• DocumentCode
    990308
  • Title

    An Effective PSO-Based Memetic Algorithm for Flow Shop Scheduling

  • Author

    Liu, Bo ; Wang, Ling ; Jin, Yi-Hui

  • Author_Institution
    Dept. of Autom., Tsinghua Univ., Beijing
  • Volume
    37
  • Issue
    1
  • fYear
    2007
  • Firstpage
    18
  • Lastpage
    27
  • Abstract
    This paper proposes an effective particle swarm optimization (PSO)-based memetic algorithm (MA) for the permutation flow shop scheduling problem (PFSSP) with the objective to minimize the maximum completion time, which is a typical non-deterministic polynomial-time (NP) hard combinatorial optimization problem. In the proposed PSO-based MA (PSOMA), both PSO-based searching operators and some special local searching operators are designed to balance the exploration and exploitation abilities. In particular, the PSOMA applies the evolutionary searching mechanism of PSO, which is characterized by individual improvement, population cooperation, and competition to effectively perform exploration. On the other hand, the PSOMA utilizes several adaptive local searches to perform exploitation. First, to make PSO suitable for solving PFSSP, a ranked-order value rule based on random key representation is presented to convert the continuous position values of particles to job permutations. Second, to generate an initial swarm with certain quality and diversity, the famous Nawaz-Enscore-Ham (NEH) heuristic is incorporated into the initialization of population. Third, to balance the exploration and exploitation abilities, after the standard PSO-based searching operation, a new local search technique named NEH_1 insertion is probabilistically applied to some good particles selected by using a roulette wheel mechanism with a specified probability. Fourth, to enrich the searching behaviors and to avoid premature convergence, a simulated annealing (SA)-based local search with multiple different neighborhoods is designed and incorporated into the PSOMA. Meanwhile, an effective adaptive meta-Lamarckian learning strategy is employed to decide which neighborhood to be used in SA-based local search. Finally, to further enhance the exploitation ability, a pairwise-based local search is applied after the SA-based search. Simulation results based on benchmarks demonstrate the effectiveness of- - the PSOMA. Additionally, the effects of some parameters on optimization performances are also discussed
  • Keywords
    computational complexity; flow shop scheduling; genetic algorithms; learning (artificial intelligence); particle swarm optimisation; probability; search problems; simulated annealing; NP hard combinatorial problem; flow shop scheduling; local search technique; memetic algorithm; meta-Lamarckian learning strategy; particle swarm optimisation; probability; random key representation; simulated annealing; Convergence; Job shop scheduling; Manufacturing automation; Manufacturing systems; Particle swarm optimization; Polynomials; Process control; Scheduling algorithm; Simulated annealing; Wheels; Adaptive meta-Lamarckian learning; memetic algorithm (MA); particle swarm optimization (PSO); permutation flow shop scheduling; Algorithms; Artificial Intelligence; Biomimetics; Computer Simulation; Industry; Models, Theoretical; Planning Techniques; Software; Systems Theory; Workplace;
  • fLanguage
    English
  • Journal_Title
    Systems, Man, and Cybernetics, Part B: Cybernetics, IEEE Transactions on
  • Publisher
    ieee
  • ISSN
    1083-4419
  • Type

    jour

  • DOI
    10.1109/TSMCB.2006.883272
  • Filename
    4067067