Hybrid analytical surrogate-based process optimization via Bayesian symbolic regression

被引:6
|
作者
Jog, Sachin [1 ]
Vazquez, Daniel [2 ]
Santos, Lucas F. [3 ]
Caballero, Jose A. [4 ]
Guillen-Gosalbez, Gonzalo [1 ]
机构
[1] Swiss Fed Inst Technol, Dept Chem & Appl Biosci, Inst Chem & Bioengn, Vladimir Prelog Weg 1, CH-8093 Zurich, Switzerland
[2] Univ Ramon Llull, IQS Sch Engn, Via Augusta 390, Barcelona 08017, Spain
[3] Univ Estadual Maringa, Chem Engn Dept, Ave Colombo 5790, BR-87020900 Maringa, Brazil
[4] Univ Alicante, Inst Chem Proc Engn, Ap Correos 99, Alicante 03080, Spain
关键词
Process optimization; Hybrid surrogate models; Black-box surrogate models; Bayesian symbolic regression; PRODUCTION PLANT; SIMULATION; MODELS; CO2; DESIGN;
D O I
10.1016/j.compchemeng.2023.108563
中图分类号
TP39 [计算机的应用];
学科分类号
081203 ; 0835 ;
摘要
Modular chemical process simulators are widespread in chemical industries to design and optimize production processes with sufficient accuracy. However, convergence issues and entrapment in local optima during process optimization are still challenges to overcome. To circumvent them, surrogate models of first principles simulations have attracted attention as they are easier to handle, with hybrid surrogates combining data-driven surrogate models with mechanistic equations becoming particularly appealing. In this context, this work explores the use of Bayesian symbolic regression to construct and globally optimize hybrid analytical surrogate models of process flowsheets, where some units are approximated with tailored analytical expressions rather than with neural networks or Gaussian processes, which might be harder to globally optimize. Comparing with other prevalent black-box surrogate modeling & optimization approaches, such as kriging and Bayesian optimization, we find that our approach can find better solutions than those identified with pure black-box methodologies, yet model building is much more computationally demanding.
引用
收藏
页数:17
相关论文
共 50 条
  • [1] Algebraic surrogate-based process optimization using Bayesian symbolic learning
    Forster, Tim
    Vazquez, Daniel
    Guillen-Gosalbez, Gonzalo
    AICHE JOURNAL, 2023, 69 (08)
  • [2] Surrogate-based analysis and optimization
    Queipo, NV
    Haftka, RT
    Shyy, W
    Goel, T
    Vaidyanathan, R
    Tucker, PK
    PROGRESS IN AEROSPACE SCIENCES, 2005, 41 (01) : 1 - 28
  • [3] Surrogate-Based Process Synthesis
    Henao, Carlos A.
    Maravelias, Christos T.
    20TH EUROPEAN SYMPOSIUM ON COMPUTER AIDED PROCESS ENGINEERING, 2010, 28 : 1129 - 1134
  • [4] Surrogate-based process optimization for reducing warpage in injection molding
    Gao, Yuehua
    Wang, Xicheng
    JOURNAL OF MATERIALS PROCESSING TECHNOLOGY, 2009, 209 (03) : 1302 - 1309
  • [5] Enhanced variable-fidelity surrogate-based optimization framework by Gaussian process regression and fuzzy clustering
    Tian, Kuo
    Li, Zengcong
    Huang, Lei
    Du, Kaifan
    Jiang, Liangliang
    Wang, Bo
    COMPUTER METHODS IN APPLIED MECHANICS AND ENGINEERING, 2020, 366
  • [6] Surrogate-Based Superstructure Optimization Framework
    Henao, Carlos A.
    Maravelias, Christos T.
    AICHE JOURNAL, 2011, 57 (05) : 1216 - 1232
  • [7] Recent advances in surrogate-based optimization
    Forrester, Alexander I. J.
    Keane, Andy J.
    PROGRESS IN AEROSPACE SCIENCES, 2009, 45 (1-3) : 50 - 79
  • [8] A Hybrid Surrogate-Based Approach for Evolutionary Multi-Objective Optimization
    Rosales-Perez, Alejandro
    Coello Coello, Carlos A.
    Gonzalez, Jesus A.
    Reyes-Garcia, Carlos A.
    Jair Escalante, Hugo
    2013 IEEE CONGRESS ON EVOLUTIONARY COMPUTATION (CEC), 2013, : 2548 - 2555
  • [9] A surrogate-based optimization design method based on hybrid infill sampling criterion
    Li Z.-L.
    Peng S.-S.
    Wang T.
    Gongcheng Lixue/Engineering Mechanics, 2022, 39 (01): : 27 - 33
  • [10] Surrogate-Based Optimization of SMT Inductors
    Riener, Christian
    Reinbacher-Koestinger, Alice
    Bauernfeind, Thomas
    Kvasnicka, Samuel
    Roppert, Klaus
    Kaltenbacher, Manfred
    2024 IEEE 21ST BIENNIAL CONFERENCE ON ELECTROMAGNETIC FIELD COMPUTATION, CEFC 2024, 2024,