Multi-fidelity surrogate-based optimization for microfluidic concentration gradient generator design

被引:1
|
作者
Yang, Haizhou [1 ]
Hong, Seong Hyeon [1 ]
Qian, Yu [2 ]
Wang, Yi [1 ]
机构
[1] Univ South Carolina, Dept Mech Engn, Columbia, SC 29208 USA
[2] Univ South Carolina, Dept Civil & Environm Engn, Columbia, SC USA
关键词
Multi-fidelity surrogate-based optimization; Cokriging; Parallel infill; Microfluidic concentration gradient generator; GLOBAL OPTIMIZATION; MODEL;
D O I
10.1108/EC-01-2022-0037
中图分类号
TP39 [计算机的应用];
学科分类号
081203 ; 0835 ;
摘要
PurposeThis paper aims to present a multi-fidelity surrogate-based optimization (MFSBO) method for computationally accurate and efficient design of microfluidic concentration gradient generators (mu CGGs).Design/methodology/approachCokriging-based multi-fidelity surrogate model (MFSM) is constructed to combine data with varying fidelities and computational costs to accelerate the optimization process and improve design accuracy. An adaptive sampling approach based on parallel infill of multiple low-fidelity (LF) samples without notably adding computation burden is developed. The proposed optimization framework is compared with a surrogate-based optimization (SBO) method that relies on data from a single source, and a conventional multi-fidelity adaptive sampling and optimization method in terms of the convergence rate and design accuracy.FindingsThe results demonstrate that proposed MFSBO method allows faster convergence and better designs than SBO for all case studies with 49% more reduction in the objective function value on average. It is also found that parallel infill (MFSBO-4) with four LF samples, enables more robust, efficient and accurate designs than conventional multi-fidelity infill (MFSBO-1) that only adopts one LF sample during each iteration for more complex optimization problems.Originality/valueA MFSM based on cokriging method is constructed to utilize data with varying fidelities, accuracies and computational costs for mu CGG design. A parallel infill strategy based on multiple infill criteria is developed to accelerate the convergence and improve the design accuracy of optimization. The proposed methodology is proved to be a feasible method for mu CGG design and its computational efficiency is verified.
引用
收藏
页码:772 / 792
页数:21
相关论文
共 50 条
  • [21] A Multi-Fidelity Surrogate Optimization Method Based on Analytical Models
    Sendrea, Ricardo E.
    Zekios, Constantinos L.
    Georgakopoulos, Stavros, V
    2021 IEEE MTT-S INTERNATIONAL MICROWAVE SYMPOSIUM (IMS), 2021, : 70 - 73
  • [22] Multi-fidelity optimization via surrogate modelling
    Forrester, Alexander I. J.
    Sobester, Andras
    Keane, Andy J.
    PROCEEDINGS OF THE ROYAL SOCIETY A-MATHEMATICAL PHYSICAL AND ENGINEERING SCIENCES, 2007, 463 (2088): : 3251 - 3269
  • [23] Multi-fidelity reduced-order model for GPU-enabled microfluidic concentration gradient design
    Haizhou Yang
    Seong Hyeon Hong
    Gang Wang
    Yi Wang
    Engineering with Computers, 2023, 39 : 2869 - 2887
  • [24] Multi-fidelity reduced-order model for GPU-enabled microfluidic concentration gradient design
    Yang, Haizhou
    Hong, Seong Hyeon
    Wang, Gang
    Wang, Yi
    ENGINEERING WITH COMPUTERS, 2023, 39 (04) : 2869 - 2887
  • [25] A multi-fidelity competitive sampling method for surrogate-based stacking sequence optimization of composite shells with multiple cutouts
    Tian, Kuo
    Ma, Xiangtao
    Li, Zengcong
    Lin, Shiyao
    Wang, Bo
    Waas, Anthony M.
    INTERNATIONAL JOURNAL OF SOLIDS AND STRUCTURES, 2020, 193 : 1 - 12
  • [26] On the multi-fidelity approach in surrogate-based multidisciplinary design optimisation of high-aspect-ratio wing aircraft
    Lobo do Vale, J.
    Sohst, M.
    Crawford, C.
    Suleman, A.
    Potter, G.
    Banerjee, S.
    AERONAUTICAL JOURNAL, 2023, 127 (1307): : 2 - 23
  • [27] A multi-fidelity surrogate model based on design variable correlations
    Lai, Xiaonan
    Pang, Yong
    Liu, Fuwen
    Sun, Wei
    Song, Xueguan
    ADVANCED ENGINEERING INFORMATICS, 2024, 59
  • [28] Neural-physics multi-fidelity model with active learning and uncertainty quantification for GPU-enabled microfluidic concentration gradient generator design
    Yang, Haizhou
    Ou, Junlin
    Wang, Yi
    COMPUTER METHODS IN APPLIED MECHANICS AND ENGINEERING, 2023, 417
  • [29] An efficient multi-fidelity design optimization framework for a thermoelectric generator system
    Lee, Mingyu
    Jung, Yongsu
    Hwang, Chulhyun
    Kim, Minjik
    Kim, Minwoo
    Lee, Ungki
    Lee, Ikjin
    ENERGY CONVERSION AND MANAGEMENT, 2024, 315
  • [30] Selecting Model Fidelity for Antenna Design Using Surrogate-Based Optimization
    Koziel, Slawomir
    Ogurtsov, Stanislav
    2012 IEEE ANTENNAS AND PROPAGATION SOCIETY INTERNATIONAL SYMPOSIUM (APSURSI), 2012,