Surrogate model assisted cooperative coevolution for large scale optimization

被引:0
作者
Zhigang Ren
Bei Pang
Muyi Wang
Zuren Feng
Yongsheng Liang
An Chen
Yipeng Zhang
机构
[1] Xi’an Jiaotong University,Autocontrol Institute, School of Electronic and Information Engineering
[2] Xi’an Jiaotong University,State Key Laboratory for Manufacturing Systems Engineering, School of Electronic and Information Engineering
来源
Applied Intelligence | 2019年 / 49卷
关键词
Cooperative coevolution (CC); Large scale optimization problem (LSOP); Surrogate model; Radial basis function (RBF); Success-history based adaptive differential evolution (SHADE);
D O I
暂无
中图分类号
学科分类号
摘要
It has been shown that cooperative coevolution (CC) can effectively deal with large scale optimization problems (LSOPs) through a ‘divide-and-conquer’ strategy. However, its performance is severely restricted by the current context-vector-based sub-solution evaluation method, since this method needs to invoke the original high dimensional simulation model when evaluating each sub-solution, thus requiring many computation resources. To alleviate this issue, this study proposes a novel surrogate model assisted cooperative coevolution (SACC) framework. SACC constructs a surrogate model for each sub-problem and employs it to evaluate corresponding sub-solutions. The original simulation model is only adopted to reevaluate a small number of promising sub-solutions selected by surrogate models, and these really evaluated sub-solutions will in turn be employed to update surrogate models. By this means, the computation cost could be greatly reduced without significantly sacrificing evaluation quality. By taking the radial basis function (RBF) and the success-history based adaptive differential evolution (SHADE) as surrogate model and optimizer, respectively, this study further designs a concrete SACC algorithm named RBF-SHADE-SACC. RBF and SHADE have only been proved to be effective on small and medium scale problems. This study scales them up to LSOPs under the SACC framework, where they are tailored to a certain extent for adapting to the characteristics of LSOPs and SACC. Empirical studies on IEEE CEC 2010 benchmark functions demonstrate that SACC can significantly enhance the sub-solution evaluation efficiency, and even with much fewer computation resources, RBF-SHADE-SACC can find much better solutions than traditional CC algorithms.
引用
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页码:513 / 531
页数:18
相关论文
共 83 条
[21]  
Sendhoff B(2013)Global convergence of radial basis function trust region derivative-free algorithms Siam J Optim 21 761-781
[22]  
Jin Y(2017)Committee-based active learning for surrogate-assisted particle swarm optimization of expensive problems IEEE Trans Cybern 47 2664-2677
[23]  
Díaz-Manríquez A(2009)JADE: Adaptive Differential evolution with optional external archive IEEE Trans Evol Comput 13 945-958
[24]  
Toscano G(2017)Since CEC 2005 competition on real-parameter optimisation: A decade of research, progress and comparative analysis’s weakness Soft Comput 21 5573-5583
[25]  
Coello CAC(2017)Efficient resource allocation in cooperative co-evolution for large-scale global optimization IEEE Trans Evol Comput 21 493-505
[26]  
Sun C(2017)Cooperative co–evolution with sensitivity analysis-based budget assignment strategy for large-scale global optimization Appl Intell 47 888-913
[27]  
Jin Y(undefined)undefined undefined undefined undefined-undefined
[28]  
Zeng J(undefined)undefined undefined undefined undefined-undefined
[29]  
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[30]  
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