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Applying machine learning and genetic algorithms accelerated for optimizing ethanol production

  • Xu Yang
  • , Nianhua Chen
  • , Hui Yu
  • , Xinyue Liu
  • , Yujie Feng
  • , Defeng Xing
  • , Yushi Tian*
  • *Corresponding author for this work
  • Northeast Agricultural University

Research output: Contribution to journalLetterpeer-review

Abstract

Corn straws can produce bioethanol via simultaneous saccharification and co-fermentation (SSCF). However, identifying optimal combinations of operating parameters from numerous possibilities through a cost-effective strategy to improve SSCF efficiency and yield remains challenging. The eXtreme Gradient Boost (XGB) and deep neural network (DNN) models were constructed to accurately predict ethanol yield from only five input variables, achieving >83 % accuracy. Subsequently, the XGB and the DNN models were merged with the genetic algorithm (GA) as the new optimization strategies. Experimental validation showed that the new strategy optimize the efficiency and yield of the SSCF ethanol production system quickly and accurately. Moreover, the potential optimization mechanism was investigated through the comprehensive interpretability analysis for XGB and the microbial ecology analysis. Enzyme Solution Volume (61.7 %) dominated, followed by time (12.9 %), substrate concentration (10.4 %), temperature (7.7 %), and inoculum volume (7.3 %). This efficient and accurate algorithm design strategy can significantly reduce the time required to optimize biochemical systems.

Original languageEnglish
Article number177027
JournalScience of the Total Environment
Volume955
DOIs
StatePublished - 10 Dec 2024

Keywords

  • Computation optimization
  • Corn straw
  • Ethanol fermentation
  • Model interpretability

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