Machine learning-driven modeling framework for steam co-gasification applications

Khan Jadoon, Usman ORCID: https://orcid.org/0000-0002-9769-8382, Díaz Moreno, Ismael ORCID: https://orcid.org/0000-0001-6745-0960 and Rodríguez Hernández, Manuel ORCID: https://orcid.org/0000-0003-0929-5477 (2025). Machine learning-driven modeling framework for steam co-gasification applications. "Fuel Processing Technology", v. 278 ; p. 108340. ISSN 03783820. https://doi.org/10.1016/j.fuproc.2025.108340.

Descripción

Título: Machine learning-driven modeling framework for steam co-gasification applications
Autor/es:
Tipo de Documento: Artículo
Título de Revista/Publicación: Fuel Processing Technology
Fecha: 19 Septiembre 2025
ISSN: 03783820
Volumen: 278
Materias:
ODS:
Palabras Clave Informales: Co-gasification; First-principle modeling; Machine learning; Syngas prediction; Sensitivity analysis; Explainable AI
Escuela: E.T.S.I. Industriales (UPM)
Departamento: Ingeniería Química Industrial y del Medio Ambiente
Licencias Creative Commons: Reconocimiento - Sin obra derivada - No comercial

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Resumen

Steam co-gasification of biomass and plastic waste is a promising route for syngas production and waste valorization. However, accurately predicting syngas composition remains challenging due to inherent complexity and nonlinearity of the process. This study presents a comprehensive comparative analysis between conventional process simulators-based models (Aspen Plus), namely the thermodynamic equilibrium (TEM), restricted thermodynamic (RTM), and kinetic (KM) modeling approaches, and machine learning (ML) models for the prediction of the syngas composition. Using 208 experimental data points compiled from 20 published studies covering various feedstocks and gasification conditions in bubbling fluidized bed gasifiers (BFBG), the performance of the models was evaluated after extensive data preprocessing. Among several ML algorithms evaluated, the neural network (NN) delivered the lowest average root mean square error in syngas mol fraction predictions (0.0174), outperforming RTM (0.0966), KM (0.1378), and TEM (0.1470). To explore input–output relationships beyond interpolation, a conditional generative adversarial network (cGAN) generated synthetic data, which served as the basis for sensitivity and interpretability analyses. The NN, acting as a surrogate model, was paired with SHapley Additive exPlanations (SHAP) and Partial Dependence Plots (PDP) to quantify the effects and nonlinear interactions of key features on syngas yields providing actionable insights for process optimization.

Proyectos asociados

Tipo
Código
Acrónimo
Responsable
Título
Horizonte 2020
945139
Sin especificar
Sin especificar
Marie Skłodowska-Curie program
Comunidad de Madrid
TEC-2024/BIO-27
AgroSUSTEC-CM
Sin especificar
Sin especificar

Más información

ID de Registro: 91073
Identificador DC: https://oa.upm.es/91073/
Identificador OAI: oai:oa.upm.es:91073
URL Portal Científico: https://portalcientifico.upm.es/es/ipublic/item/10387809
Identificador DOI: 10.1016/j.fuproc.2025.108340
URL Oficial: https://www.sciencedirect.com/science/article/pii/...
Depositado por: iMarina Portal Científico
Depositado el: 25 Sep 2025 06:39
Ultima Modificación: 25 Sep 2025 06:39