Integrating machine learning for multi-objective optimization of biomass conversion to hydrogen

Yinchen Li, Peng Jiang, Lin Li, Tuo Ji, Liwen Mu, Xiaohua Lu, Jiahua Zhu

Research output: Contribution to journalArticlepeer-review

Abstract

The biomass-to-H2 (BTH) process is considered an important source of green H2, but the involvement of various biomass species and complex operating parameters poses significant challenges in practical operation and optimization. Herein, Aspen Plus was employed for data augmentation along with machine learning (ML) models to establish a hybrid ML model, which achieved an average R2 greater than 0.999 and an average RMSE of 0.322 in predicting BTH outputs. Furthermore, integrating the hybrid ML model with the economic-environmental evaluation program enabled multi-objective optimization of the BTH process. Results revealed that the lowest cost achieved was 1.13 USD/kgH2 with corresponding carbon emissions of 4.12–4.63 kgCO2e/kgH2. However, there was a tradeoff between cost and carbon emissions. By controlling the H2 yield within the G3 range (200–300 kg/h), a low cost of 1.32 USD/kgH2 and low carbon emissions of −0.23 kgCO2e/kgH2 were simultaneously achieved. Overall, this work proposed a new strategy for multi-objective optimization in H2 production, coupling the hybrid ML model-driven accuracy prediction with an interactive platform.

Original languageEnglish
Article number144948
JournalJournal of Cleaner Production
Volume494
DOIs
StatePublished - 25 Feb 2025

Keywords

  • Biomass to H process
  • Calcium looping reforming
  • Machine learning
  • Mechanism-guided modelling
  • Multi-objective optimization

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