Table of Contents Author Guidelines Submit a Manuscript
Computational Intelligence and Neuroscience
Volume 2019, Article ID 1589303, 24 pages
https://doi.org/10.1155/2019/1589303
Research Article

An Enhanced Lightning Attachment Procedure Optimization with Quasi-Opposition-Based Learning and Dimensional Search Strategies

School of Civil Engineering, Guangzhou University, Guangzhou, China

Correspondence should be addressed to Weili Luo; nc.ude.uhzg@oullw

Received 15 February 2019; Revised 15 June 2019; Accepted 17 July 2019; Published 1 August 2019

Academic Editor: Bruce J. MacLennan

Copyright © 2019 Tongyi Zheng and Weili Luo. This is an open access article distributed under the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.

Linked References

  1. D. Gong, J. Sun, and Z. Miao, “A set-based genetic algorithm for interval many-objective optimization problems,” IEEE Transactions on Evolutionary Computation, vol. 22, no. 1, pp. 47–60, 2018. View at Publisher · View at Google Scholar · View at Scopus
  2. J. R. Koza, M. A. Keane, M. J. Streeter, W. Mydlowec, J. Yu, and G. Lanza, Genetic Programming IV: Routine Human-Competitive Machine Intelligence, vol. 5, Kluwer Academic Publishers, Hingham, MA, USA, 2006.
  3. P. P. Repoussis, C. D. Tarantilis, O. Bräysy, and G. Ioannou, “A hybrid evolution strategy for the open vehicle routing problem,” Computers & Operations Research, vol. 37, no. 3, pp. 443–455, 2010. View at Publisher · View at Google Scholar · View at Scopus
  4. S. Das and P. N. Suganthan, “Differential evolution: a survey of the state-of-the-art,” IEEE Transactions on Evolutionary Computation, vol. 15, no. 1, pp. 4–31, 2011. View at Google Scholar
  5. D. Simon, “Biogeography-based optimization,” IEEE Transactions on Evolutionary Computation, vol. 12, no. 6, pp. 702–713, 2008. View at Publisher · View at Google Scholar · View at Scopus
  6. C. F. Wang and K. Liu, “A novel particle swarm optimization algorithm for global optimization,” Computational Intelligence and Neuroscience, vol. 2016, Article ID 9482073, 9 pages, 2016. View at Publisher · View at Google Scholar · View at Scopus
  7. D. Marco, D. O. M. A. Montes, O. Sabrina, and S. Thomas, “Ant colony optimization,” IEEE Computational Intelligence Magazine, vol. 1, no. 4, pp. 28–39, 2007. View at Google Scholar
  8. D. Karaboga and B. Basturk, “An artificial bee colony (ABC) algorithm for numeric function optimization,” in IEEE Swarm Intelligence Symposium, pp. 181–184, Indianapolis, IN, USA, May 2006.
  9. A. Ritthipakdee, A. Thammano, N. Premasathian, and D. Jitkongchuen, “Firefly mating algorithm for continuous optimization problems,” Computational Intelligence and Neuroscience, vol. 2017, Article ID 8034573, 10 pages, 2017. View at Publisher · View at Google Scholar · View at Scopus
  10. H. Liu, F. Yi, and H. Yang, “Adaptive grouping cloud model shuffled frog leaping algorithm for solving continuous optimization problems,” Computational Intelligence and Neuroscience, vol. 2016, Article ID 5675349, 8 pages, 2016. View at Publisher · View at Google Scholar · View at Scopus
  11. X. Lu and Y. Zhou, “A novel global convergence algorithm: bee collecting pollen algorithm,” in Proceedings of the International Conference on Intelligent Computing, pp. 518–525, Springer, Shanghai, China, September 2008.
  12. X. S. Yang and S. Deb, “Cuckoo search via Lévy flights,” in Proceedings of the 2009 World Congress on Nature and Biologically Inspired Computing (NaBIC), pp. 210–214, IEEE, Coimbatore, India, December 2009.
  13. Y. Shiqin, J. Jianjun, and Y. Guangxing, “A dolphin partner optimization,” in Proceedings of the 2009 WRI Global Congress on Intelligent Systems, vol. 1, pp. 124–128, IEEE, Xiamen, China, May 2009.
  14. X. S. Yang, “A new metaheuristic bat-inspired algorithm,” in Nature Inspired Cooperative Strategies for Optimization (NICSO 2010), J. R. González, D. A. Pelta, C. Cruz, G. Terrazas, and N. Krasnogor, Eds., pp. 65–74, Springer, Berlin, Germany, 2010. View at Google Scholar
  15. X. S. Yang, “Firefly algorithm, stochastic test functions and design optimization,” 2010, https://arxiv.org/abs/1003.1409. View at Google Scholar
  16. R. Oftadeh, M. J. Mahjoob, and M. Shariatpanahi, “A novel meta-heuristic optimization algorithm inspired by group hunting of animals: hunting search,” Computers & Mathematics with Applications, vol. 60, no. 7, pp. 2087–2098, 2010. View at Publisher · View at Google Scholar · View at Scopus
  17. T. Zheng, J. Liu, W. Luo, and Z. Lu, “Structural damage identification using cloud model based fruit fly optimization algorithm,” Structural Engineering and Mechanics, vol. 67, no. 3, pp. 245–254, 2018. View at Google Scholar
  18. S. Mirjalili, “Dragonfly algorithm: a new meta-heuristic optimization technique for solving single-objective, discrete, and multi-objective problems,” Neural Computing and Applications, vol. 27, no. 4, pp. 1053–1073, 2016. View at Publisher · View at Google Scholar · View at Scopus
  19. S. A. Uymaz, G. Tezel, and E. Yel, “Artificial algae algorithm (AAA) for nonlinear global optimization,” Applied Soft Computing, vol. 31, pp. 153–171, 2015. View at Publisher · View at Google Scholar · View at Scopus
  20. S. Mirjalili, “The ant lion optimizer,” Advances in Engineering Software, vol. 83, pp. 80–98, 2015. View at Publisher · View at Google Scholar · View at Scopus
  21. W. Yong, W. Tao, Z. Cheng-Zhi, and H. Hua-Juan, “A new stochastic optimization approach—dolphin swarm optimization algorithm,” International Journal of Computational Intelligence and Applications, vol. 15, no. 2, Article ID 1650011, 2016. View at Publisher · View at Google Scholar · View at Scopus
  22. S. Mirjalili and A. Lewis, “The whale optimization algorithm,” Advances in Engineering Software, vol. 95, pp. 51–67, 2016. View at Publisher · View at Google Scholar · View at Scopus
  23. A. Askarzadeh, “A novel metaheuristic method for solving constrained engineering optimization problems: crow search algorithm,” Computers & Structures, vol. 169, pp. 1–12, 2016. View at Publisher · View at Google Scholar · View at Scopus
  24. S. Saremi, S. Mirjalili, and A. Lewis, “Grasshopper optimisation algorithm: theory and application,” Advances in Engineering Software, vol. 105, pp. 30–47, 2017. View at Publisher · View at Google Scholar · View at Scopus
  25. E. Jahani and M. Chizari, “Tackling global optimization problems with a novel algorithm—Mouth Brooding Fish algorithm,” Applied Soft Computing, vol. 62, pp. 987–1002, 2018. View at Publisher · View at Google Scholar · View at Scopus
  26. G. Dhiman and V. Kumar, “Spotted hyena optimizer: a novel bio-inspired based metaheuristic technique for engineering applications,” Advances in Engineering Software, vol. 114, pp. 48–70, 2017. View at Publisher · View at Google Scholar · View at Scopus
  27. X. Qi, Y. Zhu, and H. Zhang, “A new meta-heuristic butterfly-inspired algorithm,” Journal of Computational Science, vol. 23, pp. 226–239, 2017. View at Publisher · View at Google Scholar · View at Scopus
  28. T. Zheng and W. Luo, “An improved squirrel search algorithm for optimization,” Complexity, vol. 2019, Article ID 6291968, 31 pages, 2019. View at Publisher · View at Google Scholar
  29. B. Almonacid and R. Soto, “Andean Condor Algorithm for cell formation problems,” Natural Computing, vol. 18, no. 2, pp. 351–381, 2019. View at Publisher · View at Google Scholar
  30. N. A. Kallioras, N. D. Lagaros, and D. N. Avtzis, “Pity beetle algorithm—a new metaheuristic inspired by the behavior of bark beetles,” Advances in Engineering Software, vol. 121, pp. 147–166, 2018. View at Publisher · View at Google Scholar · View at Scopus
  31. S. Bandyopadhyay, S. Saha, U. Maulik, and K. Deb, “A simulated annealing-based multiobjective optimization algorithm: AMOSA,” IEEE Transactions on Evolutionary Computation, vol. 12, no. 3, pp. 269–283, 2008. View at Publisher · View at Google Scholar · View at Scopus
  32. E. Rashedi, H. Nezamabadi-Pour, and S. Saryazdi, “GSA: a gravitational search algorithm,” Information Sciences, vol. 179, no. 13, pp. 2232–2248, 2009. View at Publisher · View at Google Scholar · View at Scopus
  33. O. K. Erol and I. Eksin, “A new optimization method: big Bang–Big Crunch,” Advances in Engineering Software, vol. 37, no. 2, pp. 106–111, 2006. View at Publisher · View at Google Scholar · View at Scopus
  34. A. Kaveh and S. Talatahari, “A novel heuristic optimization method: charged system search,” Acta Mechanica, vol. 213, no. 3-4, pp. 267–289, 2010. View at Publisher · View at Google Scholar · View at Scopus
  35. A. Hatamlou, “Black hole: a new heuristic optimization approach for data clustering,” Information Sciences, vol. 222, pp. 175–184, 2013. View at Publisher · View at Google Scholar · View at Scopus
  36. R. A. Formato, “Central force optimization: a new deterministic gradient-like optimization metaheuristic,” Opsearch, vol. 46, no. 1, pp. 25–51, 2009. View at Publisher · View at Google Scholar · View at Scopus
  37. H. Du, X. Wu, and J. Zhuang, “Small-world optimization algorithm for function optimization,” in Proceedings of the International Conference on Natural Computation, pp. 264–273, Springer, Xi’an, China, September 2006.
  38. B. Alatas, “ACROA: artificial chemical reaction optimization algorithm for global optimization,” Expert Systems with Applications, vol. 38, no. 10, pp. 13170–13180, 2011. View at Publisher · View at Google Scholar · View at Scopus
  39. A. Kaveh and M. Khayatazad, “A new meta-heuristic method: ray optimization,” Computers & Structures, vol. 112-113, pp. 283–294, 2012. View at Publisher · View at Google Scholar · View at Scopus
  40. H. Shah-Hosseini, “Principal components analysis by the galaxy-based search algorithm: a novel metaheuristic for continuous optimisation,” International Journal of Computational Science and Engineering, vol. 6, no. 1-2, pp. 132–140, 2011. View at Publisher · View at Google Scholar
  41. F. F. Moghaddam, R. F. Moghaddam, and M. Cheriet, “Curved space optimization: a random search based on general relativity theory,” 2012, http://arxiv.org/abs/1208.2214. View at Google Scholar
  42. S. Mirjalili, S. M. Mirjalili, and A. Hatamlou, “Multi-verse optimizer: a nature-inspired algorithm for global optimization,” Neural Computing and Applications, vol. 27, no. 2, pp. 495–513, 2016. View at Publisher · View at Google Scholar · View at Scopus
  43. Z. Zhang, J. Pan, W. Luo, K. R. Ramakrishnan, and H. K. Singh, “Vibration-based delamination detection in curved composite plates,” Composites Part A: Applied Science and Manufacturing, vol. 119, pp. 261–274, 2019. View at Publisher · View at Google Scholar · View at Scopus
  44. A. F. Nematollahi, A. Rahiminejad, and B. Vahidi, “A novel physical based meta-heuristic optimization method known as Lightning Attachment Procedure Optimization,” Applied Soft Computing, vol. 59, pp. 596–621, 2017. View at Publisher · View at Google Scholar · View at Scopus
  45. Y. Li, X. Zhao, Y. Wang, and M. Ren, “Multi-objective optimization of rolling schedules for tandem hot rolling based on opposition learning multi-objective genetic algorithm,” in Proceedings of the 2013 25th Chinese Control and Decision Conference (CCDC), pp. 846–849, IEEE, Guiyang, China, May 2013.
  46. K. Karthikeyan, S. Kannan, S. Baskar, and C. Thangaraj, “Application of opposition-based differential evolution algorithm to generation expansion planning problem,” Journal of Electrical Engineering and Technology, vol. 8, no. 4, pp. 686–693, 2013. View at Publisher · View at Google Scholar · View at Scopus
  47. M. Y. Cheng and D. H. Tran, “Integrating chaotic initialized opposition multiple-objective differential evolution and stochastic simulation to optimize ready-mixed concrete truck dispatch schedule,” Journal of Management in Engineering, vol. 32, no. 1, Article ID 04015034, 2016. View at Publisher · View at Google Scholar · View at Scopus
  48. L. Yang, S. Xijia, and C. Deng, “Opposition-based learning particle swarm optimization of running gait for humanoid robot,” International Journal on Smart Sensing and Intelligent Systems, vol. 8, no. 2, 2015. View at Publisher · View at Google Scholar · View at Scopus
  49. Z. Wu, Z. Ni, C. Zhang, and L. Gu, “A novel PSO for multi-stage portfolio planning,” in Proceedings of the 2009 International Conference on Artificial Intelligence and Computational Intelligence, vol. 4, pp. 71–77, IEEE, Shanghai, China, November 2009.
  50. Q. Xu, L. Guo, N. Wang, and Y. He, “COOBBO: a novel opposition-based soft computing algorithm for TSP problems,” Algorithms, vol. 7, no. 4, pp. 663–684, 2014. View at Publisher · View at Google Scholar · View at Scopus
  51. S. K. Goudos, M. Deruyck, D. Plets, L. Martens, and W. Joseph, “Application of opposition-based learning concepts in reducing the power consumption in wireless access networks,” in Proceedings of the 2016 23rd International Conference on Telecommunications (ICT), pp. 1–5, IEEE, Thessaloniki, Greece, May 2016.
  52. A. Banerjee, V. Mukherjee, and S. P. Ghoshal, “An opposition-based harmony search algorithm for engineering optimization problems,” Ain Shams Engineering Journal, vol. 5, no. 1, pp. 85–101, 2014. View at Publisher · View at Google Scholar · View at Scopus
  53. X. Z. Gao, J. Wang, J. M. Tanskanen, R. Bie, and P. Guo, “BP neural networks with harmony search method-based training for epileptic EEG signal classification,” in Proceedings of the 2012 Eighth International Conference on Computational Intelligence and Security, pp. 252–257, IEEE, Guangzhou, China, November 2012.
  54. S. Paul and P. K. Roy, “Optimal design of power system stabilizer using oppositional gravitational search algorithm,” in Proceedings of the 2014 1st International Conference on Non Conventional Energy (ICONCE 2014), pp. 282–287, IEEE, West Bengal, India, January 2014.
  55. S. M. A. Bulbul and P. K. Roy, “Quasi-oppositional gravitational search algorithm applied to complex economic load dispatch problem,” in Proceedings of the 2014 1st International Conference on Non Conventional Energy (ICONCE 2014), pp. 308–313, IEEE, West Bengal, India, January 2014.
  56. M. Basu, “Quasi-oppositional group search optimization for hydrothermal power system,” International Journal of Electrical Power & Energy Systems, vol. 81, pp. 324–335, 2016. View at Publisher · View at Google Scholar · View at Scopus
  57. M. Basu, “Combined heat and power economic dispatch using opposition-based group search optimization,” International Journal of Electrical Power & Energy Systems, vol. 73, pp. 819–829, 2015. View at Publisher · View at Google Scholar · View at Scopus
  58. C. Yang, J. K. Zhang, and L. X. Guo, “Investigation on the inversion of the atmospheric duct using the artificial bee colony algorithm based on opposition-based learning,” International Journal of Antennas and Propagation, vol. 2016, Article ID 2749035, 10 pages, 2016. View at Publisher · View at Google Scholar · View at Scopus
  59. R. Rao, “Jaya: a simple and new optimization algorithm for solving constrained and unconstrained optimization problems,” International Journal of Industrial Engineering Computations, vol. 7, no. 1, pp. 19–34, 2016. View at Publisher · View at Google Scholar · View at Scopus
  60. Z. Yin, J. Liu, W. Luo, and Z. Lu, “An improved Big Bang-Big Crunch algorithm for structural damage detection,” Structural Engineering and Mechanics, vol. 68, no. 6, pp. 735–745, 2018. View at Google Scholar
  61. S. Rahnamayan, H. R. Tizhoosh, and M. M. Salama, “Opposition-based differential evolution algorithms,” in Proceedings of the 2006 IEEE International Conference on Evolutionary Computation, pp. 2010–2017, IEEE, Vancouver, BC, Canada, July 2006.
  62. J. J. Liang, B. Y. Qu, and P. N. Suganthan, Problem Definitions and Evaluation Criteria for the CEC 2014 Special Session and Competition on Single Objective Real-Parameter Numerical Optimization, Computational Intelligence Laboratory, Zhengzhou University; Nanyang Technological University, Zhengzhou, China, Singapore, 2013, Technical Report.
  63. J. Derrac, S. García, D. Molina, and F. Herrera, “A practical tutorial on the use of nonparametric statistical tests as a methodology for comparing evolutionary and swarm intelligence algorithms,” Swarm and Evolutionary Computation, vol. 1, no. 1, pp. 3–18, 2011. View at Publisher · View at Google Scholar · View at Scopus
  64. E. Nabil, “A modified flower pollination algorithm for global optimization,” Expert Systems with Applications, vol. 57, pp. 192–203, 2016. View at Publisher · View at Google Scholar · View at Scopus