From Shallow to Deep Bioprocess Hybrid Modeling: Advances and Future Perspectives

被引:5
作者
Agharafeie, Roshanak [1 ,2 ]
Ramos, Joao Rodrigues Correia [2 ]
Mendes, Jorge M. [1 ,3 ]
Oliveira, Rui [2 ]
机构
[1] NOVA Univ Lisbon, Nova Informat Management Sch NOVA IMS, Campus Campolide, P-1070312 Lisbon, Portugal
[2] NOVA Univ Lisbon, Nova Sch Sci & Technol NOVA SST, LAQV REQUIMTE, Campus Caparica, P-2829516 Caparica, Portugal
[3] NOVA Cairo Knowledge Hub Univ, Cairo 11835, Egypt
来源
FERMENTATION-BASEL | 2023年 / 9卷 / 10期
关键词
artificial neural network; deep learning; hybrid model; hybrid neural network; bioprocess; digitalization; Industry; 4.0; ARTIFICIAL NEURAL-NETWORKS; SYSTEMS BIOLOGY; PRINCIPLES APPROACH; LEARNING FRAMEWORK; OPTIMIZATION; KNOWLEDGE; DESIGN; FERMENTATION; SIMULATION; PREDICTION;
D O I
10.3390/fermentation9100922
中图分类号
Q81 [生物工程学(生物技术)]; Q93 [微生物学];
学科分类号
071005 ; 0836 ; 090102 ; 100705 ;
摘要
Deep learning is emerging in many industrial sectors in hand with big data analytics to streamline production. In the biomanufacturing sector, big data infrastructure is lagging compared to other industries. A promising approach is to combine deep neural networks (DNN) with prior knowledge in hybrid neural network (HNN) workflows that are less dependent on the quality and quantity of data. This paper reviews published articles over the past 30 years on the topic of HNN applications to bioprocesses. It reveals that HNNs have been applied to various bioprocesses, including microbial cultures, animal cells cultures, mixed microbial cultures, and enzyme biocatalysis. HNNs have been applied for process analysis, process monitoring, development of software sensors, open- and closed-loop control, batch-to-batch control, model predictive control, intensified design of experiments, quality-by-design, and recently for the development of digital twins. Most previous HNN studies have combined shallow feedforward neural networks (FFNNs) with physical laws, such as macroscopic material balance equations, following the semiparametric design principle. Only recently, deep HNNs based on deep FFNNs, convolution neural networks (CNN), long short-term memory (LSTM) networks and physics-informed neural networks (PINNs) have been reported. The biopharma sector is currently a major driver but applications to biologics quality attributes, new modalities, and downstream processing are significant research gaps.
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页数:22
相关论文
共 128 条
  • [51] Learning transport processes with machine intelligence
    Miniati, Francesco
    Gregori, Gianluca
    [J]. SCIENTIFIC REPORTS, 2022, 12 (01)
  • [52] Mitchell TM, 1997, MACH LEARN
  • [53] Moher D, 2010, INT J SURG, V8, P658, DOI [10.1136/bmj.i4086, 10.1016/j.ijsu.2010.02.007, 10.1371/journal.pmed.1000097, 10.1016/j.ijsu.2010.07.299, 10.1186/2046-4053-4-1, 10.1136/bmj.b2700, 10.1136/bmj.b2535]
  • [54] Towards Risk-aware Machine Learning Supported Model Predictive Control and Open-loop Optimization for Repetitive Processes
    Morabito, Bruno
    Pohlodek, Johannes
    Matschek, Janine
    Savchenko, Anton
    Carius, Lisa
    Findeisen, Rolf
    [J]. IFAC PAPERSONLINE, 2021, 54 (06): : 321 - 328
  • [55] Industrial data science - a review of machine learning applications for chemical and process industries
    Mowbray, Max
    Vallerio, Mattia
    Perez-Galvan, Carlos
    Zhang, Dongda
    Chanona, Antonio Del Rio
    Navarro-Brull, Francisco J.
    [J]. REACTION CHEMISTRY & ENGINEERING, 2022, 7 (07): : 1471 - 1509
  • [56] Machine learning for biochemical engineering: A review
    Mowbray, Max
    Savage, Thomas
    Wu, Chufan
    Song, Ziqi
    Cho, Bovinille Anye
    Del Rio-Chanona, Ehecatl A.
    Zhang, Dongda
    [J]. BIOCHEMICAL ENGINEERING JOURNAL, 2021, 172
  • [57] Knowledge-Based Design of Artificial Neural Network Topology for Additive Manufacturing Process Modeling: A New Approach and Case Study for Fused Deposition Modeling
    Nagarajan, Hari P. N.
    Mokhtarian, Hossein
    Jafarian, Hesam
    Dimassi, Saoussen
    Bakrani-Balani, Shahriar
    Hamedi, Azarakhsh
    Coatanea, Eric
    Wang, G. Gary
    Haapala, Karl R.
    [J]. JOURNAL OF MECHANICAL DESIGN, 2019, 141 (02)
  • [58] A hybrid model framework for the optimization of preparative chromatographic processes
    Nagrath, D
    Messac, A
    Bequette, BW
    Cramer, SM
    [J]. BIOTECHNOLOGY PROGRESS, 2004, 20 (01) : 162 - 178
  • [59] Hybrid Models Based on Machine Learning and an Increasing Degree of Process Knowledge: Application to Capture Chromatographic Step
    Narayanan, Harini
    Luna, Martin
    Sokolov, Michael
    Arosio, Paolo
    Butte, Alessandro
    Morbidelli, Massimo
    [J]. INDUSTRIAL & ENGINEERING CHEMISTRY RESEARCH, 2021, 60 (29) : 10466 - 10478
  • [60] Hybrid Models for the simulation and prediction of chromatographic processes for protein capture
    Narayanan, Harini
    Seidler, Tobias
    Luna, Martin Francisco
    Sokolov, Michael
    Morbidelli, Massimo
    Butte, Alessandro
    [J]. JOURNAL OF CHROMATOGRAPHY A, 2021, 1650