Javascript must be enabled to continue!
Combining multi-sensor data and machine learning for improved wastewater contamination detection in stormwater systems
View through CrossRef
Stormwater drainage generally flows untreated into receiving waters, such as rivers, groundwater, and the sea. Stormwater networks can serve as pathways for contamination to enter receiving waters. Misconnections, illicit connections and discharges, overflows, and leaks from damaged sewers are the primary causes of such contamination. These issues not only degrade water quality, posing public health and environmental risks, but also create a range of expensive operational challenges for water and wastewater companies.Detecting wastewater contamination and tracing its entry points into stormwater systems remains a significant challenge predominantly due to various potential sources of incoming wastewater, dilution and dispersion of contaminants by tributary stormwater flows, and significant differences in consistency, regularity, and flow rate of inflows.We conducted an investigation on an urban stormwater pipeline in the UK suspected of receiving wastewater from multiple misconnections. The aim of the investigation was to determine whether the stormwater system was being impacted so that the statutory undertaker could address the contamination issues and improve the quality of the receiving water environment. The source of the misconnections was uncertain prior to the investigation but it was suspected that they may have been inputs from domestic households, small to medium-sized businesses, or both. The study employed a comprehensive approach combining water sampling for microbiological indicators (total coliforms and E. coli) and an array of chemical analyses, including trace elements, organics, nutrients, petroleum hydrocarbons, and volatile and semi-volatile organic compounds. The collection of grab samples was complemented by the use of a Proteus multi-sensor sonde (Proteus Instruments, UK), which measured parameters such as tryptophan-like fluorescence (TLF), chromophoric / fluorescent dissolved organic matter (CDOM/fDOM), electrical conductivity, pH, ORP, turbidity, temperature, ammonium (NH4), and dissolved oxygen (DO). Moreover, data collected with the multi-sensor sonde was used to model microbial parameter concentrations over a period of approximately three weeks. Two modelling approaches were tested: one following the methodology recommended by Proteus Instruments, and another employing the machine learning Random Forest method. The latter approach offers potential advantages in addressing challenges commonly associated with fluorescence-based sensors. The findings demonstrate the potential for enhanced detection of wastewater misconnections, providing a more efficient and accurate method for identifying sources of contamination within stormwater systems.
Title: Combining multi-sensor data and machine learning for improved wastewater contamination detection in stormwater systems
Description:
Stormwater drainage generally flows untreated into receiving waters, such as rivers, groundwater, and the sea.
Stormwater networks can serve as pathways for contamination to enter receiving waters.
Misconnections, illicit connections and discharges, overflows, and leaks from damaged sewers are the primary causes of such contamination.
These issues not only degrade water quality, posing public health and environmental risks, but also create a range of expensive operational challenges for water and wastewater companies.
Detecting wastewater contamination and tracing its entry points into stormwater systems remains a significant challenge predominantly due to various potential sources of incoming wastewater, dilution and dispersion of contaminants by tributary stormwater flows, and significant differences in consistency, regularity, and flow rate of inflows.
We conducted an investigation on an urban stormwater pipeline in the UK suspected of receiving wastewater from multiple misconnections.
The aim of the investigation was to determine whether the stormwater system was being impacted so that the statutory undertaker could address the contamination issues and improve the quality of the receiving water environment.
The source of the misconnections was uncertain prior to the investigation but it was suspected that they may have been inputs from domestic households, small to medium-sized businesses, or both.
The study employed a comprehensive approach combining water sampling for microbiological indicators (total coliforms and E.
coli) and an array of chemical analyses, including trace elements, organics, nutrients, petroleum hydrocarbons, and volatile and semi-volatile organic compounds.
The collection of grab samples was complemented by the use of a Proteus multi-sensor sonde (Proteus Instruments, UK), which measured parameters such as tryptophan-like fluorescence (TLF), chromophoric / fluorescent dissolved organic matter (CDOM/fDOM), electrical conductivity, pH, ORP, turbidity, temperature, ammonium (NH4), and dissolved oxygen (DO).
Moreover, data collected with the multi-sensor sonde was used to model microbial parameter concentrations over a period of approximately three weeks.
Two modelling approaches were tested: one following the methodology recommended by Proteus Instruments, and another employing the machine learning Random Forest method.
The latter approach offers potential advantages in addressing challenges commonly associated with fluorescence-based sensors.
The findings demonstrate the potential for enhanced detection of wastewater misconnections, providing a more efficient and accurate method for identifying sources of contamination within stormwater systems.
Related Results
Dynamic stochastic modeling for inertial sensors
Dynamic stochastic modeling for inertial sensors
Es ampliamente conocido que los modelos de error para sensores inerciales tienen dos componentes: El primero es un componente determinista que normalmente es calibrado por el fabri...
Application of a microbial and pathogen source tracking toolbox to identify infrastructure problems in stormwater drainage networks: a case study
Application of a microbial and pathogen source tracking toolbox to identify infrastructure problems in stormwater drainage networks: a case study
ABSTRACT
Water scarcity and increasing urbanization are forcing municipalities to consider alternative water sources, such as sto...
Echinococcus granulosus in Environmental Samples: A Cross-Sectional Molecular Study
Echinococcus granulosus in Environmental Samples: A Cross-Sectional Molecular Study
Abstract
Introduction
Echinococcosis, caused by tapeworms of the Echinococcus genus, remains a significant zoonotic disease globally. The disease is particularly prevalent in areas...
Implementation of Faulty Sensor Detection Mechanism using Data Correlation of Multivariate Sensor Readings in Smart Agriculture
Implementation of Faulty Sensor Detection Mechanism using Data Correlation of Multivariate Sensor Readings in Smart Agriculture
Through sensor networks, agriculture can be connected to the IoT, which allows us to create connections among agronomists, farmers, and crops regardless of their geographical diffe...
Green Street: Landscape Design Approach to Street Stormwater Management
Green Street: Landscape Design Approach to Street Stormwater Management
Stormwater is a resource, but the traditional stormwater management practices treat it as a waste and cause many problems. Green Street is a new method to manage the street stormwa...
Advanced frameworks for fraud detection leveraging quantum machine learning and data science in fintech ecosystems
Advanced frameworks for fraud detection leveraging quantum machine learning and data science in fintech ecosystems
The rapid expansion of the fintech sector has brought with it an increasing demand for robust and sophisticated fraud detection systems capable of managing large volumes of financi...
Wastewater-based surveillance for tracing the circulation of Dengue and Chikungunya viruses
Wastewater-based surveillance for tracing the circulation of Dengue and Chikungunya viruses
SummaryBackgroundArboviral diseases, transmitted by infected arthropods, pose significant economic and societal threats. Their global distribution and prevalence have increased in ...
Assessment on the Effectiveness of Urban Stormwater Management
Assessment on the Effectiveness of Urban Stormwater Management
Stormwater management is a key urban issue in the world, in line with the global issues of urban sprawl and climate change. It is urgent to investigate the effectiveness in managin...

