Progressive learning particle swarm optimization algorithm (original) (raw)

References

  1. Alam, S., Dobbie, G., Koh, Y.S., et al.: Research on particle swarm optimization based clustering: A systematic review of literature and techniques. Swarm and Evolutionary Computation 17, 1–13 (2014)
    Article Google Scholar
  2. Kumar, S., Panagant, N., et al.: A two-archive multi-objective multi-verse optimizer for truss design. Knowledge-Based Systems 270, 110529 (2023)
    Article Google Scholar
  3. Nonut, A., Kanokmedhakul, Y., Bureerat, S., et al.: A small fixed-wing UAV system identification using metaheuristics. Cogent Engineering 1(9), 2114196 (2022)
    Article Google Scholar
  4. Singh, P., Kottath, R., Ghanshyam, G.: Ameliorated Follow The Leader: Algorithm and Application to Truss Design Problem. Structures 42, 181–204 (2022)
    Article Google Scholar
  5. Liu, R.C., Li, J.X., Fan, J., et al.: A coevolutionary technique based on multi-swarm particle swarm optimization for dynamic multi-objective optimization. European Journal of Operational Research 261(3), 1028–1051 (2017)
    Article MathSciNet Google Scholar
  6. Cui, Y.Y., Meng, X., Qiao, J.: F, A multi-objective particle swarm optimization algorithm based on two-archive mechanism. Applied Soft Computing 119, 108532 (2022)
    Article Google Scholar
  7. Gopidas, D.K., Priya, D.R.: Hybrid Segmentation Method for Boundary Delineation of Agricultural Fields in Multitemporal Satellite Image using HS-PSO-FCNN. Materials Today: Proceedings 51, 2272–2276 (2022)
    Google Scholar
  8. Lin, C.C., Peng, Y.C., Kang, J.R.: Joint green dynamic order batching and picker routing problem using PSO with global worst experience. Applied Soft Computing 154, 111336 (2024)
    Article Google Scholar
  9. Chen, K., Xue, B., Zhang, M.J., et al.: An evolutionary multitasking-based feature selection method for high-dimensional classification. IEEE Transactions on Cybernetics 52(7), 7172–7186 (2022)
    Article Google Scholar
  10. Zhang, J.Y., Chen, C.K., Wu, C., et al.: Storage quality prediction of winter jujube based on particle swarm optimization-backpropagation-artificial neural network (PSO-BP-ANN). Scientia Horticulturae 331, 112789 (2024)
    Article Google Scholar
  11. Zhan, Z.H., Zhang, J., Li, Y., Shi, Y.H.: Orthogonal learning particle swarm optimization. IEEE Transactions on Evolutionary Computation 15, 832–847 (2011)
    Article Google Scholar
  12. Rogalsky, T., Kocabiyik, S., Derksen, R.W.: Differential evolution in aerodynamic optimization. Canadian Aeronautics and Space Journal 46(4), 183–190 (2000)
    Google Scholar
  13. Goldberg, D.E., Holland, J.H.: Genetic algorithms and machine learning. Machine Learning 3(2), 95–99 (1988)
    Article Google Scholar
  14. Whitley, D.: A genetic algorithm tutorial. Statistics and Computing 4(2), 65–85 (1994)
    Article Google Scholar
  15. Qin, A.K., Huang, V.L., Suganthan, P.N.: Differential evolution algorithm with strategy adaptation for global numerical optimization. IEEE Transactions on Evolutionary Computation 13(2), 398–417 (2009)
    Article Google Scholar
  16. Tao, X.M., Li, X.K., Chen, W., et al.: Self-Adaptive two roles hybrid learning strategies-based particle swarm optimization. Information Sciences 578, 457–481 (2021)
    Article MathSciNet Google Scholar
  17. Liu, H., Zhang, X.W., Tu, L.P.: A modified particle swarm optimization using adaptive strategy. Expert Systems with Applications 152, 113353 (2020)
    Article Google Scholar
  18. Li, T.Y., Shi, J.Y., Deng, W., et al.: Pyramid particle swarm optimization with novel strategies of competition and cooperation. Applied Soft Computing 121, 108731 (2022)
    Article Google Scholar
  19. Cheng, R., Jin, Y.C.: A social learning particle swarm optimization algorithm for scalable optimization. Information Sciences 291, 43–60 (2015)
    Article MathSciNet Google Scholar
  20. Zhang, X.M., Lin, Q.Y.: Three-learning strategy particle swarm algorithm for global optimization problems. Information Sciences 593, 289–313 (2022)
    Article Google Scholar
  21. Xia, X.W., Gui, L., Yu, F., et al.: Triple archives particle swarm optimization. IEEE Transactions on Cybernetics 50, 4862–4875 (2020)
    Article Google Scholar
  22. Molaei, S., Moazen, H., Samad, N.G., Farzinvash, L.: Particle swarm optimization with an enhanced learning strategy and crossover operator. Knowledge-Based Systems 215, 106768 (2021)
    Article Google Scholar
  23. Meng, Z.Y., Zhong, Y.X., Mao, G.J., Liang, Y.: PSO-sono: A novel PSO variant for single-objective numerical optimization. Information Sciences 586, 176–191 (2022)
    Article Google Scholar
  24. Liang, J., Qin, A.K., Suganthan, P.N., Baskar, S.: Comprehensive learning particle swarm optimizer for global optimization of multimodal functions. IEEE Transactions on Evolutionary Computation 10(3), 281–295 (2006)
    Article Google Scholar
  25. Wang, D.S., Tan, D., Liu, L.: Particle swarm optimization algorithm: an overview. Soft Computing 22(3), 387–408 (2018)
    Article Google Scholar
  26. Xu, G.P., Cui, Q.L., Shi, X.H., et al.: Particle swarm optimization based on dimensional learning strategy. Swarm and Evolutionary Computation 45, 33–51 (2019)
    Article Google Scholar
  27. Cheng, R., Jin, Y.C.: A competitive swarm optimizer for large scale optimization. IEEE Transactions on Cybernetics 45(2), 191–204 (2015)
    Article Google Scholar
  28. Mohammadi, R., Fatemi Ghomi, SMT., Jolai, F.: Prepositioning emergency earthquake response supplies: a new multi-objective particle swarm optimization algorithm. Applied Mathematical Modelling, 40(9): 5183-5199 (2016)
  29. Zhan, Z.H., Zhang, J., Li, Y., et al.: Adaptive particle swarm optimization. IEEE Transactions on Systems, Man, and Cybernetics, Part B 39(6), 1362–1381 (2009)
    Article Google Scholar
  30. Zhang, L.M., Tang, Y.G., Hua, C.C., et al.: A new particle swarm optimization algorithm with adaptive inertia weight based on Bayesian techniques. Applied Soft Computing 28, 138–149 (2015)
    Article Google Scholar
  31. Li, M.Q., Lin, D., Kou, J.: A hybrid niching PSO enhanced with recombination-replacement crowding strategy for multimodal function optimization. Applied Soft Computing 12(3), 975–987 (2012)
    Article Google Scholar
  32. Liu, Q.F., Wei, W.H., Yuan, H.Q., et al.: Topology selection for particle swarm optimization. Information Sciences 363, 154–173 (2016)
    Article Google Scholar
  33. Sun, W., Lin, A.P., Yu, H.S., et al.: All-dimension neighborhood based particle swarm optimization with randomly selected neighbors. Information Sciences 405, 141–156 (2017)
    Article Google Scholar
  34. Lin, A.P., Sun, W., Yu, H.S., et al.: Global genetic learning particle swarm optimization with diversity enhancement by ring topology. Swarm and Evolutionary Computation 44, 571–583 (2019)
    Article Google Scholar
  35. Nasir, M., Das, S., Maity, D., et al.: A dynamic neighborhood learning based particle swarm optimizer for global numerical optimization. Information Sciences 209, 16–36 (2012)
    Article MathSciNet Google Scholar
  36. Wang, Y.B., Zhang, M.L., Lu, C.D., et al.: Deep optimization design of 2D repetitive control systems with saturating actuators: An adaptive multi-population PSO algorithm. ISA Transactions 140, 342–353 (2023)
    Article Google Scholar
  37. Ye, W.X., Feng, W.Y., Fan, S.H.: A novel multi-swarm particle swarm optimization with dynamic learning strategy. Applied Soft Computing 61, 832–843 (2017)
    Article Google Scholar
  38. Zhao, S.C., Wang, D.: Elite-ordinary synergistic particle swarm optimization. Information Sciences 609, 1567–1587 (2022)
    Article Google Scholar
  39. Lynn, N., Suganthan, P.N.: Ensemble particle swarm optimizer. Applied Soft Computing 55, 533–548 (2017)
    Article Google Scholar
  40. Chen, X., Tian, H.G., Du, W.L.: Bee-foraging learning particle swarm optimization. Applied Soft Computing 102, 107134 (2021)
    Article Google Scholar
  41. Zheng, S.C., Pan, Q.Q., He, D.H., et al.: Reactor lightweight shielding optimization method based on parallel embedded genetic particle-swarm hybrid algorithm. Progress in Nuclear Energy 168, 105040 (2024)
    Article Google Scholar
  42. Xia X. W., Xie, Cheng W., Wei B.: et al, Particle swarm optimization using multi-level adaptation and purposeful detection operators. Information Sciences, 385-386: 174-195 (2017)
  43. Xia, X.W., Liu, J.N., Hu, Z.B.: An improved particle swarm optimizer based on tabu detecting and local learning strategy in a shrunk search space. Applied Soft Computing 23, 76–90 (2014)
    Article Google Scholar
  44. Hakli, H., Uguz, H.: A novel particle swarm optimization algorithm with Levy flight. Applied Soft Computing 23, 333–345 (2014)
    Article Google Scholar
  45. Wu, G.H., Mallipeddi R., Suganthan, P.N.: Problem definitions and evaluation criteria for the CEC 2017 competition on constrained real-parameter optimization. National University of Defense Technology, Changsha, Hunan, PR China and Kyungpook National University, Daegu, South Korea and Nanyang Technological University, Singapore, Technical Report, (2016)
  46. Ahrari A., Elsayed S., Sarker R.: et al, Problem definition and evaluation criteria for the CEC 2022 competition on dynamic multimodal optimization. Technical Report, (2021)
  47. Zentall, T.R.: Imitation in animals: evidence, function, and mechanisms. Cybernetics and Systems 32, 53–96 (2001)
    Article Google Scholar
  48. Asada, M.: Modeling early vocal development through infantcaregiver interaction: a review. IEEE Transactions on Cognitive and Developmental Systems 8, 128–138 (2016)
    Article Google Scholar
  49. Deng, H.B., Peng, L.Z., Zhang, H.B., et al.: Ranking-base biased learning swarm optimizer for large-scale optimization. Information Sciences 493, 120–137 (2019)
    Article MathSciNet Google Scholar
  50. Zhang, X.M., Wang, X., Kang, Q., Cheng, J.F.: Differential mutation and novel social learning particle swarm optimization algorithm. Information Sciences 480, 109–129 (2019)
    Article Google Scholar
  51. Yang, Q., Chen, W.N., Deng, J.D., et al.: A level-based learning swarm optimizer for large-scale optimization. IEEE Transactions on Evolutionary Computation 22(4), 578–594 (2018)
    Article Google Scholar
  52. Gong, Y.J., Li, J.J., Zhou, Y.C., et al.: Genetic learning particle swarm optimization. IEEE Transactions on Cybernetics 46(10), 2277–2290 (2016)
    Article Google Scholar
  53. Wilcoxon, F.: Individual comparisons by ranking methods. Biometrics 1, 196–202 (1945)
    MathSciNet Google Scholar
  54. Derrac, J., García, S., Molina, D., Herrera, F.: A practical tutorial on the use of nonparametric statistical tests as a methodology for comparing evolutionary and swarm intelligence algorithms. Swarm and Evolutionary Computation 1, 3–18 (2011)
    Article Google Scholar
  55. Mirjalili, S., Mirjalili, S.M., Lewis, A.: Grey wolf optimizer. Advances in Engineering Software 69, 46–61 (2014)
    Article Google Scholar
  56. Mirjalili, S.: SCA: a sine cosine algorithm for solving optimization problems. Knowledge-Based Systems 96, 120–133 (2016)
    Article Google Scholar
  57. The whale optimization algorithm: Mirjalili S., Lewis. An. Advances in Engineering Software 95, 51–67 (2016)
    Google Scholar
  58. Xu, Y.N., Mei, Y.D.: A modified water cycle algorithm for long-term multi-reservoir optimization. Applied Soft Computing 71, 317–332 (2018)
    Article Google Scholar
  59. Hashim, F.A., Houssein, E.H., Mabrouk, M.S., et al.: Henry gas solubility optimization: a novel physics-based algorithm. Future Generation Computer Systems 101, 646–667 (2019)
    Article Google Scholar
  60. Xue, J.K., Shen, B.: A novel swarm intelligence optimization approach: sparrow search algorithm. Systems Science and Control Engineering 1(8), 22–34 (2020)
    Article Google Scholar
  61. Abualigah., Diabat A., Mirjalili, S.: et al, The arithmetic optimization algorithm. Computer Methods in Applied Mechanics and Engineering, 376: 113609 (2021)
  62. Zhao, W.G., Wang, L.Y., Mirjalili, S.: Artificial hummingbird algorithm: a new bio-inspired optimizer with its engineering applications. Computer Methods in Applied Mechanics and Engineering 388, 114194 (2022)
    Article MathSciNet Google Scholar
  63. Tanabe, R., Fukunaga, A.: Improving the search performance of SHADE using linear population size reduction. IEEE Congress on Evolutionary Computation (CEC) 2014, 1658–1665 (2014)
    Google Scholar
  64. Wang, Y.R., Yu, Y., Gao, S.C., et al.: A hierarchical gravitational search algorithm with an effective gravitational constant. Swarm and Evolutionary Computation 46, 118–139 (2019)
    Article Google Scholar
  65. Gao, S.C., Yu, Y., Wang, Y.R., et al.: Chaotic local search-based differential evolution algorithms for optimization. IEEE Transactions on Systems, Man, and Cybernetics: Systems 51, 3954–3967 (2021)
    Article Google Scholar
  66. Li, X.Y., Wang, L., Jiang, Q.Y., Li, N.: Differential evolution algorithm with multi-population cooperation and multi-strategy integration. Neurocomputing 421, 285–302 (2021)
    Article Google Scholar
  67. Xia, X.W., Gui, L., Zhang, Y.L., et al.: A fitness-based adaptive differential evolution algorithm. Information Sciences 549, 116–141 (2021)
    Article MathSciNet Google Scholar
  68. Cai, Z.H., Gao, S.C., Yang, X., et al.: Alternate search pattern-based brain storm optimization. Knowledge-Based Systems 238, 107896 (2022)
    Article Google Scholar
  69. Wang, Z.L., Chen, Z., Wang, Z.D., et al.: Adaptive memetic differential evolution with multi-niche sampling and neighborhood crossover strategies for global optimization. Information Sciences 583, 121–136 (2022)
    Article Google Scholar
  70. Guo, A.J., Wang, Y.R., Guo, L.J., et al.: An adaptive position-guided gravitational search algorithm for function optimization and image threshold segmentation. Engineering Applications of Artificial Intelligence 121, 106040 (2023)
    Article Google Scholar
  71. Olorunda, O., Engelbrecht, A.P.: Measuring exploration/exploitation in particle swarms using swarm diversity. IEEE Congress on Evolutionary Computation 2008, 1128–1134 (2008)
    Google Scholar
  72. Das, S., Suganthan, P.N.: Problem definitions and evaluation criteria for CEC 2011 competition on testing evolutionary algorithms on real world optimization problems. Kolkata, and Nanyang Technological University, Singapore, Technical Report, Jadavpur University (2011)
    Google Scholar
  73. Kennedy, J., Eberhart, R.: Particle swarm optimization. Proceedings of ICNN’95-International Conference on Neural Networks, 4: 1942-1948 (1995)
  74. Kumar, A., Wu, G.H., Ali, M., et al.: A test-suite of non-convex constrained optimization problems from the real-world and some baseline results. Swarm and Evolutionary Computation 56, 100693 (2020)
    Article Google Scholar

Download references