会议专题

An optimization framework based on Kriging method with additive bridge function for variable-fidelity problem

  Variable-fidelity optimization(VFO),which utilizes the precise value of high-fidelity(HF)model and underlying trend of low-fidelity(LF)model,has solved many computationally expensive problems by simulation-based design.Though it has been developed rapidly in recent years,the simpler and cheaper ones are still needed.In this paper,a new optimization framework based on Kriging method with additive bridge function for variable-delity problem is proposed.The simple additive bridge function is taken to construct the primal HF model with Kriging method.With the local and global search strategies,the sample sets can be updated and the HF model be refreshed.It is worth mentioning that the fusion of them not only makes the method easy to implement,but also helps to find the optimal result much faster.In order to illustrate the ideas and features of the proposed optimization framework clearly,a mathematic example is presented in detail.Furthermore,another two problems are analyzed,including an engineering problem.The results show that the proposed optimization framework is feasible and effective,indicating it is suitable to solve complicated variable-fidelity problems.

VFO additive bridge function Kriging method search strategies

Peng Wang Yang Li Chengshan Li

School of Marine Science and Technology Northwestern Polytechnical University Xian,P.R.China

国际会议

The 14th International Symposium on Distributed Computing and Applications to Business,Engineering and Science(DCABES 2015)(第十四届分布式计算及其应用国际学术研讨会)

贵阳

英文

388-392

2015-08-18(万方平台首次上网日期,不代表论文的发表时间)