Litcius/Paper detail

A Novel Multi-Objective Model for the Cold Chain Logistics Considering Multiple Effects

Feiyue Qiu, Guodao Zhang, Ping‐Kuo Chen, Cheng Wang, Yi Pan, Xin Sheng, Dewei Kong

2020Sustainability28 citationsDOIOpen Access PDF

Abstract

This paper focuses on solving a problem of green location-routing with cold chain logistics (GLRPCCL). Considering the sustainable effects of the economy, environment, society, and cargos, we try to establish a multi-objective model to minimize the total cost, the full set of greenhouse gas (GHG) emissions, the average waiting time, and the total quality degradation. Several practical demands were considered: heterogeneous fleet (HF), time windows (TW), simultaneous pickup and delivery (SPD), and a feature of mixed transportation. To search the optimal Pareto front of such a nondeterministic polynomial hard problem, we proposed an optimization framework that combines three multi-objective evolutionary algorithms (MOEAs) and also developed two search mechanisms for a large composite neighborhood described by 16 operators. Extensive analysis was conducted to empirically assess the impacts of several problem parameters (i.e., distribution strategy, fleet composition, and depots’ time windows and costs) on Pareto solutions in terms of the performance indicators. Based on the experimental results, this provides several managerial insights for the sustainale logistics companies.

Topics & Concepts

Mathematical optimizationComputer scienceMulti-objective optimizationVehicle routing problemPareto principleGreenhouse gasOperations researchBenchmark (surveying)Knapsack problemSet (abstract data type)Routing (electronic design automation)EngineeringMathematicsGeodesyBiologyComputer networkProgramming languageEcologyGeographyVehicle Routing Optimization MethodsFood Supply Chain TraceabilityUrban and Freight Transport Logistics