Assessing the value of another cycle in Gaussian process surrogate-based optimization

被引:0
|
作者
Nestor V. Queipo
Alexander Verde
Salvador Pintos
Raphael T. Haftka
机构
[1] University of Zulia,Applied Computing Institute
[2] University of Florida,Aerospace and Mechanical Engineering
来源
Structural and Multidisciplinary Optimization | 2009年 / 39卷
关键词
Surrogate-based optimization; Gaussian process; Short cycle optimization;
D O I
暂无
中图分类号
学科分类号
摘要
Surrogate-based optimization (SBO) for engineering design, popular in the optimization of complex engineering systems (e.g., aerospace, automotive, oil industries), proceeds in design cycles. Each cycle consists of the analysis of a number designs, the fitting of a surrogate, optimization based on the surrogate, and exact analysis at the design obtained by the optimization. However, due to time and cost constraints, the design optimization is usually limited to a small number of cycles each with substantial number of simulations (short cycle SBO) and rarely allowed to proceed to convergence. This paper takes a first step towards establishing a statistically rigorous procedure for assessing the merit of investing in another cycle of analysis versus accepting the present best solution. The proposed approach assumes that the set of locations for the next cycle is given, and it relies on: (1) a covariance model obtained from available input/output data, (2) a Gaussian process-based surrogate model, and (3) the fact that the predictions in the next cycle are a realization of a Gaussian process with a covariance matrix and mean specified using (1) and (2). Its effectiveness was established using descriptive and inference statistical elements in the context of a well-known test function and the optimization of an alkali-surfactant-polymer flooding of petroleum reservoirs.
引用
收藏
相关论文
共 50 条
  • [11] Variable Reduction for Surrogate-Based Optimization
    Rehbach, Frederik
    Gentile, Lorenzo
    Bartz-Beielstein, Thomas
    GECCO'20: PROCEEDINGS OF THE 2020 GENETIC AND EVOLUTIONARY COMPUTATION CONFERENCE, 2020, : 1177 - 1185
  • [12] Setting targets for surrogate-based optimization
    Queipo, Nestor V.
    Pintos, Salvador
    Nava, Efrain
    JOURNAL OF GLOBAL OPTIMIZATION, 2013, 55 (04) : 857 - 875
  • [13] Algebraic surrogate-based process optimization using Bayesian symbolic learning
    Forster, Tim
    Vazquez, Daniel
    Guillen-Gosalbez, Gonzalo
    AICHE JOURNAL, 2023, 69 (08)
  • [14] Surrogate-based optimization based on the probability of feasibility
    Martin Sohst
    Frederico Afonso
    Afzal Suleman
    Structural and Multidisciplinary Optimization, 2022, 65
  • [15] Surrogate-based optimization based on the probability of feasibility
    Sohst, Martin
    Afonso, Frederico
    Suleman, Afzal
    STRUCTURAL AND MULTIDISCIPLINARY OPTIMIZATION, 2022, 65 (01)
  • [16] Surrogate-based Optimization for Pharmaceutical Manufacturing Processes
    Wang, Zilong
    Escotet-Espinoza, M. Sebastian
    Singh, Ravendra
    Ierapetritou, Marianthi
    27TH EUROPEAN SYMPOSIUM ON COMPUTER AIDED PROCESS ENGINEERING, PT C, 2017, 40C : 2797 - 2802
  • [17] Hybrid analytical surrogate-based process optimization via Bayesian symbolic regression
    Jog, Sachin
    Vazquez, Daniel
    Santos, Lucas F.
    Caballero, Jose A.
    Guillen-Gosalbez, Gonzalo
    COMPUTERS & CHEMICAL ENGINEERING, 2024, 182
  • [18] Surrogate-based optimization of a periodic rescheduling algorithm
    Ikonen, Teemu J.
    Heljanko, Keijo
    Harjunkoski, Iiro
    AICHE JOURNAL, 2022, 68 (06)
  • [19] Surrogate-based aerodynamic optimization under uncertainty
    Wang, Yu
    Yu, Xiongqing
    CJK-OSM 4: THE FOURTH CHINA-JAPAN-KOREA JOINT SYMPOSIUM ON OPTIMIZATION OF STRUCTURAL AND MECHANICAL SYSTEMS, 2006, : 605 - 610
  • [20] Surrogate-Based Optimization of Biogeochemical Transport Models
    Priess, Malte
    Slawig, Thomas
    NUMERICAL ANALYSIS AND APPLIED MATHEMATICS, VOLS I-III, 2010, 1281 : 612 - 615