Machine learning-aided inverse design for biogas upgrading through biological CO2 conversion

  • Jiasi Sun
  • , Yue Rao
  • , Zhen He

Research output: Contribution to journalArticlepeer-review

Abstract

The biogas upgrading process through bioconversion of CO2 to CH4 by hydrogenotrophic methanogens is an attractive strategy for energy decarbonation. Many studies have optimized operational parameters to improve key performance indicators such as CH4% and H2 utilization efficiency. However, inconsistent laboratory conditions make it challenging to compare results. Existing models for analyzing operating conditions can only assess the impact of individual conditions and lack the ability to simultaneously optimize multiple conditions. To address this, two XGBoost models were built with R2 of 0.779 and 0.903 with data collected from literatures and were embedded into multi-objective partitive swarm optimization algorithm to optimal operating conditions. Predictions were compared with experimental validations under optimized conditions, revealing an 8.50% and 2.95% relative error in CH4% and H2 conversion rate, respectively. This approach streamlines biogas upgrading processes, offering a data-driven solution to enhance efficiency and consistency in the pursuit of sustainable methane production.

Original languageEnglish
Article number130549
JournalBioresource Technology
Volume399
DOIs
StatePublished - May 2024

Keywords

  • Biogas upgrading
  • Inverse design
  • Machine learning
  • Multiple objective optimization

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