Abstract

Raman and mid-infrared (MIR) spectroscopy are useful tools for the specific detection of molecules, since both methods are based on the excitation of fundamental vibration modes. In this study, Raman and MIR spectroscopy were applied simultaneously during aerobic yeast fermentations of Saccharomyces cerevisiae. Based on the recorded Raman intensities and MIR absorption spectra, respectively, temporal concentration courses of glucose, ethanol, and biomass were determined. The chemometric methods used to evaluate the analyte concentrations were partial least squares (PLS) regression and multiple linear regression (MLR). In view of potential photometric sensors, MLR models based on two (2D) and four (4D) analyte-specific optical channels were developed. All chemometric models were tested to predict glucose concentrations between 0 and 30 g L−1, ethanol concentrations between 0 and 10 g L−1, and biomass concentrations up to 15 g L−1 in real time during diauxic growth. Root-mean-squared errors of prediction (RMSEP) of 0.68 g L−1, 0.48 g L−1, and 0.37 g L−1 for glucose, ethanol, and biomass were achieved using the MIR setup combined with a PLS model. In the case of Raman spectroscopy, the corresponding RMSEP values were 0.92 g L−1, 0.39 g L−1, and 0.29 g L−1. Nevertheless, the simple 4D MLR models could reach the performance of the more complex PLS evaluation. Consequently, the replacement of spectrometer setups by four-channel sensors were discussed. Moreover, the advantages and disadvantages of Raman and MIR setups are demonstrated with regard to process implementation.

Highlights

  • For optimum process control and quality assurance in chemical, as well as biotechnological processes, knowledge of the reaction mixture’s current composition is of great benefit

  • In order to ensure direct comparability of Raman and MIR-attenuated total reflection (ATR) spectroscopy, both setups were simultaneously applied for real-time monitoring of glucose, ethanol, and biomass concentrations during four aerobic yeast fermentations

  • multiple linear regression (MLR) models are well-suited for the calibration of compact multi-channel sensors [10], where the determination of analyte concentrations is based on the linear combination of signal intensities in a few transmission ranges of optical filters

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Summary

Introduction

For optimum process control and quality assurance in chemical, as well as biotechnological processes, knowledge of the reaction mixture’s current composition is of great benefit. Educt and product concentrations are important parameters [1]. Sci. 2019, 9, 2472 has been established for simultaneous real-time measurements of multiple analytes [2]. Taking the rapid pace of change in the fermentation industry, as well as financial pressure into consideration, vibrational spectroscopy has shown great promise regarding process monitoring [3]

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