2,103
Views
14
CrossRef citations to date
0
Altmetric
Articles

A beetle antennae search algorithm based on Lévy flights and adaptive strategy

, &
Pages 35-47 | Received 23 Oct 2019, Accepted 20 Dec 2019, Published online: 07 Jan 2020

References

  • Abedinia, O., Amjady, N., & Ghasemi, A. (2016). A new metaheuristic algorithm based on shark smell optimization. Complexity, 21(5), 97–116. doi: 10.1002/cplx.21634
  • Ahandani, M. A., & Alavi-Rad, H. (2015). Opposition-based learning in shuffled frog leaping: An application for parameter identification. Information Sciences, 291, 19–42. doi: 10.1016/j.ins.2014.08.031
  • Ali, M. Z., Awad, N. H., Reynolds, R. G., & Suganthan, P. N. (2018). A balanced fuzzy cultural algorithm with a modified Levy flight search for real parameter optimization. Information Sciences, 447, 12–35. doi: 10.1016/j.ins.2018.03.008
  • Chen, J., Wang, C., & Wang, S. (2018). Research on evaluation method of spatial straightness for variable step beetle antennae search algorithm. Tool Engineering, 8, 136–138.
  • Dong, W., Kang, L., & Zhang, W. (2017). Opposition-based particle swarm optimization with adaptive mutation strategy. Soft Computing, 21(17), 5081–5090. doi: 10.1007/s00500-016-2102-5
  • Edwards, A. M., Phillips, R. A., Watkins, N. W., Freeman, M. P., Murphy, E. J., Afanasyev, V., … Viswanathan, G. M. (2007). Revisiting Levy flight search patterns of wandering albatrosses, bumblebees and deer. Nature, 449(7165), 1044–1048. doi: 10.1038/nature06199
  • El-Abd, M. (2012). Generalized opposition-based artificial bee colony algorithm. In 2012 IEEE congress on evolutionary computation, Brisbane, Australia (pp. 1–4).
  • Ewees, A. A., Elaziz, M. A., & Houssein, E. H. (2018). Improved grasshopper optimization algorithm using opposition-based learning. Expert Systems with Applications, 112, 156–172. doi: 10.1016/j.eswa.2018.06.023
  • Faris, H., Aljarah, I., Al-Betar, M. A., & Mirjalili, S. (2018). Grey wolf optimizer: A review of recent variants and applications. Neural Computing and Applications, 30(2), 413–435. doi: 10.1007/s00521-017-3272-5
  • Feng, X., Liu, A., Sun, W., Yue, X., & Liu, B. (2018). A dynamic generalized opposition-based learning fruit fly algorithm for function optimization. In 2018 IEEE congress on evolutionary computation (CEC), Rio de Janeiro, Brazil (pp. 1–7).
  • Heidari, A. A., & Pahlavani, P. (2017). An efficient modified grey wolf optimizer with Lévy flight for optimization tasks. Applied Soft Computing, 60, 115–134. doi: 10.1016/j.asoc.2017.06.044
  • Jensi, R., & Jiji, G. W. (2016). An enhanced particle swarm optimization with levy flight for global optimization. Applied Soft Computing, 43, 248–261. doi: 10.1016/j.asoc.2016.02.018
  • Jiang, X., & Li, S. (2017). Beetle antennae search without parameter tuning (BAS-WPT) for multi-objective optimization. arXiv:1711.02395v1 [cs.NE].
  • Jiang, X., & Li, S. (2018). BAS: Beetle antennae search algorithm for optimization problems. International Journal of Robotics and Control, 1(1), 1–5. doi: 10.5430/ijrc.v1n1p1
  • Li, X., Zhang, J., & Yin, M. (2014). Animal migration optimization: An optimization algorithm inspired by animal migration behavior. Neural Computing and Applications, 24(7-8), 1867–1877. doi: 10.1007/s00521-013-1433-8
  • Ling, Y., Zhou, Y., & Luo, Q. (2017). Lévy flight trajectory-based whale optimization algorithm for global optimization. IEEE Access, 5, 6168–6186. doi: 10.1109/ACCESS.2017.2695498
  • Marell, A., Ball, J. P., & Hofgaard, A. (2002). Foraging and movement paths of female reindeer: Insights from fractal analysis, correlated random walks, and Levy flights. Canadian Journal of Zoology, 80(5), 854–865. doi: 10.1139/z02-061
  • Meng, X., Liu, Y., Gao, X., & Zhang, H. (2014). A new bio-inspired algorithm: Chicken swarm optimization. In Fifth international conference on swarm intelligence, Hefei, China (pp. 86–94).
  • Mirjalili, S. (2015). Moth-flame optimization algorithm: A novel nature-inspired heuristic paradigm. Knowledge-Based Systems, 89, 228–249. doi: 10.1016/j.knosys.2015.07.006
  • Mirjalili, S., & Lewis, A. (2016). The whale optimization algorithm. Advances in Engineering Software, 95, 51–67. doi: 10.1016/j.advengsoft.2016.01.008
  • Park, S., & Lee, J. (2016). Stochastic opposition-based learning using a beta distribution in differential evolution. IEEE Transactions on Cybernetics, 46(10), 2184–2194. doi: 10.1109/TCYB.2015.2469722
  • Passino, K. M. (2002). Biomimicry of bacterial foraging for distributed optimization and control. IEEE Control Systems Magazine, 22(3), 52–67. doi: 10.1109/MCS.2002.1004010
  • Rahnamayan, S., Tizhoosh, H. R., & Salama, M. M. A. (2008). Opposition-based differential evolution. IEEE Transactions on Evolutionary Computation, 12(1), 64–79. doi: 10.1109/TEVC.2007.894200
  • Reynolds, A. M., & Frye, M. A. (2007). Free-flight odor tracking in drosophila is consistent with an optimal intermittent scale-free search. PLoS One, 2(4), 1–9. doi: 10.1371/journal.pone.0000354
  • Reynolds, A. M., Smith, A. D., Reynolds, D. R., Carreck, N. L., & Osborne, J. L. (2007). Honeybees perform optimal scale-free searching flights when attempting to locate a food source. Journal of Experimental Biology, 210(21), 3763–3770. doi: 10.1242/jeb.009563
  • Salcedo-Sanz, S., Pastor-Sanchez, A., Gallo-Marazuela, D., & Portilla-Figueras, A. (2013). A novel coral reefs optimization algorithm for multi-objective problems. In 14th international conference on intelligent data engineering and automated learning (IDEAL), Hefei, China (pp. 326–333).
  • Savsani, V., & Tawhid, M. A. (2017). Non-dominated sorting moth flame optimization (NS-MFO) for multi-objective problems. Engineering Applications of Artificial Intelligence, 63, 20–32. doi: 10.1016/j.engappai.2017.04.018
  • Song, D. (2018). Application of particle swarm optimization based on beetle antennae search strategy in wireless sensor network coverage. In International conference on network, communication, computer engineering (NCCE 2018), Chongqing, China (pp. 1051–1054).
  • Tan, Y., & Zhu, Y. (2010). Fireworks algorithm for optimization. In 1st international conference on swarm intelligence, Beijing, China (pp. 355–364).
  • Tizhoosh, H. R. (2005). Opposition-based learning: A new scheme for machine intelligence. In International conference on computational intelligence for modelling, control and automation/international conference on intelligent agents web technologies and international commerce, Vienna, Austria (pp. 695–701).
  • Vikas, & Nanda, S. J. (2016). Multi-objective moth flame optimization. In 2016 international conference on advances in computing, communications and informatics (ICACCI), Jaipur (pp. 2470–2476).
  • Viswanathan, G. M., Afanasyev, V., Buldyrev, S. V., Murphy, E. J., Prince, P. A., & Stanley, H. E. (1996). Levy flight search patterns of wandering albatrosses. Nature, 381(6581), 413–415. doi: 10.1038/381413a0
  • Wang, T., & Liu, Q. (2018). The assessment of storm surge disaster loss based on BAS-BP model. Marine Environmental Science, 37(3), 457–463.
  • Wang, H., Wu, Z., Rahnamayan, S., Liu, Y., & Ventresca, M. (2011). Enhancing particle swarm optimization using generalized opposition-based learning. Information Sciences, 181(20), 4699–4714. doi: 10.1016/j.ins.2011.03.016
  • Wu, Q., Ma, Z., Xu, G., Li, S., & Chen, D. (2019). A novel neural network classifier using beetle antennae search algorithm for pattern classification. IEEE Access, 7, 64686–64696. doi: 10.1109/ACCESS.2019.2917526
  • Yang, X. (2008). Nature-inspired metaheuristic algorithms. Frome: Luniver Press.
  • Yang, X., & Deb, S. (2009). Cuckoo search via Lévy flights. In World congress on nature and biologically inspired computing, Coimbatore, India (pp. 210–214).
  • Zeng, N., Qiu, H., Wang, Z., Liu, W., Zhang, H., & Li, Y. (2018). A new switching-delayed-PSO-based optimized SVM algorithm for diagnosis of Alzheimer's disease. Neurocomputing, 320, 195–202. doi: 10.1016/j.neucom.2018.09.001
  • Zeng, N., Wang, Z., Zhang, H., Kim, K., Li, Y., & Liu, X. (2019). An improved particle filter with a novel hybrid proposal distribution for quantitative analysis of gold immunochromatographic strips. IEEE Transactions on Nanotechnology, 18, 819–829. doi: 10.1109/TNANO.2019.2932271
  • Zeng, N., Zhang, H., Liu, W., Liang, J., & Alsaadi, F. E. (2017). A switching delayed PSO optimized extreme learning machine for short-term load forecasting. Neurocomputing, 240, 175–182. doi: 10.1016/j.neucom.2017.01.090
  • Zheng, Y. (2015). Water wave optimization: A new nature-inspired metaheuristic. Computers and Operations Research, 55, 1–11. doi: 10.1016/j.cor.2014.10.008
  • Zhou, Y., Hao, J., & Duval, B. (2017). Opposition-based memetic search for the maximum diversity problem. IEEE Transactions on Evolutionary Computation, 21(5), 731–745. doi: 10.1109/TEVC.2017.2674800
  • Zhu, Z., Zhang, Z., Man, W., Tong, X., Qiu, J., & Li, F. (2018). A new beetle antennae search algorithm for multi-objective energy management in microgrid. In 13th IEEE conference on industrial electronics and applications (ICIEA), Wuhan, China (pp. 1599–1603).