A Grouping Cooperative Differential Evolution Algorithm for Solving Partially Separable Complex Optimization Problems

Wang JH, Khishe M, Kaveh M, Hassan M. Binary chimp optimization algorithm (BChOA): a new binary meta-heuristic for solving optimization problems. Cogn Comput. 2021;13(5):1297–316.

Article  Google Scholar 

Bai DY, Diabat A, Wang XY, Wu C. Competitive bi-agent flowshop scheduling to minimise the weighted combination of makespans. Int J Prod Res. 2021;5:6750–71.

Google Scholar 

Li JY, Zhan ZH, Wang H. Data-driven evolutionary algorithm with perturbation-based ensemble surrogates. IEEE Trans Cybern. 2021;51(8):3925–37.

Article  Google Scholar 

Bai DY, Tang MQ, Zhang ZH, et al. Flow shop learning effect scheduling problem with release dates. Omega. 2018;78(7):21–38.

Article  Google Scholar 

Coello C, Brambila SG, Gamboa JF, et al. Evolutionary multiobjective optimization: open research areas and some challenges lying ahead. Complex Intell Syst. 2019;6(1):1–16.

Google Scholar 

Miikkulainen R, Forrest S. A biological perspective on evolutionary computation. Nat Mach Intell. 2021;3(1):9–15.

Article  Google Scholar 

Katoch S, Chauhan S, Kumar V. A review on genetic algorithm: past, present, and future. Multimed Tools Appl. 2021;80:8091–126.

Article  Google Scholar 

Das S, Suganthan PN. Recent advances in differential evolution - an updated survey. Swarm Evol Comput. 2016;27:1–30.

Article  Google Scholar 

Ali IM, Essam D, Kasmarik K. A novel design of differential evolution for solving discrete traveling salesman problems. Swarm Evol Comput. 2020;52:1–17.

Article  Google Scholar 

Das S, Suganthan PN. Differential evolution: a survey of the state-of-the-art. IEEE Trans Evol Comput. 2011;15(1):4–31.

Article  Google Scholar 

Valle Y, Venayagamoorthy GK, Mohagheghi S, et al. Particle swarm optimization: basic concepts, variants and applications in power systems. IEEE Trans Evol Comput. 2008;12(2):171–95.

Article  Google Scholar 

Zhang YD, Wang SH, Ji GL. A comprehensive survey on particle swarm optimization algorithm and its applications. Math Probl Eng. 2015;2015:1–38.

MathSciNet  MATH  Google Scholar 

Armananzas R, Inza I, Santana R, Saeys Y, et al. A review of estimation of distribution algorithms in bioinformatics. BioData Min. 2008;1(6):1–12.

Google Scholar 

Spettel P, Beyer HG, Hellwig M. A covariance matrix self-adaptation evolution strategy for optimization under linear constraints. IEEE Trans Evol Comput. 2019;23(3):514–24.

Article  Google Scholar 

Storn R, Price K. Differential evolution - a simple and efficient heuristic for global optimization over continuous spaces. J Global Optim. 1997;11(4):341–59.

Article  MathSciNet  MATH  Google Scholar 

Gao SC, Yu Y, Wang YR, Wang JH, Cheng JJ, Zhou MC. Chaotic local search-based differential evolution algorithms for optimization. IEEE Trans Syst Man Cybern. 2021;51(6):3954–67.

Article  Google Scholar 

Qin AK, Huang VL, Suganthan PN. Differential evolution algorithm with strategy adaptation for global numerical optimization. IEEE Trans Evol Comput. 2009;13(2):398–417.

Article  Google Scholar 

Tanabe R, Fukunaga A. Success-history based parameter adaptation for differential evolution. In: 2013 IEEE Congress on Evolutionary Computation (CEC). IEEE; 2013. p. 71–8.

Chapter  Google Scholar 

Tanabe R, Fukunaga A. Improving the search performance of SHADE using linear population size reduction. In: 2014 IEEE Congress on Evolutionary Computation (CEC). IEEE; 2014. p. 1658–65.

Chapter  Google Scholar 

Wang C, Liu YC, Zhang QJ, Guo HH, Liang XL, Chen Y, et al. Association rule mining based parameter adaptive strategy for differential evolution algorithms. Expert Syst Appl. 2019;123:54–69.

Article  Google Scholar 

Zhang J, Sanderson AC. JADE: Adaptive differential evolution with optional external archive. IEEE Trans Evol Comput. 2009;13(5):945–58.

Article  Google Scholar 

Brest J, Mauec MS, Bokovi B. Single objective real-parameter optimization: algorithm jSO. In: 2017 IEEE Congress on Evolutionary Computation (CEC). IEEE; 2017. p. 1311–8.

Chapter  Google Scholar 

Civicioglu P, Besdok E. Bezier search differential evolution algorithm for numerical function optimization: a comparative study with CRMLSP, MVO, WA. SHADE and LSHADE Expert Syst Appl. 2021;165:1–14.

Google Scholar 

Wang B, Li H, Li J, Wang Y. Composite differential evolution for constrained evolutionary optimization. IEEE Trans Syst Man Cybern. 2019;49(7):1482–95.

Article  Google Scholar 

Chen GD, Li Y, Zhang K, Xue XM, Wang J, Luo Q, et al. Efficient hierarchical surrogate-assisted differential evolution for high-dimensional expensive optimization. Inf Sci. 2021;542:228–46.

Article  MathSciNet  MATH  Google Scholar 

Liu XF, Zhan ZH, Lin Y, Chen WN, Gong YJ, Gu TL, et al. Historical and heuristic-based adaptive differential evolution. IEEE Trans Syst Man Cybern. 2019;49(12):2623–35.

Article  Google Scholar 

Wang S, Li Y, Yang H. Self-adaptive mutation differential evolution algorithm based on particle swarm optimization. Appl Soft Comput. 2019;81:1–22.

Article  Google Scholar 

Yildizdan G, Baykan ÖK. A novel modified bat algorithm hybridizing by differential evolution algorithm. Expert Syst Appl. 2020;141:1–19.

Article  Google Scholar 

Segredo E, Lalla-Ruiz E, Hart E, Voß S. On the performance of the hybridisation between migrating birds optimisation variants and differential evolution for large scale continuous problems. Expert Syst Appl. 2018;102:126–42.

Article  Google Scholar 

Zhao FQ, Qin S, Zhang Y, Ma WM, Zhang C. A two-stage differential biogeography-based optimization algorithm and its performance analysis. Expert Syst Appl. 2019;115:329–45.

Article  Google Scholar 

Zhao FQ, Xue FL, Zhang Y, Ma WM, Zhang C. A hybrid algorithm based on self-adaptive gravitational search algorithm and differential evolution. Expert Syst Appl. 2018;113:515–30.

Article  Google Scholar 

Cheng R, Omidvar MN, Gandomi AH, Sendhoff B, Menzel S, Yao X. Solving incremental optimization problems via cooperative coevolution. IEEE Trans Evol Comput. 2019;23(5):762–75.

Article  Google Scholar 

Omidvar MN, Li XD, Mei Y, Yao X. Cooperative co-evolution with differential grouping for large scale optimization. IEEE Trans Evol Comput. 2014;18(3):378–93.

Article  Google Scholar 

Yazdani D, Omidvar MN, Branke J, Nguyen TT, Yao X. Scaling up dynamic optimization problems: a divide-and-conquer approach. IEEE Trans Evol Comput. 2020;24(1):1–15.

Article  Google Scholar 

Potter MA, De Jong KA. A cooperative coevolutionary approach to function optimization. In: Proc. Int. Conf. Parallel Problem Solving Nat. Springer; 1994. p. 249–57.

Google Scholar 

Bergh F, Engelbrecht AP. A cooperative approach to particle swarm optimization. IEEE Trans Evol Comput. 2004;8(3):225–39.

Article  Google Scholar 

Yang Z, Tang K, Yao X. Differential evolution for highdimensional function optimization. In: 2017 IEEE Congress on Evolutionary Computation (CEC). IEEE; 2007.

Google Scholar 

Yang ZY, Tang K, Yao X. Large scale evolutionary optimization using cooperative coevolution. Inf Sci. 2008;178(15):2985–99.

Article  MathSciNet  MATH  Google Scholar 

Yu TL, Goldberg D, Lima C, Pelikan M. Dependency Structure Matrix, Genetic Algorithms, and Effective Recombination. Evol Comput. 2009;17(4):595–626.

Article  Google Scholar 

Yuan S, Omidvar MN, Kirley M, Li XD. Adaptive threshold parameter estimation with recursive differential grouping for problem decomposition. In: 2018 Proc. of the Genetic and Evolutionary Computation Conference (GECCO). ACM; 2018.

Google Scholar 

Ma XL, Li XD, Zhang QF, Tang K, et al. A survey on cooperative co-evolutionary algorithms. IEEE Trans Evol Comput. 2019;23(3):421–41.

Article  Google Scholar 

Omidvar MN, Yang M, Mei Y, et al. DG2: a faster and more accurate differential grouping for large-scale black-box optimization. IEEE Trans Evol Comput. 2017;21(6):929–42.

Article  Google Scholar 

Auer P, Fischer P, Informatik L. Finite-time analysis of the multiarmed bandit problem. Mach Learn. 2002;47:235–56.

Article  MATH  Google Scholar 

Awad NH, Ali MZ, Suganthan PN. Problem definitions and evaluation criteria for the CEC 2017 special session and competition on single objective real-parameter numerical optimization. Technical Report; 2018.

Google Scholar 

Li XD, Tang K, Omidvar MN, Yang Z, Qin K. Benchmark functions for the CEC’2013 special session and competition on large-scale global optimization. Technical Report; 2013.

Google Scholar 

Cui LZ, Li GH, Zhu ZX, Lin QZ, et al. Adaptive multiple-elites-guided composite differential evolution algorithm with a shift mechanism. Inf Sci. 2018;422(1):122–43.

Article  MathSciNet  Google Scholar 

Mohamed AW, Hadi AA, Jambi KM. Novel mutation strategy for enhancing SHADE and LSHADE algorithms for global numerical optimization. Swarm Evol Comput. 2019;50:1–14.

Article  Google Scholar 

Chen ZH, Cao J, Zhao FQ, Zhang JL. Complex multimodal differential evolution algorithm based on search preference knowledge. Journal of the University of Electronic Science and Technology of China. 2020;49(6):875–82.

Google Scholar 

Geng Z, Shi YH. Hybrid sampling evolution strategy for solving single objective bound constrained problems. In: 2018 IEEE Congress on Evolutionary Computation (CEC). IEEE; 2018.

Google Scholar 

Sallam K, Elsayed S, Chakrabortty R, Ryan M. Improved multi-operator differential evolution algorithm for solving unconstrained problems. In: 2020 IEEE Congress on Evolutionary Computation (CEC). IEEE; 2020.

Google Scholar 

Antonio B, Dania T. An exploration-only exploitation-only hybrid for large scale global optimization. In: 2021 IEEE Congress on Evolutionary Computation (CEC). IEEE; 2021.

Google Scholar 

Cheng R, Jin YC. A social learning particle swarm optimization algorithm for scalable optimization. Inf Sci. 2015;291:43–60.

Garcia S, Molina D, Lozano M, Herrera F. A study on the use of non-parametric test for analyzing the evolutionary algorithms’ behaviour: a case study on the CEC’2005 special session on real parameter optimization. J Heuristics. 2009;15(6):617–44.

Article  MATH  Google Scholar 

Zar JH. Biostatistical analysis. 4th ed. Prentice Hall; 1999.

Google Scholar 

留言 (0)

沒有登入
gif