A novel camera-based sensor for real-time wastewater quality monitoring

Author:

Antonini Giorgio1ORCID,Pearce Joshua M.2,Berruti Franco3,Santoro Domenico4

Affiliation:

1. a Department of Electrical & Computer Engineering, Western University, London, ON N6A 5B9, Canada

2. b Ivey Business School, Western University, London, ON N6G 0N1, Canada

3. c Institute for Chemicals and Fuels from Alternative Resources, Western University, London, ON N6A 5B9, Canada

4. d Department of Chemical & Biochemical Engineering, Western University, London, ON N6A 5B9, Canada

Abstract

ABSTRACT Recent advancements have significantly improved turbidity and absorbance measurement techniques, crucial for municipal and industrial wastewater quality monitoring. This experimental system utilizes image analysis and machine learning on monochrome-camera images of real secondary wastewater effluent samples, irradiated with six LEDs, to classify turbidity and predict absorbance in the visible range. It focuses on low turbidity measurements (0–15 nephelometric turbidity units [NTUs]), the hardest challenge for conventional turbidity sensors. Specifically, this camera-based technique was able to classify within a 2 NTU class, 96 turbidity samples collected from a real wastewater treatment plant with precision and accuracy of over 96%. Additionally, it effectively predicted turbidity and absorbance with a neural network, achieving R-squared coefficients of 0.76 and 0.72, respectively. This innovative monitoring system, deployable in several locations of a wastewater treatment plant, not only addresses the limitations of the existing methods for the low turbidity range but also brings the potential for plant-wide process monitoring. Further testing is in progress to validate the proposed approach in other wastewater applications, such as combined sewer overflow monitoring and waste-activated sludge upset detection where more extreme and rapid changes are expected to occur.

Funder

John and Melinda Thompson Endowment Fund in Vision Neurosciences

Publisher

IWA Publishing

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