Effluent composition prediction of a two-stage anaerobic digestion process: machine learning and stoichiometry techniques.

Journal: Environmental science and pollution research international
PMID:

Abstract

Computational self-adapting methods (Support Vector Machines, SVM) are compared with an analytical method in effluent composition prediction of a two-stage anaerobic digestion (AD) process. Experimental data for the AD of poultry manure were used. The analytical method considers the protein as the only source of ammonia production in AD after degradation. Total ammonia nitrogen (TAN), total solids (TS), chemical oxygen demand (COD), and total volatile solids (TVS) were measured in the influent and effluent of the process. The TAN concentration in the effluent was predicted, this being the most inhibiting and polluting compound in AD. Despite the limited data available, the SVM-based model outperformed the analytical method for the TAN prediction, achieving a relative average error of 15.2% against 43% for the analytical method. Moreover, SVM showed higher prediction accuracy in comparison with Artificial Neural Networks. This result reveals the future promise of SVM for prediction in non-linear and dynamic AD processes. Graphical abstract ᅟ.

Authors

  • Luz Alejo
    Departamento de Ingeniería Química, Universidad de Concepción, Víctor Lamas 1290, Casilla 160-C Correo 3, Concepción, Chile.
  • John Atkinson
    AI Empowered, Santiago, Chile. john.atkinson@uai.cl.
  • Víctor Guzmán-Fierro
    Departamento de Ingeniería Química, Universidad de Concepción, Víctor Lamas 1290, Casilla 160-C Correo 3, Concepción, Chile.
  • Marlene Roeckel
    Departamento de Ingeniería Química, Universidad de Concepción, Víctor Lamas 1290, Casilla 160-C Correo 3, Concepción, Chile. mroeckel@udec.cl.