4.7 Article

Characterization of coagulant-induced ultrafiltration membrane fouling by multi-spectral fusion: DOM properties and model prediction based on machine learning

期刊

DESALINATION
卷 531, 期 -, 页码 -

出版社

ELSEVIER
DOI: 10.1016/j.desal.2022.115711

关键词

Membrane fouling; Machine learning; Spectroscopy; Statistical analysis; Sensitivity analysis

资金

  1. National Natural Science Foundation of China [51978464, 51638011]

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This study analyzed the properties of dissolved organic matter solutions with the addition of coagulants using UV-vis, synchronous fluorescence, and excitation-emission matrix spectroscopy. The results showed that the size of aggregates increased with the addition of coagulant and the binding sequence of coagulant to dissolved organic matter varied. The unified membrane fouling index was negatively correlated with coagulant concentrations, and slope ratio and specific fluorescence intensities had the most significant correlation to the fouling index.
This study used the ultraviolet-visible (UV-vis), synchronous fluorescence, and excitation-emission matrix (EEM) spectroscopy coupled with zeta potential and particle size to explore the dissolved organic matter (DOM) solutions properties with the addition of two kinds of coagulants, including aluminum chloride and ferric chloride, in humic solutions and surface water. The results of zeta potential and particle size showed the size of aggregates became larger with the addition of coagulant. The binding sequence of coagulant to DOM was followed from aromatic amino acids to fulvic-like and humic-likes fractions. The results of the unified membrane fouling index (UMFI) were showed negatively correlated with the concentrations of coagulant due to the cake layers formed by aggregates being looser and more permeable. Among all the 12 spectral parameters, slope radio (S-R) and specific fluorescence intensities (SFI) had the most significant correlation to UMFI. The multi-spectral fusion for predicting UMFI was established via multiple linear regressions and the backpropagation neural network (BPNN) by using the parameters with both SR and SFI with good accuracy and robustness. Sensitivity analyses results showed that SFI was more sensitive than SR in solutions with high protein-like substances, while SR was more sensitive than SFI with high humic-like substances.

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