Abstract

On-site wastewater treatment plants (OSTs) are usually unattended, so failures often remain undetected and lead to prolonged periods of reduced performance. To stabilize the performance of unattended plants, soft sensors could expose faults and failures to the operator. In a previous study, we developed soft sensors and showed that soft sensors with data from unmaintained physical sensors can be as accurate as soft sensors with data from maintained ones. The monitored variables were pH and dissolved oxygen (DO), and soft sensors were used to predict nitrification performance. In the present study, we use synthetic data and monitor three plants to test these soft sensors. We find that a long solids retention time and a moderate aeration rate improve the pH soft-sensor accuracy and that the aeration regime is the main operational parameter affecting the accuracy of the DO soft sensor. We demonstrate that integrated design of monitoring and control is necessary to achieve robustness when extrapolating from one OST to another in the absence of plant-specific fine-tuning. Additionally, we provide a unique labeled dataset for further feature and data-driven soft-sensor development. Our benchmarking results indicate that it is feasible to monitor OSTs with unmaintained sensors and without plant-specific tuning of the developed soft sensors. This is expected to drastically reduce monitoring costs for OST-based sanitation systems.

Highlights

  • Failing wastewater treatment systems can negatively affect the environment and human health, with potentially dire consequences

  • In most OECD countries, such reliability is attained with sewers discharging to a central permanently staffed wastewater treatment plant (WWTP), and unstaffed on-site wastewater treatment plants (OSTs) are only constructed if sewers are not feasible

  • We provide a unique dataset from the monitoring of these three OSTs, including highresolution (10 seconds) online pH and dissolved oxygen (DO) measurements paired with inflow and effluent concentration measurements which can be used as labels for the online signals

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Summary

Introduction

Failing wastewater treatment systems can negatively affect the environment and human health, with potentially dire consequences. Wastewater treatment authorities are under pressure to provide a reliable service. OST technologies are unfavorable today due to a lack of methods for effective plant performance monitoring. Despite the importance of quantifiable treatment performance,[1,2,3] the authors of this article know of only two published long-term studies of online monitoring of OSTs. Abegglen et al monitored a membrane biofilm reactor of a 4 populationequivalent (PE) household for 38 months looking at biological phosphorus removal[4] and Straub monitored several on-site wastewater treatment plants with a SAC254 sensor.[5] This lack of attention has resulted in OSTs being seen as a stopgap solution.[6]

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