References
- Alam, M. S., Islam, M. M., Yao, X., & Murase, K. (2012). Diversity guided evolutionary programming: A novel approach for continuous optimization. Applied Soft Computing, 12(6), 1693–1707.
- Bremermann, H.-J. (1958). The evolution of intelligence: The nervous system as a model of its environment (Techreport 1, Dept. of Mathematics). Seattle: Univ. of Washington. Contract No. 477 (17).
- CEC 2015 Official. (2015). Competition on real-parameter single objective computationally expensive optimization (expensive result comparison slide) (Technical report, CEC 2015), Sendai, Japan.
- Chen, Q., Zhong, Y., & Zhang, X. (2010). A pseudo genetic algorithm. Neural Computing and Applications, 19(1), 77–83.
- Demim, F., Nemra, A., Abdelkadri, H., Bazoula, A., Louadj, K., & Hamerlain, M. (2018a). SLAM problem for autonomous underwater vehicle using SVSF filter. In 2018 25th International Conference on Systems, Signals and Image Processing (IWSSIP),Maribor, Slovenia. IEEE.
- Demim, F., Nemra, A., Abdelkadri, H., Louadj, K., Hamerlain, M., & Bazoula, A. (2018b). NH∞-SLAM algorithm for autonomous underwater vehicle. In Advances in computing systems and applications (pp. 193–203). New York City: Springer International Publishing.
- Fraser, A. (1957). Simulation of genetic systems by automatic digital computers. Australian Journal of Biological Science, 10(2), 492–499.
- Goldberg, D. E. (1989). Genetic algorithms in search, optimization and machine learning (Vol. ume 1). Boston, MA: Addison-Wesley Longman Publishing Co., Inc.
- Gozali, A. A., & Fujimura, S. (2017a). Localization strategy for island model genetic algorithm to preserve population diversity. In International Conference on Computer and Information Science,Wuhan, China.
- Gozali, A. A., & Fujimura, S. (2017b). Performance analysis of localization strategy for island model genetic algorithm. In 18th IEEE/ACIS International Conference on Software Engineering, Artificial Intelligence, Networking and Parallel/Distributed Computing (SNPD 2017),Kanazawa, Japan.
- Gozali, A. A., Tirtawangsa, J., & Basuki, T. A. (2014). Asynchronous Island model genetic algorithm for University course timetabling. In Proceedings of the 10th International Conference on the Practice and Theory of Automated Timetabling (pp. 179–187). York: PATAT.
- Hong, W.-C., Li, M.-W., Geng, J., & Zhang, Y. (2019). Novel chaotic bat algorithm for forecasting complex motion of floating platforms. Applied Mathematical Modelling, 72, 425–443.
- Kennedy, J. (2010). Particle swarm optimization, chapter reference work entry (pp. 760–766). Boston, MA: Springer US.
- Kurdi, M. (2016). An effective new island model genetic algorithm for job shop scheduling problem. Computers & Operations Research, 67, 132–142.
- Li, J., Wang, H., Liu, J., & Jiao, L. (2007). Solving sat problem with a multiagent evolutionary algorithm. In 2007 IEEE congress on evolutionary computation (pp. 1416–1422), Elsevier, Amsterdam, Netherlands.
- Mousbah Zeed Mohammed, S., Tajudin Khader, A., & Azmi Al-Betar, M. (2016). 3-SAT using Island-based genetic algorithm. IEEJ Transactions on Electronics, Information and Systems, 136(12), 1694–1698.
- Park, T., & Ryu, K. R. (2010). A dual-population genetic algorithm for adaptive diversity control. IEEE Transactions on Evolutionary Computation, 14(6), 865–884.
- Rogers, A., & Prugel-Bennett, A. (1999). Genetic drift in genetic algorithm selection schemes. IEEE Transactions on Evolutionary Computation, 3(4), 298–303.
- Tsutsui, S., Fujimoto, Y., & Ghosh, A. (1997). Forking genetic algorithms: Gas with search space division schemes. Evolutionary Computation, 5(1), 61–80.
- Umbarkar, A., Joshi, M., & Hong, W.-C. (2014). Multithreaded parallel dual population genetic algorithm (mpdpga) for unconstrained function optimizations on multi-core system. Applied Mathematics and Computation, 243(SupplementC), 936–949.
- Umbarkar, A. J., & Joshi, M. S. (2013). Article: Dual population genetic algorithm (ga) versus openmp ga for multimodal function optimization. International Journal of Computer Applications, 64(19), 29–36.
- Yu, E., & Suganthan, P. (2010). Ensemble of niching algorithms. Information Sciences, 180(15), 2815–2833.
- Zhang, Z., Hong, & Chiang, W. (2019). Electric load forecasting by complete ensemble empirical mode decomposition adaptive noise and support vector regression with quantum-based dragonfly algorithm. Nonlinear Dynamics, 98(2), 1107–1136.