Predicting pollutant removal in constructed wetlands using artificial neural networks (ANNs)
Growth in urban population, urbanisation, and economic development has increased the demand for water, especially in water-scarce regions. Therefore, sustainable approaches to water management are needed to cope with the effects of the urbanisation on the water environment. This study aimed to desig...
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doaj-1ea52aff18bf41f3b3736518379fe32b2020-11-25T03:16:37ZengElsevierWater Science and Engineering1674-23702020-03-011311423Predicting pollutant removal in constructed wetlands using artificial neural networks (ANNs)Christopher Kiiza0Shun-qi Pan1Bettina Bockelmann-Evans2Akintunde Babatunde3Hydro-environmental Research Centre, School of Engineering, Cardiff University, The Parade, Cardiff CF24 3AA, UKHydro-environmental Research Centre, School of Engineering, Cardiff University, The Parade, Cardiff CF24 3AA, UK; Corresponding author.Hydro-environmental Research Centre, School of Engineering, Cardiff University, The Parade, Cardiff CF24 3AA, UKHydro-environmental Research Centre, School of Engineering, Cardiff University, The Parade, Cardiff CF24 3AA, UK; School of Civil Engineering, University of Leeds, Leeds LS2 9JT, UKGrowth in urban population, urbanisation, and economic development has increased the demand for water, especially in water-scarce regions. Therefore, sustainable approaches to water management are needed to cope with the effects of the urbanisation on the water environment. This study aimed to design novel configurations of tidal-flow vertical subsurface flow constructed wetlands (VFCWs) for treating urban stormwater. A series of laboratory experiments were conducted with semi-synthetic influent stormwater to examine the effects of the design and operation variables on the performance of the VFCWs and to identify optimal design and operational strategies, as well as maintenance requirements. The results show that the VFCWs can significantly reduce pollutants in urban stormwater, and that pollutant removal was related to specific VFCW designs. Models based on the artificial neural network (ANN) method were built using inputs derived from data exploratory techniques, such as analysis of variance (ANOVA) and principal component analysis (PCA). It was found that PCA reduced the dimensionality of input variables obtained from different experimental design conditions. The results show a satisfactory generalisation for predicting nitrogen and phosphorus removal with fewer variable inputs, indicating that monitoring costs and time can be reduced.http://www.sciencedirect.com/science/article/pii/S1674237020300193Constructed wetlandsUrban stormwaterPollutant removalArtificial neural networks (ANNs)Principal component analysis (PCA) |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Christopher Kiiza Shun-qi Pan Bettina Bockelmann-Evans Akintunde Babatunde |
spellingShingle |
Christopher Kiiza Shun-qi Pan Bettina Bockelmann-Evans Akintunde Babatunde Predicting pollutant removal in constructed wetlands using artificial neural networks (ANNs) Water Science and Engineering Constructed wetlands Urban stormwater Pollutant removal Artificial neural networks (ANNs) Principal component analysis (PCA) |
author_facet |
Christopher Kiiza Shun-qi Pan Bettina Bockelmann-Evans Akintunde Babatunde |
author_sort |
Christopher Kiiza |
title |
Predicting pollutant removal in constructed wetlands using artificial neural networks (ANNs) |
title_short |
Predicting pollutant removal in constructed wetlands using artificial neural networks (ANNs) |
title_full |
Predicting pollutant removal in constructed wetlands using artificial neural networks (ANNs) |
title_fullStr |
Predicting pollutant removal in constructed wetlands using artificial neural networks (ANNs) |
title_full_unstemmed |
Predicting pollutant removal in constructed wetlands using artificial neural networks (ANNs) |
title_sort |
predicting pollutant removal in constructed wetlands using artificial neural networks (anns) |
publisher |
Elsevier |
series |
Water Science and Engineering |
issn |
1674-2370 |
publishDate |
2020-03-01 |
description |
Growth in urban population, urbanisation, and economic development has increased the demand for water, especially in water-scarce regions. Therefore, sustainable approaches to water management are needed to cope with the effects of the urbanisation on the water environment. This study aimed to design novel configurations of tidal-flow vertical subsurface flow constructed wetlands (VFCWs) for treating urban stormwater. A series of laboratory experiments were conducted with semi-synthetic influent stormwater to examine the effects of the design and operation variables on the performance of the VFCWs and to identify optimal design and operational strategies, as well as maintenance requirements. The results show that the VFCWs can significantly reduce pollutants in urban stormwater, and that pollutant removal was related to specific VFCW designs. Models based on the artificial neural network (ANN) method were built using inputs derived from data exploratory techniques, such as analysis of variance (ANOVA) and principal component analysis (PCA). It was found that PCA reduced the dimensionality of input variables obtained from different experimental design conditions. The results show a satisfactory generalisation for predicting nitrogen and phosphorus removal with fewer variable inputs, indicating that monitoring costs and time can be reduced. |
topic |
Constructed wetlands Urban stormwater Pollutant removal Artificial neural networks (ANNs) Principal component analysis (PCA) |
url |
http://www.sciencedirect.com/science/article/pii/S1674237020300193 |
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