Mathematical models and optimization algorithms for low-carbon Location-Inventory-Routing Problem with uncertainty

This thesis considers the low carbon Location-Inventory-Routing Problem (LIRP) by addressing the challenges of demand uncertainty through the application of stochastic and fuzzy methods. Multi-objective mathematical models are developed to solve the conflict between total supply chain cost, carbo...

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Bibliographic Details
Main Author: Liu, Lihua
Format: Thesis
Language:English
Published: 2024
Subjects:
Online Access:http://psasir.upm.edu.my/id/eprint/119118/
http://psasir.upm.edu.my/id/eprint/119118/1/119118.pdf
Description
Summary:This thesis considers the low carbon Location-Inventory-Routing Problem (LIRP) by addressing the challenges of demand uncertainty through the application of stochastic and fuzzy methods. Multi-objective mathematical models are developed to solve the conflict between total supply chain cost, carbon emission cost, and customer satisfaction in logistics management. This thesis also aims to solve the low-carbon LIRP model with uncertainty factors such as carbon trading, customer demand, shortages, and soft time windows using advanced algorithms. Three LIRP models involving multiple distribution centers and periods are proposed. The first model is a fuzzy chanceconstrained programming model that considers factors such as cost, out-of-stock inventory, carbon trading mechanisms, and fuzzy customer demand. The other two models are bi-objective mixed integer nonlinear programming models with soft time window constraints developed to minimize costs and maximize customer satisfaction under uncertain demand, which include stochastic and fuzzy demand, respectively. Given the NP-Hard nature of the three models proposed in this thesis, two metaheuristic algorithms have been developed. A hybrid Particle Swarm Optimization-Bacterial Foraging Algorithm is developed for solving the single objective LIRP model. Further more, an improved non-dominated sorting genetic algorithm with an elite strategy II (IMNSGA-II) has been developed to solve the two bi-objective models, surpassing existing literature’s algorithms such as Pareto Envelope-based Selection Algorithm II (PESA-II) and NSGA-II. Empirical validation using benchmark dataset and real-world data from three logistics companies in China demonstrates significant improvements in supply chain efficiency and cost reduction. When compared to the Supply Chain Guru X (SCGX) software, the proposed algorithms offer higher practical applicability.