A sequential surrogate-based multiobjective optimization method: effect of initial data set

被引:0
|
作者
Maria Guadalupe Villarreal-Marroquin
Jose Daniel Mosquera-Artamonov
Celso E. Cruz
Jose M. Castro
机构
[1] Modeling Optimization and Computing Technology SAS de CV,Posgrado en Ingenieria de Sistemas
[2] Universidad Autonoma de Nuevo Leon,Gerencia de Manufactura y Procesos Especiales
[3] Centro de Ingenieria y Desarrollo Industrial,Integrated Systems Engineering Department
[4] The Ohio State University,undefined
来源
Wireless Networks | 2020年 / 26卷
关键词
Sequential design optimization; Surrogate models; Multiobjective optimization; Design of experiments; Manufacturing;
D O I
暂无
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学科分类号
摘要
Process optimization based on high-fidelity computer simulations or real experimentation is commonly expensive. Therefore, surrogate models are frequently used to reduce the computational or experimental cost. However, surrogate models need to achieve a maximum accuracy with a limited number of sampled points. Sequential sampling is a procedure in which sequentially surrogates are fitted and each surrogate defines the points that need to be sampled and used to fit the next model. For optimization purposes, points are sampled on regions of high potential for the optimal solutions. In this work, we first compared the effect of using different initial sets of points (experimental designs) in a sequential surrogate-based multiobjective optimization method. The optimization method is tested on five benchmark problems and the performance is quantified based on the total number of function evaluations and the quality of the final Pareto Front. Then an industrial applications on titanium welding is presented to show the use of the method. The case study is based on real experimental data.
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页码:5727 / 5750
页数:23
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