An artificial neural network approach to recognise kinetic models from experimental data

被引:21
|
作者
Quaglio, Marco [1 ]
Roberts, Louise [1 ]
Bin Jaapar, Mohd Safarizal [1 ]
Fraga, Eric S. [1 ]
Dua, Vivek [1 ]
Galvanin, Federico [1 ]
机构
[1] UCL, Dept Chem Engn, Torrington Pl, London WC1E 7JE, England
关键词
Model selection; Model discrimination; Identifiability; Machine learning; Design of experiment; PRACTICAL IDENTIFIABILITY; NOVELTY DETECTION; DESIGN; PREDICTION; PARAMETER; CATALYST; SYSTEM;
D O I
10.1016/j.compchemeng.2020.106759
中图分类号
TP39 [计算机的应用];
学科分类号
081203 ; 0835 ;
摘要
The quantitative description of the dynamic behaviour of reacting systems requires the identification of an appropriate set of kinetic model equations. The selection of the correct model may pose substantial challenges as there may be a large number of candidate kinetic model structures. In this work, a model selection approach is presented where an Artificial Neural Network classifier is trained for recognising appropriate kinetic model structures given the available experimental evidence. The method does not require the fitting of kinetic parameters and it is well suited when there is a high number of candidate kinetic mechanisms. The approach is demonstrated on a simulated case study on the selection of a kinetic model for describing the dynamics of a three-component reacting system in a batch reactor. The sensitivity of the approach to a change in the experimental design and to a change in the system noise is assessed. (C) 2020 Elsevier Ltd. All rights reserved.
引用
收藏
页数:11
相关论文
共 50 条
  • [1] Kinetics-constrained neural ordinary differential equations: Artificial neural network models tailored for small data to boost kinetic model development
    Fedorov, Aleksandr
    Perechodjuk, Anna
    Linke, David
    CHEMICAL ENGINEERING JOURNAL, 2023, 477
  • [2] An optimal experimental design framework for fast kinetic model identification based on artificial neural networks
    Sangoi, Enrico
    Quaglio, Marco
    Bezzo, Fabrizio
    Galvanin, Federico
    COMPUTERS & CHEMICAL ENGINEERING, 2024, 187
  • [3] Uncertainty Propagation Based MINLP Approach for Artificial Neural Network Structure Reduction
    Sildir, Hasan
    Sarrafi, Sahin
    Aydin, Erdal
    PROCESSES, 2022, 10 (09)
  • [4] Similarity Measurement of Metadata of Geospatial Data: An Artificial Neural Network Approach
    Chen, Zugang
    Song, Jia
    Yang, Yaping
    ISPRS INTERNATIONAL JOURNAL OF GEO-INFORMATION, 2018, 7 (03)
  • [5] Developing Bridge Deterioration Models Using an Artificial Neural Network
    Althaqafi, Essam
    Chou, Eddie
    INFRASTRUCTURES, 2022, 7 (08)
  • [6] Computational Approach of Artificial Neural Network
    Ravichandra, Thangjam
    Thingom, Chintureena
    2017 INTERNATIONAL CONFERENCE ON INNOVATIVE MECHANISMS FOR INDUSTRY APPLICATIONS (ICIMIA), 2017, : 646 - 649
  • [7] Enhanced Magnetic Localization with Artificial Neural Network Field Models
    Wu, Faye
    Robert, Nathan M.
    Frey, Dan D.
    Foong, Shaohui
    2013 IEEE INTERNATIONAL CONFERENCE ON ROBOTICS AND AUTOMATION (ICRA), 2013, : 1560 - 1565
  • [8] Artificial Neural Network Models for Solar Radiation Estimation Based on Meteorological Data
    Yuzer, Ersan Omer
    Bozkurt, Altug
    ACTA POLYTECHNICA HUNGARICA, 2025, 22 (01) : 43 - 65
  • [9] Characterisation of the plasma density with two artificial neural network models
    Wang Teng
    Gao Xiang-Dong
    Li Wei
    CHINESE PHYSICS B, 2010, 19 (07)
  • [10] Kinetic and Artificial neural network modelling of marabú (Dichrostachys cinerea) pyrolysis based on thermogravimetric data
    Abreu-Naranjo, Reinier
    Zhong, Yu
    Perez-Martinez, Amaury
    Ding, Yanming
    BIOMASS CONVERSION AND BIOREFINERY, 2024, : 8983 - 8995