A Self-Adaptive Response Strategy for Dynamic Multiobjective Evolutionary Optimization Based on Objective Space Decomposition

Liu R, Li J, Jin Y, Jiao L (2021)
Evolutionary Computation 29(4): 491-519.

Zeitschriftenaufsatz | Veröffentlicht | Englisch
 
Download
Es wurden keine Dateien hochgeladen. Nur Publikationsnachweis!
Autor*in
Liu, Ruochen; Li, Jianxia; Jin, YaochuUniBi ; Jiao, Licheng
Abstract / Bemerkung
Dynamic multiobjective optimization deals with simultaneous optimization of multiple conflicting objectives that change over time. Several response strategies for dynamic optimization have been proposed, which do not work well for all types of environmental changes. In this article, we propose a new dynamic multiobjective evolutionary algorithm based on objective space decomposition, in which the maxi-min fitness function is adopted for selection and a self-adaptive response strategy integrating a number of different response strategies is designed to handle unknown environmental changes. The self-adaptive response strategy can adaptively select one of the strategies according to their contributions to the tracking performance in the previous environments. Experimental results indicate that the proposed algorithm is competitive and promising for solving different DMOPs in the presence of unknown environmental changes. Meanwhile, the proposed algorithm is applied to solve the parameter tuning problem of a proportional integral derivative (PID) controller of a dynamic system, obtaining better control effect.
Erscheinungsjahr
2021
Zeitschriftentitel
Evolutionary Computation
Band
29
Ausgabe
4
Seite(n)
491-519
eISSN
1530-9304
Page URI
https://pub.uni-bielefeld.de/record/2978379

Zitieren

Liu R, Li J, Jin Y, Jiao L. A Self-Adaptive Response Strategy for Dynamic Multiobjective Evolutionary Optimization Based on Objective Space Decomposition. Evolutionary Computation. 2021;29(4):491-519.
Liu, R., Li, J., Jin, Y., & Jiao, L. (2021). A Self-Adaptive Response Strategy for Dynamic Multiobjective Evolutionary Optimization Based on Objective Space Decomposition. Evolutionary Computation, 29(4), 491-519. https://doi.org/10.1162/evco_a_00289
Liu, Ruochen, Li, Jianxia, Jin, Yaochu, and Jiao, Licheng. 2021. “A Self-Adaptive Response Strategy for Dynamic Multiobjective Evolutionary Optimization Based on Objective Space Decomposition”. Evolutionary Computation 29 (4): 491-519.
Liu, R., Li, J., Jin, Y., and Jiao, L. (2021). A Self-Adaptive Response Strategy for Dynamic Multiobjective Evolutionary Optimization Based on Objective Space Decomposition. Evolutionary Computation 29, 491-519.
Liu, R., et al., 2021. A Self-Adaptive Response Strategy for Dynamic Multiobjective Evolutionary Optimization Based on Objective Space Decomposition. Evolutionary Computation, 29(4), p 491-519.
R. Liu, et al., “A Self-Adaptive Response Strategy for Dynamic Multiobjective Evolutionary Optimization Based on Objective Space Decomposition”, Evolutionary Computation, vol. 29, 2021, pp. 491-519.
Liu, R., Li, J., Jin, Y., Jiao, L.: A Self-Adaptive Response Strategy for Dynamic Multiobjective Evolutionary Optimization Based on Objective Space Decomposition. Evolutionary Computation. 29, 491-519 (2021).
Liu, Ruochen, Li, Jianxia, Jin, Yaochu, and Jiao, Licheng. “A Self-Adaptive Response Strategy for Dynamic Multiobjective Evolutionary Optimization Based on Objective Space Decomposition”. Evolutionary Computation 29.4 (2021): 491-519.
Export

Markieren/ Markierung löschen
Markierte Publikationen

Open Data PUB

Suchen in

Google Scholar