4.7 Article

A multiple leaders particle swarm optimization algorithm with variable neighborhood search for multiobjective fixed crowd carpooling problem

Journal

SWARM AND EVOLUTIONARY COMPUTATION
Volume 72, Issue -, Pages -

Publisher

ELSEVIER
DOI: 10.1016/j.swevo.2022.101103

Keywords

Multiple leaders; Particle swarm optimization; Variable neighborhood search; Multiobjective; Carpooling

Funding

  1. Science and Technology Sup-port Plan of Sichuan Province of China [H04W210180]
  2. UESTC-ZHIXIAOJING Joint Research Center of Smart Home [2021KJFH004]
  3. Neijiang technology incubation and trans-formation Funds [2020YBGL83]
  4. Chongqing Social Science Foun-dation [20YJC630206]
  5. Youth Foundation of Social Science and Hu-manity, China Ministry of Education [R2018JG15]
  6. Project of ChongQing University of Arts and Sciences [21SKGH210]
  7. Human-ities and Social Sciences Research Project of Education Commission of Chongqing [2021YFG0024]
  8. Science and Technology Support Plan of Sichuan Province of China [H04W210180, 2021KJFH004]
  9. UESTC-ZHIXIAOJING Joint Research Center of Smart Home [2020YBGL83]
  10. Neijiang technology incubation and transformation Funds [20YJC630206]
  11. Chongqing Social Science Foundation [R2018JG15]
  12. Youth Foundation of Social Science and Humanity
  13. China Ministry of Education [21SKGH210]
  14. Project of ChongQing University of Arts and Sciences [2021YFG0024]
  15. Humanities and Social Sciences Research Project of Education Commission of Chongqing [2014JY0193]

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This paper studies a multiobjective carpooling problem for people working in the same industrial park and proposes a novel multiple leaders particle swarm optimization algorithm MPSO-VNS which can effectively solve the problem. Experimental results show that the algorithm performs well in terms of solution efficiency and multiobjective optimization performance.
Carpooling is a shared travel mode that can increase vehicle utilization and ease urban traffic pressure. Carpooling in a fixed group of people can not only increase the utilization rate of vehicles, but also provide better interpersonal relationships. This paper studies a multiobjective carpooling problem for people working in the same industrial park. The optimization objectives include minimizing the total mileage of vehicles, the total mileage of employees, and the extra time consumed by employees. A mathematical model was established, and a sequence code was designed. A novel type of multiple leaders particle swarm optimization algorithm MPSO-VNS combined with variable neighborhood search is proposed. The leaders are selected from the optimal solution set of particle motion according to the direction distance index. Experiments show that the MPSO-VNS algorithm can effectively solve the multiobjective carpooling problem. Compared with the six algorithms of NSGA- II , MOEA/D, PSO, MaPSO, VNS, and Two-Level VNS, MPSO-VNS can obtain a better non-dominated solution set and also has good computational efficiency.

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