Machine learning algorithms for in-line monitoring during yeast fermentations based on Raman spectroscopy

被引:4
|
作者
Wu, Debiao [1 ]
Xu, Yaying [1 ]
Xu, Feng [1 ]
Shao, Minghao [1 ]
Huang, Mingzhi [1 ]
机构
[1] East China Univ Sci & Technol, State Key Lab Bioreactor Engn, 130 Meilong Rd, Shanghai 200237, Peoples R China
关键词
Machine learning; Raman spectroscopy; Yeast fermentation; Process analytical technology; MULTIPLE COMPONENTS; REGRESSION; SELECTION; GLUCOSE; CLASSIFICATION; BIODIESEL; WINE;
D O I
10.1016/j.vibspec.2024.103672
中图分类号
O65 [分析化学];
学科分类号
070302 ; 081704 ;
摘要
Given the intricacies and nonlinearity inherent to industrial fermentation systems, the application of process analytical technology presents considerable benefits for the direct, real-time monitoring, control, and assessment of synthetic processes. In this study, we introduce an in-line monitoring approach utilizing Raman spectroscopy for ethanol production by Saccharomyces cerevisiae. Initially, we employed feature selection techniques from the realm of machine learning to reduce the dimensionality of the Raman spectral data. Our findings reveal that feature selection results in a noteworthy reduction of over 90% in model training time, concurrently enhancing the predictive performance of glycerol and cell concentration by 14.20% and 17.10% at the root mean square error (RMSE) level. Subsequently, we conducted model retraining using 15 machine learning algorithms, with hyperparameters optimized through grid search. Our results illustrate that the post-hyperparameter adjustment model exhibits improvements in RMSE for ethanol, glycerol, glucose, and biomass by 9.73%, 4.33%, 22.22%, and 13.79%, respectively. Finally, specific machine learning algorithms, namely BaggingRegressor, Support Vector Regression, BayesianRidge, and VotingRegressor, were identified as suitable models for predicting glucose, ethanol, glycerol, and cell concentrations, respectively. Notably, the coefficient of determination (R2) ranged from 0.89 to 0.97, and RMSE values ranged from 0.06 to 2.59 g/L on the testing datasets. The study highlights machine learning's effectiveness in Raman spectroscopy data analysis for improved industrial fermentation monitoring, enhancing efficiency, and offering novel modeling insights.
引用
收藏
页数:14
相关论文
共 50 条
  • [1] Non-contact Raman spectroscopy for in-line monitoring of glucose and ethanol during yeast fermentations
    Robert Schalk
    Frank Braun
    Rudolf Frank
    Matthias Rädle
    Norbert Gretz
    Frank-Jürgen Methner
    Thomas Beuermann
    Bioprocess and Biosystems Engineering, 2017, 40 : 1519 - 1527
  • [2] Non-contact Raman spectroscopy for in-line monitoring of glucose and ethanol during yeast fermentations
    Schalk, Robert
    Braun, Frank
    Frank, Rudolf
    Raedle, Matthias
    Gretz, Norbert
    Methner, Frank-Juergen
    Beuermann, Thomas
    BIOPROCESS AND BIOSYSTEMS ENGINEERING, 2017, 40 (10) : 1519 - 1527
  • [3] In-line monitoring of hydrate formation during wet granulation using Raman spectroscopy
    Wikström, H
    Marsac, PJ
    Taylor, LS
    JOURNAL OF PHARMACEUTICAL SCIENCES, 2005, 94 (01) : 209 - 219
  • [4] In-Line Monitoring of Carvedilol Crystallization Using Raman Spectroscopy
    Pataki, Hajnalka
    Markovits, Imre
    Vajna, Balazs
    Nagy, Zsombor K.
    Marosi, Gyoergy
    CRYSTAL GROWTH & DESIGN, 2012, 12 (11) : 5621 - 5628
  • [5] In-line Raman spectroscopy for bispecific assembly process monitoring
    Maier, Andrew
    ABSTRACTS OF PAPERS OF THE AMERICAN CHEMICAL SOCIETY, 2017, 253
  • [6] In-Line Monitoring the Degradation of Polypropylene under Multiple Extrusions Based on Raman Spectroscopy
    Guo, Xuemei
    Lin, Zenan
    Wang, Yingjun
    He, Zhangping
    Wang, Mengmeng
    Jin, Gang
    POLYMERS, 2019, 11 (10)
  • [7] In-line product quality monitoring during biopharmaceutical manufacturing using computational Raman spectroscopy
    Wang, Jiarui
    Chen, Jingyi
    Studts, Joey
    Wang, Gang
    MABS, 2023, 15 (01)
  • [8] Comparison of sampling techniques for in-line monitoring using Raman spectroscopy
    Wikström, H
    Lewis, IR
    Taylor, LS
    APPLIED SPECTROSCOPY, 2005, 59 (07) : 934 - 941
  • [9] In-situ Raman Spectroscopy for the In-Line Crystallization Monitoring of Entacapone
    Novak, P.
    Jednacak, T.
    Hrenar, T.
    Brkljaca, M.
    XXII INTERNATIONAL CONFERENCE ON RAMAN SPECTROSCOPY, 2010, 1267 : 720 - 721
  • [10] Raman Spectroscopy for In-Line Water Quality Monitoring - Instrumentation and Potential
    Li, Zhiyun
    Deen, M. Jamal
    Kumar, Shiva
    Selvaganapathy, P. Ravi
    SENSORS, 2014, 14 (09) : 17275 - 17303