Prediction of intensified ethanol fermentation of sugarcane using a deep learning soft sensor and process analytical technology

Author:

Rivera Elmer C1,Yamakawa Celina K2,Rossell Carlos EV3,Nolasco Jonas4,Kwon Hyun J1ORCID

Affiliation:

1. School of Engineering Andrews University Berrien Springs Michigan USA

2. Department of Biotechnology and Biomedicine Technical University of Denmark Kongens Lyngby Denmark

3. Interdisciplinary Center of Energy Planning (NIPE) University of Campinas São Paulo Brazil

4. NJ Engineering and Consulting in Bioprocesses São Paulo Brazil

Abstract

AbstractBACKGROUNDIntensified ethanol fermentation produces higher ethanol concentrations while reducing water and energy requirements. Nevertheless, the inhibitory and detrimental effect of the cellular stress barriers in this process further complicates the nonlinear dynamic relationship between the variables that directly reflect the fermentation quality. These key variables are hard to measure in real time and therefore cannot be directly controlled.RESULTSThis work presents the development of a soft sensor that predicts in real time the ethanol and substrate concentrations of an intensified fermentation. The soft sensor uses feedforward neural networks (FNNs) with easily measurable process analytical technology (PAT) tools. The application of advanced PAT tools such as redox potential and capacitance, in addition to temperature and pH are explored as input variables. The complex kinetic relationship between the studied variables was captured with FNN architectures with a single hidden layer and between 95 and 175 hidden neurons for the different cases studied. Acceptable predictions are achieved for the concentration of ethanol (RMSE = 9.5 and R2 = 0.97) and substrate (RMSE = 17.02 and R2 = 0.92).CONCLUSIONSThe results confirm that the proposed soft sensor can accurately predict the ethanol and substrate concentrations. Collectively, capacitance, redox potential, temperature and pH provide a powerful platform of PAT tools that can directly infer key variables showing the fermentation quality in real time. This study provides a significant step towards the systematic development of a reliable soft sensor with integration of advanced PAT tools. © 2023 Society of Chemical Industry.

Funder

Andrews University

Publisher

Wiley

Subject

Inorganic Chemistry,Organic Chemistry,Pollution,Waste Management and Disposal,Fuel Technology,Renewable Energy, Sustainability and the Environment,General Chemical Engineering,Biotechnology

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4. Ethanol Basics (Fact Sheet) Clean cities energy efficiency & renewable energy (EERE)(2015).https://www.afdc.energy.gov/uploads/publication/ethanol_basics.pdf20 May 2023.

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