个人信息Personal Information
教授
博士生导师
硕士生导师
任职 : 现任中国工程热物理学会流体机械专委员会委员、中国航空学会学轻型燃气轮机分会委员、教育部重型燃气轮机教学资源库专家委员会委员、辽宁省能动类专业教指委副主任、大连市核事故应急指挥部专家组成员等职。
性别:女
毕业院校:大连理工大学
学位:硕士
所在单位:能源与动力学院
电子邮箱:dlwxf@dlut.edu.cn
Generalized Radial Basis Function-Based High-Dimensional Model Representation Handling Existing Random Data
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论文类型:期刊论文
发表时间:2017-01-01
发表刊物:JOURNAL OF MECHANICAL DESIGN
收录刊物:SCIE、EI、Scopus
卷号:139
期号:1
ISSN号:1050-0472
关键字:RBF-HDMR metamodeling; random points; GRBF-HDMR; error model; error allocation
摘要:The radial basis function-based high-dimensional model representation (RBF-HDMR) is very promising as a metamodel for high dimensional costly simulation-based functions. But in the modeling procedure, it requires well-structured regular points sampled on cut lines and planes. In practice, we usually have some existing random points that do not lie on cut lines or planes. For this case, RBF-HDMR cannot utilize the information of these random points because of its inner regular sampling process. To utilize the existing random points, this article presents two strategies to build a generalized RBF-HDMR (GRBF-HDMR) model. The GRBF-HDMR model using the error model (EM) strategy, called GRBF-HDMREM, constructs an error RBF model based on the prediction errors at all the sampled points to improve the RBF-HDMR predictions. While the GRBF-HDMR model using the error allocation (EA) strategy, called GRBF-HDMREA, employs the virtual regular points projected from the random points and the estimated virtual responses to update the component RBF predictions, which thereafter improves the overall RBF-HDMR predictions. Numerical experiments on eight functions and an engineering example reveal that the error allocation strategy is more effective in utilizing the random data to improve the RBF-HDMR predictions, since it creates the virtual points that follow the sampling rule in RBF-HDMR and estimates the virtual responses accurately for most cases.