Multi-objective particle swarm optimisation based integrated production inventory routing planning for efficient perishable food logistics operations

Chan, Felix T.S. ; Wang, Z.X. ; Goswami, A. ; Singhania, A. ; Tiwari, M.K. (2020) Multi-objective particle swarm optimisation based integrated production inventory routing planning for efficient perishable food logistics operations International Journal of Production Research, 58 (17). pp. 5155-5174. ISSN 0020-7543

Full text not available from this repository.

Official URL: https://doi.org/10.1080/00207543.2019.1701209

Related URL: http://dx.doi.org/10.1080/00207543.2019.1701209

Abstract

Sustainable and efficient food supply chain has become an essential component of one’s life. The model proposed in this paper is deeply linked to people's quality of life as a result of which there is a large incentive to fulfil customer demands through it. This proposed model can enhance food quality by making the best possible food quality accessible to customers, construct a sustainable logistics system considering its environmental impact and ensure the customer demand to be fulfilled as fast as possible. In this paper, an extended model is examined that builds a unified planning problem for efficient food logistics operations where four important objectives are viewed: minimising the total expense of the system, maximising the average food quality along with the minimisation of the amount of CO2 emissions in transportation along with production and total weighted delivery lead time minimisation. A four objective mixed integer linear programming model for intelligent food logistics system is developed in the paper. The optimisation of the formulated mathematical model is proposed using a modified multi-objective particle swarm optimisation algorithm with multiple social structures: MO-GLNPSO (Multi-Objective Global Local Near-Neighbour Particle Swarm Optimisation). Computational results of a case study on a given dataset as well as on multiple small, medium and large-scale datasets followed by sensitivity analysis show the potency and effectiveness of the introduced method. Lastly, there has been a scope for future study displayed which would lead to the further progress of these types of models.

Item Type:Article
Source:Copyright of this article belongs to International Foundation for Production Research.
Keywords:multi-objective optimisation; Particle swarm optimisation; Food quality; Perishable productin; Telligent food logistics operation; Sintegrated outlining.
ID Code:139609
Deposited On:26 Aug 2025 14:49
Last Modified:26 Aug 2025 14:49

Repository Staff Only: item control page