$Robust Optimization of Cold Chain Logistics Networks with Time Window under Uncertain Demand: A Case Study in China$

02 Aug 2024 (modified: 30 Sept 2024)IEEE ICIST 2024 Conference SubmissionEveryoneRevisionsBibTeXCC BY 4.0
TL;DR: A robust optimization model for cold chain logistics networks with time window identifies the optimal distribution center location and delivery routes, accessing the impact of demand fluctuations and freight rate changes on the optimization results.
Abstract: $ China's cold chain industry suffers from the problems of imperfect cold chain logistics network and irrational planning, causing high cold chain loss and high enterprise costs, and severely restricting the development of the industry. Considering the high uncertainty of cold chain market demand, this paper adopts the robust optimization method to construct an optimization model of cold chain logistics network with a time window by taking the minimization of the comprehensive cost of the system as the goal, and uses genetic algorithm to solve the model. This paper takes Company A as an example for analysis, and obtains the optimization scheme through the optimization model. The location of the optimal distribution center is obtained, and six distribution paths are planned so as to form a complete cold chain network system. Meanwhile, the optimization results under different demand fluctuation risk levels and different freight conditions are considered, and the results show that the location selection and path scheduling will not change under different demand fluctuation levels. In addition, a sensitivity analysis of the dynamic change of freight rate was carried out. When the freight rate reaches $4.5/t/km, not only the transportation cost and cargo damage cost will increase accordingly, but also the routing scheme will change accordingly.$
Submission Number: 55
Loading

OpenReview is a long-term project to advance science through improved peer review with legal nonprofit status. We gratefully acknowledge the support of the OpenReview Sponsors. © 2025 OpenReview