan, the distribution time is less than 0.3 h, and the customer satisfaction is as high as 98%, which shows that this method can effectively optimize the distribution path.
Subject
Computational Mathematics,Computer Science Applications,General Engineering
Reference18 articles.
1. Measuring the gaps between shippers and logistics service providers on green logistics throughout the logistics purchasing process;Jazairy;Int J Phys Distrib Logist Manage.,2020
2. Energy efficiency in logistics through service modularity: The case of household waste;Wehner;Int J Phys Distrib Logist Manage.,2021
3. Optimization of urban logistics distribution path under dynamic traffic network;Yang;Int J Eng.,2020
4. Vehicle routing optinmization of logistics distribution based on donkey and smuggler optinmization algorithm;Wang;Comput Appl Softw.,2020
5. Research on logistics distribution route optimization with time window considering flexible charging strategy;Ge;Control Theory Appl.,2020