Issue 5, 2024

Towards non-contact pollution monitoring in sewers with hyperspectral imaging

Abstract

Monitoring water quality in sewers is challenging, particularly because state-of-the-art technologies require contact with the raw wastewater. The presence of fat, oil, grease, and solids makes automated grab sampling difficult and causes sensor fouling. To overcome these limitations, non-contact methods based on light reflectance, such as hyperspectral imaging (HSI), are gaining attention. However, HSI has never been tested for raw wastewater. To assess its accuracy for measuring pollution, we developed a laboratory setup and performed targeted experiments with a combination of raw and diluted wastewater, as well as synthetic turbidity stock solutions. We measured seven pollution variables: chemical oxygen demand, turbidity, dissolved organic compounds, ammonium, total nitrogen, phosphate, and sulphates. We used automated pixel selection and partial least squares regression to retrieve pollution information from the hyperspectral images. Our results, based on 144 samples, suggest that HSI can estimate pollution levels with a precision in the range of state-of-the-art absorbance spectrophotometric methods. Additionally, we found that the combination of pixel and wavelength selection, enabled by the hyperspectral data structure, significantly influences the performance of partial least square modelling. Overall, our findings indicate that HSI is a promising technology for non-contact monitoring of water quality in raw wastewater.

Graphical abstract: Towards non-contact pollution monitoring in sewers with hyperspectral imaging

Supplementary files

Article information

Article type
Paper
Submitted
04 Jun 2023
Accepted
16 Feb 2024
First published
19 Feb 2024
This article is Open Access
Creative Commons BY license

Environ. Sci.: Water Res. Technol., 2024,10, 1160-1170

Towards non-contact pollution monitoring in sewers with hyperspectral imaging

P. Lechevallier, K. Villez, C. Felsheim and J. Rieckermann, Environ. Sci.: Water Res. Technol., 2024, 10, 1160 DOI: 10.1039/D3EW00541K

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