Deep learning in wastewater treatment: a critical review.

Journal: Water research
Published Date:

Abstract

Modeling wastewater processes supports tasks such as process prediction, soft sensing, data analysis and computer assisted design of wastewater systems. Wastewater treatment processes are large, complex processes, with multiple controlling mechanisms, a high degree of disturbance variability and non-linear (generally stable) behavior with multiple internal recycle loops. Semi-mechanistic biochemical models currently dominate research and application, with data-driven deep learning models emerging as an alternative and supplementary approach. But these modeling approaches have grown in separate communities of research and practice, and so there is limited appreciation of the strengths, weaknesses, contrasts and similarities between the methods. This review addresses that gap by providing a detailed guide to deep learning methods and their application to wastewater process modeling. The review is aimed at wastewater modeling experts who are familiar with established mechanistic modeling approach, and are curious about the opportunities and challenges afforded by deep learning methods. We conclude with a discussion and needs analysis on the value of different ways of modeling wastewater processes and open research problems.

Authors

  • Maira Alvi
    Department of Computer Science & Software Engineering, The University of Western Australia, Australia. Electronic address: maira.alvi@research.uwa.edu.au.
  • Damien Batstone
    Australian Centre for Water and Environmental Biotechnology, University of Queensland, Brisbane, Australia.
  • Christian Kazadi Mbamba
    Australian Centre for Water and Environmental Biotechnology, University of Queensland, Brisbane, Australia.
  • Philip Keymer
    Australian Centre for Water and Environmental Biotechnology, University of Queensland, Brisbane, Australia.
  • Tim French
    Department of Computer Science & Software Engineering, The University of Western Australia, Australia.
  • Andrew Ward
    From the Department of Electrical Engineering, Stanford University, Stanford, California.
  • Jason Dwyer
    Urban Utilities, Brisbane, Australia.
  • Rachel Cardell-Oliver
    Department of Computer Science & Software Engineering, The University of Western Australia, Australia.