Modeling Framework for Batch-dependent Dynamics of Reaction Process by Combining First Principles and Machine Learning

被引:0
|
作者
Ishitobi T. [1 ]
Kono Y. [1 ]
Mochizuki Y. [1 ]
机构
[1] Hitachi, Ltd., 292, Yoshida-cho, Totsuka-ku, Kanagawa, Yokohama
关键词
batch process; machine learning; process model;
D O I
10.1541/ieejeiss.143.934
中图分类号
学科分类号
摘要
We propose a modeling framework for automating batch processes operation. Batch processes are often controlled by PID controllers, where engineers manually regulate their parameters and temporal patterns of reference signals. Therefore, it takes a long time for optimizing these parameters and temporal patterns. A possible solution for this is to apply so-called Model Predictive Control (MPC) technology to the tuning. Here, batch process dynamics depend on the types of products and of equipment, thereby forcing engineers to construct and maintain multiple models that correspond to the number of combinations of product types and equipment types. Thus, batch process modeling is a time-consuming and complicated task. To solve this problem, we propose a modeling framework; about a modeling target, the part applying commonly and parameters can be decided in advance are constructed by mathematical models, and the part that required experimentation for designing or tuning are constructed by machine learning models. We expect this framework can improving estimation accuracy and suppressing the number of model construction by separating model construction and combining the mathematical and machine learning models. In our simulation, we confirmed that our proposed model can suppress prediction error (RMSE) of reactor temperature under 1K. Furthermore, an optimization algorithm with our model can find a temporal pattern of a reference signal so as to reduce control error of reactor temperature under 1.99K. © 2023 The Institute of Electrical Engineers of Japan.
引用
收藏
页码:934 / 941
页数:7
相关论文
共 27 条
  • [1] Modeling framework for batch-dependent dynamics of reaction process by combining first principles and machine learning
    Ishitobi, Taichi
    Kono, Yohei
    Mochizuki, Yoshinori
    ELECTRONICS AND COMMUNICATIONS IN JAPAN, 2023, 106 (04)
  • [2] 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
  • [3] Defect modeling in semiconductors: the role of first principles simulations and machine learning
    Rahman, Md Habibur
    Mannodi-Kanakkithodi, Arun
    JOURNAL OF PHYSICS-MATERIALS, 2025, 8 (02):
  • [4] Incorporating Unmodeled Dynamics Into First-Principles Models Through Machine Learning
    Quaghebeur, Ward
    Nopens, Ingmar
    De Baets, Bernard
    IEEE ACCESS, 2021, 9 : 22014 - 22022
  • [5] Combining Molecular Quantum Mechanical Modeling and Machine Learning for Accelerated Reaction Screening and Discovery
    Casetti, Nicholas
    Alfonso-Ramos, Javier E.
    Coley, Connor W.
    Stuyver, Thijs
    CHEMISTRY-A EUROPEAN JOURNAL, 2023, 29 (60)
  • [6] Modeling of Continuous PHA Production by a Hybrid Approach Based on First Principles and Machine Learning
    Luna, Martin F.
    Ochsner, Andrea M.
    Amstutz, Veronique
    von Blarer, Damian
    Sokolov, Michael
    Arosio, Paolo
    Zinn, Manfred
    PROCESSES, 2021, 9 (09)
  • [7] Integration of first-principle models and machine learning in a modeling framework: An application to flocculation
    Nazemzadeh, Nima
    Malanca, Alina Anamaria
    Nielsen, Rasmus Fjordbak
    Gernaey, Krist, V
    Andersson, Martin Peter
    Mansouri, Seyed Soheil
    CHEMICAL ENGINEERING SCIENCE, 2021, 245 (245)
  • [8] Modeling and Optimizing the Impact of Process and Equipment Parameters in Sputtering Deposition Systems Using a Gaussian Process Machine Learning Framework
    Lang, Christopher I.
    Jansen, Alexander
    Didari, Sima
    Kothnur, Prashanth
    Boning, Duane S.
    IEEE TRANSACTIONS ON SEMICONDUCTOR MANUFACTURING, 2022, 35 (02) : 229 - 240
  • [9] Hybrid modeling of first-principles and machine learning: A step-by-step tutorial review for practical implementation
    Shah, Parth
    Pahari, Silabrata
    Bhavsar, Raj
    Kwon, Joseph Sang-Il
    COMPUTERS & CHEMICAL ENGINEERING, 2025, 194
  • [10] Band Gaps and Optical Properties of RENiO3 upon Strain: Combining First-Principles Calculations and Machine Learning
    Tang, Xuchang
    Luo, Zhaokai
    Cui, Yuanyuan
    MATERIALS, 2023, 16 (08)