347
Views
3
CrossRef citations to date
0
Altmetric
Research Article

An improved mode-pursing sampling method that balances global exploration and local exploitation based on kriging

&
Pages 363-381 | Received 07 Apr 2021, Accepted 06 Oct 2021, Published online: 04 Dec 2021

References

  • Akbari, H., and A. Kazerooni. 2020. “KASRA: A Kriging-Based Adaptive Space Reduction Algorithm for Global Optimization of Computationally Expensive Black-Box Constrained Problems.” Applied Soft Computing 90: 106154.
  • Cai, X., H. Qiu, and L. Gao. 2017. “A Multi-point Sampling Method Based on Kriging for Global Optimization.” Structural and Multidisciplinary Optimization 56: 71–88.
  • Dong, H., J. Li, P. Wang, B. Song, and X. Yu. 2021. “Surrogate-Guided Multi-objective Optimization (SGMOO) Using an Efficient Online Sampling Strategy.” Knowledge-Based Systems 220: 106919.
  • Dong, H., B. Song, Z. Dong, and P. Wang. 2018. “SCGOSR: Surrogate-Based Constrained Global Optimization Using Space Reduction.” Applied Soft Computing 65: 462–477.
  • Dong, H., B. Song, P. Wang, and Z. Dong. 2018. “Hybrid Surrogate-Based Optimization Using Space Reduction (HSOSR) for Expensive Black-Box Functions.” Applied Soft Computing 64: 641–655.
  • Dong, H., P. Wang, W. Chen, and B. Song. 2021. “SGOP: Surrogate-Assisted Global Optimization Using a Pareto-Based Sampling Strategy.” Applied Soft Computing 106: 107380.
  • Dong, H., P. Wang, X. Yu, and B. Song. 2021. “Surrogate-Assisted Teaching-Learning-Based Optimization for High-Dimensional and Computationally Expensive Problems.” Applied Soft Computing 99: 106934.
  • Duan, X., G. Wang, X. Kang, Q. Niu, G. Naterer, and Q. Peng. 2009. “Performance Study of Mode-Pursuing Sampling Method.” Engineering Optimization 41 (1): 1–21.
  • Feng, Z., Q. B. Zhang, and Q. F. Zhang. 2015. “A Multiobjective Optimization Based Framework to Balance the Global Exploration and Local Exploitation in Expensive Optimization.” Journal of Global Optimization 61 (4): 677–694.
  • García-García, J., R. García-Ródenas, and E. Codina. 2020. “A Surrogate-Based Cooperative Optimization Framework for Computationally Expensive Black-Box Problems.” Optimization and Engineering 21: 1053–1093.
  • He, Y., J. Sun, P. Song, and X. Wang. 2020. “Dual Kriging Assisted Efficient Global Optimization of Expensive Problems with Evaluation Failures.” Aerospace Science and Technology. 105: 106006. doi:10.1016/j.ast.2020.106006.
  • Hong, L., H. Li, K. Peng, and H. Xiao. 2020. “A Novel Kriging Based Active Learning Method for Structural Reliability Analysis.” Journal of Mechanical Science and Technology 34 (4): 1545–1556.
  • Jakobsson, S., M. Patriksso, J. Rudholm, and A. Wojciechowski. 2010. “A Method for Simulation Based Optimization Using Radial Basis Functions.” Engineering Optimization 11 (4): 501–532.
  • Jie, H., Y. Wu, and J. Ding. 2015. “An Adaptive Metamodel-Based Global Optimization Algorithm for Black-Box Type Problems.” Engineering Optimization 47 (11): 1459–1480.
  • Jones, Donald R. 2001. “A Taxonomy of Global Optimization Methods Based on Response Surfaces.” Journal of Global Optimization 21 (4): 345–383.
  • Jones, D., M. Schonlau, and W. Welch. 1998. “Efficient Global Optimization of Expensive Black-Box Functions.” Journal of Global Optimization 13 (4): 455–492.
  • Li, Y., J. Shi, H. Cen, J. Shen, and Y. Chao. 2021. “A Kriging Based Adaptive Global Optimization Method with Generalized Expected Improvement and Its Application in Numerical Simulation and Crop Evapotranspiration.” Agricultural Water Management 245: 106623.
  • Liu, H., Y. Ong, and J. Cai. 2018. “A Survey of Adaptive Sampling for Global Meta-modeling in Support of Simulation-Based Complex Engineering Design.” Structural and Multidisciplinary Optimization 57 (1): 393–416.
  • Maia, M., E. Parente, and A. de Melo. 2021. “Kriging-Based Optimization of Functionally Graded Structures.” Structural and Multidisciplinary Optimization 64 (4): 1887–1908.
  • Passos, A., and M. Luersen. 2020. “Kriging-Based Multiobjective Optimization Using Sequential Reduction of the Entropy of the Predicted Pareto Front.” Journal of the Brazilian Society of Mechanical Sciences and Engineering 42: 10.
  • Picheny, V., T. Wagner, and D. Ginsbourger. 2013. “A Benchmark of Kriging-Based Infill Criteria for Noisy Optimization.” Structural and Multidisciplinary Optimization 48 (3): 607–626.
  • Qian, J., J. Yi, J. Zhang, Y. Cheng, and J. Liu. 2020. “An Entropy Weight-Based Lower Confidence Bounding Optimization Approach for Engineering Product Design.” Applied Sciences-Basel 10 (10): 3554.
  • Rezaveisi, M., K. Sepehrnoori, and R. Johns. 2014. “Tie-Simplex-Based Phase-Behavior Modeling in an IMPEC Reservoir Simulator.” SPE Journal 19 (2): 327–339.
  • Ribaud, M., C. Blanchet-Scalliet, C. Helbert, and F. Gillot. 2020. “Robust Optimization: A Kriging-Based Multi-objective Optimization Approach.” Reliability Engineering and System Safety 200: 106913.
  • Sasena, M., P. Papalambros, and P. Goovaerts. 2002. “Exploration of Metamodeling Sampling Criteria for Constrained Global Optimization.” Engineering Optimization 34 (3): 263–278.
  • Shi, R., L. Liu, T. Long, Y. Wu, and G. Wang. 2020. “Multi-fidelity Modeling and Adaptive Co-Kriging-Based Optimization for All-Electric Geostationary Orbit Satellite Systems.” Journal of Mechanical Design 142 (2): 021404.
  • Sobester, A., S. Leary, and A. Keane. 2005. “On the Design of Optimization Strategies Based on Global Response Surface Approximation Models.” Journal of Global Optimization 33: 31–59.
  • Tao, T., G. Zhao, and S. Ren. 2020. “An Efficient Kriging-Based Constrained Optimization Algorithm by Global and Local Sampling in Feasible Region.” Journal of Mechanical Design 142: 5.
  • Wang, Y., P. Hao, Z. Guo, D. Liu, and Q. Gao. 2020. “Reliability-Based Design Optimization of Complex Problems with Multiple Design Points via Narrowed Search Region.” Journal of Mechanical Design 142 (6): 061702.
  • Wang, L., S. Shan, and G. Wang. 2004. “Mode-Pursuing Sampling Method for Global Optimization on Expensive Black-Box Functions.” Engineering Optimization 36 (4): 419–438.
  • Wu, Y., T. Long, R. Shi, and G. Wang. 2021. “Mode-Pursuing Sampling Method Using Discriminative Coordinate Perturbation for High-Dimensional Expensive Black-Box Optimization.” Journal of Mechanical Design 143: 041703.
  • Xia, B., R. Liu, Z. He, and C. Koh. 2021. “A Single- and Multi-objective Optimization Algorithm for Electromagnetic Devices Assisted by Adaptive Kriging Based on Parallel Infilling Strategy.” Journal of Electrical Engineering and Technology 16 (1): 301–308.
  • Xing, J., Y. Luo, and Z. Gao. 2020. “A Global Optimization Strategy Based on Kriging Surrogate Model and Parallel Computing.” Structural and Multidisciplinary Optimization 62 (1): 405–417.
  • Zhan, D., J. Qian, and Y. Cheng. 2017a. “Balancing Global and Local Search in Parallel Efficient Global Optimization Algorithms.” Journal of Global Optimization 67: 873–892.
  • Zhan, D., J. Qian, and Y. Cheng. 2017b. “Pseudo Expected Improvement Criterion for Parallel EGO Algorithm.” Journal of Global Optimization 68: 641–662.
  • Zhang, Q., and H. Li. 2007. “MOEA/D: A Multiobjective Evolutionary Algorithm Based on Decomposition.” IEEE Transactions on Evolutionary Computation 11: 712–731.
  • Zhang, X., L. Wang, and J. Sorensen. 2020. “AKOIS: An Adaptive Kriging Oriented Importance Sampling Method for Structural System Reliability Analysis.” Structural Safety 82: 101876.
  • Zhou, Y., R. Haftka, and G. Cheng. 2016. “Balancing Diversity and Performance in Global Optimization.” Structural and Multidisciplinary Optimization 54 (4): 1093–1105.

Reprints and Corporate Permissions

Please note: Selecting permissions does not provide access to the full text of the article, please see our help page How do I view content?

To request a reprint or corporate permissions for this article, please click on the relevant link below:

Academic Permissions

Please note: Selecting permissions does not provide access to the full text of the article, please see our help page How do I view content?

Obtain permissions instantly via Rightslink by clicking on the button below:

If you are unable to obtain permissions via Rightslink, please complete and submit this Permissions form. For more information, please visit our Permissions help page.