Research Article Open Access

Data Clustering-based Metaheuristic for Physical Internet Supply Chain Network

Abdelsamad Chouar1, Samir Tetouani1, Aziz Soulhi1 and Jamila Elalami1
  • 1 Laboratoire d'Analyse des Systèmes, Traitement de l'Information et Management Intégré, Centre des Etudes Doctorales, Ecole Mohammadia d'ingénieurs, Rabat, Morocco, Morocco

Abstract

In this study, a data clustering-driven technique is proposed for a Physical Internet Supply Chain Network (PI-SCN) to reduce data complexity, process time compression, and lankness of process optimization. Given a set of data points, a clustering algorithm aims to classify each data-points into a specific group. Each group should have similar properties and/or features, while data points in different groups should have highly dissimilar properties and/or features. The motivation of this study follows. Firstly, an improved metaheuristic algorithm named ISCA is proposed as a new data clustering technique to improve and incorporate a variety of PI-SCN decisions. By this framework, we propose a tool to make clear decisions for enterprise proprietors. The robustness of the proposed approach is tested against five recent metaheuristics using twelve benchmark datasets. The presented technique performs more satisfactory accurateness and complete coverage of search space in comparison to the existing methods.

Journal of Computer Science
Volume 18 No. 4, 2022, 233-245

DOI: https://doi.org/10.3844/jcssp.2022.233.245

Submitted On: 22 September 2021 Published On: 21 April 2022

How to Cite: Chouar, A., Tetouani, S., Soulhi, A. & Elalami, J. (2022). Data Clustering-based Metaheuristic for Physical Internet Supply Chain Network. Journal of Computer Science, 18(4), 233-245. https://doi.org/10.3844/jcssp.2022.233.245

  • 2,446 Views
  • 1,125 Downloads
  • 4 Citations

Download

Keywords

  • Physical Internet Supply Chain Network (PI-SCN)
  • Data Clustering
  • Sine Cosine Algorithm (SMA)
  • Accelerated Particle Swarm Optimization (APSO)