A Comparison of Linear and Non-linear Machine Learning Techniques (PCA and SOM) for Characterizing Urban Nutrient Runoff

Urban stormwater runoff represents a significant challenge for the practical assessment of diffuse pollution sources on receiving water bodies. Given the high dimensionality of the problem, the main goal of this study was the comparison of linear and non-linear machine learning (ML) methods to chara...

Full description

Bibliographic Details
Main Authors: Angela Gorgoglione, Alberto Castro, Vito Iacobellis, Andrea Gioia
Format: Article
Language:English
Published: MDPI AG 2021-02-01
Series:Sustainability
Subjects:
PCA
SOM
Online Access:https://www.mdpi.com/2071-1050/13/4/2054
id doaj-72866bf4e3334c4682d9bbcd9e0491cf
record_format Article
spelling doaj-72866bf4e3334c4682d9bbcd9e0491cf2021-02-15T00:02:13ZengMDPI AGSustainability2071-10502021-02-01132054205410.3390/su13042054A Comparison of Linear and Non-linear Machine Learning Techniques (PCA and SOM) for Characterizing Urban Nutrient RunoffAngela Gorgoglione0Alberto Castro1Vito Iacobellis2Andrea Gioia3Department of Fluid Mechanics and Environmental Engineering, School of Engineering, Universidad de la República, Montevideo 11300, UruguayDepartment of Computer Science, School of Engineering, Universidad de la República, Montevideo 11300, UruguayDepartment of Civil, Environmental, Land, Building Engineering and Chemistry, Politecnico di Bari, 70126 Bari, ItalyDepartment of Civil, Environmental, Land, Building Engineering and Chemistry, Politecnico di Bari, 70126 Bari, ItalyUrban stormwater runoff represents a significant challenge for the practical assessment of diffuse pollution sources on receiving water bodies. Given the high dimensionality of the problem, the main goal of this study was the comparison of linear and non-linear machine learning (ML) methods to characterize urban nutrient runoff from impervious surfaces. In particular, the principal component analysis (PCA) for the linear technique and the self-organizing map (SOM) for the non-linear technique were chosen and compared considering the high number of successful applications in the water quality field. To strengthen this comparison, these techniques were supported by well-known linear and non-linear methods. Those techniques were applied to a complete dataset with precipitation, flow rate, and water quality (sediments and nutrients) records of 577 events gathered for a watershed located in Southern Italy. According to the results, both linear and non-linear techniques can represent build-up and wash-off, the two main processes that characterize urban nutrient runoff. In particular, non-linear methods are able to capture and represent better the rainfall-runoff process and the transport of dissolved nutrients in urban runoff (dilution process). However, their computational time is higher than the linear technique (0.0054 s vs. 15.24 s, for linear and non-linear, respectively, in our study). The outcomes of this study provide significant insights into the application of ML methods for the water quality field.https://www.mdpi.com/2071-1050/13/4/2054nutrientsurban runoffPCASOMmachine learning.
collection DOAJ
language English
format Article
sources DOAJ
author Angela Gorgoglione
Alberto Castro
Vito Iacobellis
Andrea Gioia
spellingShingle Angela Gorgoglione
Alberto Castro
Vito Iacobellis
Andrea Gioia
A Comparison of Linear and Non-linear Machine Learning Techniques (PCA and SOM) for Characterizing Urban Nutrient Runoff
Sustainability
nutrients
urban runoff
PCA
SOM
machine learning.
author_facet Angela Gorgoglione
Alberto Castro
Vito Iacobellis
Andrea Gioia
author_sort Angela Gorgoglione
title A Comparison of Linear and Non-linear Machine Learning Techniques (PCA and SOM) for Characterizing Urban Nutrient Runoff
title_short A Comparison of Linear and Non-linear Machine Learning Techniques (PCA and SOM) for Characterizing Urban Nutrient Runoff
title_full A Comparison of Linear and Non-linear Machine Learning Techniques (PCA and SOM) for Characterizing Urban Nutrient Runoff
title_fullStr A Comparison of Linear and Non-linear Machine Learning Techniques (PCA and SOM) for Characterizing Urban Nutrient Runoff
title_full_unstemmed A Comparison of Linear and Non-linear Machine Learning Techniques (PCA and SOM) for Characterizing Urban Nutrient Runoff
title_sort comparison of linear and non-linear machine learning techniques (pca and som) for characterizing urban nutrient runoff
publisher MDPI AG
series Sustainability
issn 2071-1050
publishDate 2021-02-01
description Urban stormwater runoff represents a significant challenge for the practical assessment of diffuse pollution sources on receiving water bodies. Given the high dimensionality of the problem, the main goal of this study was the comparison of linear and non-linear machine learning (ML) methods to characterize urban nutrient runoff from impervious surfaces. In particular, the principal component analysis (PCA) for the linear technique and the self-organizing map (SOM) for the non-linear technique were chosen and compared considering the high number of successful applications in the water quality field. To strengthen this comparison, these techniques were supported by well-known linear and non-linear methods. Those techniques were applied to a complete dataset with precipitation, flow rate, and water quality (sediments and nutrients) records of 577 events gathered for a watershed located in Southern Italy. According to the results, both linear and non-linear techniques can represent build-up and wash-off, the two main processes that characterize urban nutrient runoff. In particular, non-linear methods are able to capture and represent better the rainfall-runoff process and the transport of dissolved nutrients in urban runoff (dilution process). However, their computational time is higher than the linear technique (0.0054 s vs. 15.24 s, for linear and non-linear, respectively, in our study). The outcomes of this study provide significant insights into the application of ML methods for the water quality field.
topic nutrients
urban runoff
PCA
SOM
machine learning.
url https://www.mdpi.com/2071-1050/13/4/2054
work_keys_str_mv AT angelagorgoglione acomparisonoflinearandnonlinearmachinelearningtechniquespcaandsomforcharacterizingurbannutrientrunoff
AT albertocastro acomparisonoflinearandnonlinearmachinelearningtechniquespcaandsomforcharacterizingurbannutrientrunoff
AT vitoiacobellis acomparisonoflinearandnonlinearmachinelearningtechniquespcaandsomforcharacterizingurbannutrientrunoff
AT andreagioia acomparisonoflinearandnonlinearmachinelearningtechniquespcaandsomforcharacterizingurbannutrientrunoff
AT angelagorgoglione comparisonoflinearandnonlinearmachinelearningtechniquespcaandsomforcharacterizingurbannutrientrunoff
AT albertocastro comparisonoflinearandnonlinearmachinelearningtechniquespcaandsomforcharacterizingurbannutrientrunoff
AT vitoiacobellis comparisonoflinearandnonlinearmachinelearningtechniquespcaandsomforcharacterizingurbannutrientrunoff
AT andreagioia comparisonoflinearandnonlinearmachinelearningtechniquespcaandsomforcharacterizingurbannutrientrunoff
_version_ 1724269402522648576