4.6 Review

Artificial neural networks for water quality soft-sensing in wastewater treatment: a review

Journal

ARTIFICIAL INTELLIGENCE REVIEW
Volume 55, Issue 1, Pages 565-587

Publisher

SPRINGER
DOI: 10.1007/s10462-021-10038-8

Keywords

Soft-sensing model; Wastewater treatment process (WWTP); Artificial neural network; Deep belief network; Machine learning; Soft-sensing example

Funding

  1. National Natural Science Foundation of China [62003185, 62073182, 61890930, 61890935]
  2. National Science and Technology Major Project [2018ZX07111005]

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This paper presents a comprehensive survey on water quality soft-sensing in wastewater treatment processes using artificial neural networks (ANNs). It covers problem formulation, common models, practical examples, and performance discussions. Various soft-sensing models are compared in terms of accuracy, efficiency, and complexity, with factors affecting the accuracy discussed as well. Challenges in soft-sensing models of WWTP are also pointed out for future exploration.
This paper aims to present a comprehensive survey on water quality soft-sensing of a wastewater treatment process (WWTP) based on artificial neural networks (ANNs). We mainly present problem formulation of water quality soft-sensing, common soft-sensing models, practical soft-sensing examples and discussion on the performance of soft-sensing models. In details, problem formulation includes characteristic analysis and modeling principle of water quality soft-sensing. The common soft-sensing models mainly include a back-propagation neural network, radial basis function neural network, fuzzy neural network (FNN), echo state network (ESN), growing deep belief network and deep belief network with event-triggered learning (DBN-EL). They are compared in terms of accuracy, efficiency and computational complexity with partial-least-square-regression DBN (PLSR-DBN), growing ESN, sparse deep belief FNN, self-organizing DBN, wavelet-ANN and self-organizing cascade neural network (SCNN). In addition, this paper generally discusses and explains what factors affect the accuracy of the ANNs-based soft-sensing models. Finally, this paper points out several challenges in soft-sensing models of WWTP, which may be helpful for researchers and practitioner to explore the future solutions for their particular applications.

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