A hybrid science-guided machine learning approach for modeling chemical processes: A review

被引:64
作者
Sharma, Niket [1 ]
Liu, Y. A. [1 ]
机构
[1] Virginia Polytech Inst & State Univ, AspenTech Ctr Excellence Proc Syst Engn, Dept Chem Engn, Blacksburg, VA 24061 USA
关键词
chemical process modeling; data-based model; first-principles model; hybrid modeling; science-guided machine learning; PARTICLE-SIZE DISTRIBUTION; TO-BATCH CONTROL; NEURAL-NETWORK; BLACK-BOX; UNCERTAINTY QUANTIFICATION; PREDICTIVE CONTROL; FLEXIBILITY ANALYSIS; DATA-DRIVEN; OPTIMIZATION; 1ST-PRINCIPLES;
D O I
10.1002/aic.17609
中图分类号
TQ [化学工业];
学科分类号
0817 ;
摘要
This study presents a broad perspective of hybrid process modeling combining the scientific knowledge and data analytics in bioprocessing and chemical engineering with a science-guided machine learning (SGML) approach. We divide the approach into two major categories: ML complements science, and science complements ML. We review the literature relating to the hybrid SGML approach, and propose a systematic classification of hybrid SGML models. For applying ML to improve science-based models, we present expositions of direct serial and parallel hybrid modeling and their combinations, inverse modeling, reduced-order modeling, quantifying uncertainty in the process and even discovering governing equations of the process model. For applying scientific principles to improve ML models, we discuss the science-guided design, learning and refinement. For each subcategory, we identify its requirements, strengths, and limitations, together with their published and potential applications. We also present several examples to illustrate different hybrid SGML methodologies for modeling chemical processes.
引用
收藏
页数:19
相关论文
共 50 条
  • [1] A hybrid framework of first-principles model and machine learning for optimizing control parameters in chemical processes
    Noh, Wonjun
    Park, Sihwan
    Kim, Sojung
    Lee, Inkyu
    JOURNAL OF INDUSTRIAL AND ENGINEERING CHEMISTRY, 2025, 141 : 582 - 596
  • [2] Forward prediction and surrogate modeling for subsurface hydrology: A review of theory-guided machine-learning approaches
    Xu, Rui
    Zhang, Dongxiao
    COMPUTERS & GEOSCIENCES, 2024, 188
  • [3] A review of machine learning for the optimization of production processes
    Weichert, Dorina
    Link, Patrick
    Stoll, Anke
    Rueping, Stefan
    Ihlenfeldt, Steffen
    Wrobel, Stefan
    INTERNATIONAL JOURNAL OF ADVANCED MANUFACTURING TECHNOLOGY, 2019, 104 (5-8) : 1889 - 1902
  • [4] Food Product Design: A Hybrid Machine Learning and Mechanistic Modeling Approach
    Zhang, Xiang
    Zhou, Teng
    Zhang, Lei
    Fung, Ka Yip
    Ng, Ka Ming
    INDUSTRIAL & ENGINEERING CHEMISTRY RESEARCH, 2019, 58 (36) : 16743 - 16752
  • [5] Rational design of chemically complex metallic glasses by hybrid modeling guided machine learning
    Zhou, Z. Q.
    He, Q. F.
    Liu, X. D.
    Wang, Q.
    Luan, J. H.
    Liu, C. T.
    Yang, Y.
    NPJ COMPUTATIONAL MATERIALS, 2021, 7 (01)
  • [6] A review on machine learning-guided design of energy materials
    Kim, Seongmin
    Xu, Jiaxin
    Shang, Wenjie
    Xu, Zhihao
    Lee, Eungkyu
    Luo, Tengfei
    PROGRESS IN ENERGY, 2024, 6 (04):
  • [7] A comprehensive hybrid first principles/machine learning modeling framework for complex industrial processes
    Sun, Bei
    Yang, Chunhua
    Wang, Yalin
    Gui, Weihua
    Craig, Ian
    Olivier, Laurentz
    JOURNAL OF PROCESS CONTROL, 2020, 86 : 30 - 43
  • [8] Hybrid Semi-parametric Modeling in Separation Processes: A Review
    McBride, Kevin
    Sanchez Medina, Edgar Ivan
    Sundmacher, Kai
    CHEMIE INGENIEUR TECHNIK, 2020, 92 (07) : 842 - 855
  • [9] A Hybrid Method for Stochastic Performance Modeling and Optimization of Chemical Engineering Processes
    Abubakar, Usman
    Sriramula, Srinivas
    Renton, Neill C.
    CHEMICAL ENGINEERING COMMUNICATIONS, 2015, 202 (02) : 217 - 231
  • [10] Evaluating data-driven and hybrid modeling of terrestrial actual evapotranspiration based on an automatic machine learning approach
    Guo, Ning
    Chen, Hao
    Han, Qiong
    Wang, Tiejun
    JOURNAL OF HYDROLOGY, 2024, 628