Predictive analysis of urban waste generation for the city of Bogotá, Colombia, through the implementation of decision trees-based machine learning, support vector machines and artificial neural networks

This study presents an analysis of three models associated with artificial intelligence as tools to forecast the generation of urban solid waste in the city of Bogotá, in order to learn about this type of waste's behavior. The analysis was carried out in such a manner that different efficient a...

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Main Authors: Johanna Karina Solano Meza, David Orjuela Yepes, Javier Rodrigo-Ilarri, Eduardo Cassiraga
Format: Article
Language:English
Published: Elsevier 2019-11-01
Series:Heliyon
Subjects:
Online Access:http://www.sciencedirect.com/science/article/pii/S2405844019364709
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spelling doaj-88907b7b32f74b45b23386f61bf59efd2020-11-25T02:14:03ZengElsevierHeliyon2405-84402019-11-01511e02810Predictive analysis of urban waste generation for the city of Bogotá, Colombia, through the implementation of decision trees-based machine learning, support vector machines and artificial neural networksJohanna Karina Solano Meza0David Orjuela Yepes1Javier Rodrigo-Ilarri2Eduardo Cassiraga3Department of Environmental Engineering, Santo Tomás University, Cra. 9 # 51-11, Bogotá, Colombia; Corresponding author.Department of Environmental Engineering, Santo Tomás University, Cra. 9 # 51-11, Bogotá, ColombiaWater and Environmental Engineering Institute (IIAMA), Polytechnic University of Valencia, Camino de Vera, s/n, 46022 Valencia, SpainWater and Environmental Engineering Institute (IIAMA), Polytechnic University of Valencia, Camino de Vera, s/n, 46022 Valencia, SpainThis study presents an analysis of three models associated with artificial intelligence as tools to forecast the generation of urban solid waste in the city of Bogotá, in order to learn about this type of waste's behavior. The analysis was carried out in such a manner that different efficient alternatives are presented. In this paper, a possible decision-making strategy was explored and implemented to plan and design technologies for the stages of collection, transport and final disposal of waste in cities, while taking into account their particular characteristics. The first model used to analyze data was the decision tree which employed machine learning as a non-parametric algorithm that models data separation limitations based on the learning decision rules on the input characteristics of the model. Support vector machines were the second method implemented as a forecasting model. The primary advantage of support vector machines is their proper adjustment to data despite its variable nature or when faced with problems with a small amount of training data. Lastly, recurrent neural network models to forecast data were implemented, which yielded positive results. Their architectural design is useful in exploring temporal correlations among the same. Distribution by collection zone in the city, socio-economic stratification, population, and quantity of solid waste generated in a determined period of time were factors considered in the analysis of this forecast. The results found that support vector machines are the most appropriate model for this type of analysis.http://www.sciencedirect.com/science/article/pii/S2405844019364709Environmental scienceWaste treatmentWater treatmentGreen engineeringEnvironmental chemical engineeringWaste
collection DOAJ
language English
format Article
sources DOAJ
author Johanna Karina Solano Meza
David Orjuela Yepes
Javier Rodrigo-Ilarri
Eduardo Cassiraga
spellingShingle Johanna Karina Solano Meza
David Orjuela Yepes
Javier Rodrigo-Ilarri
Eduardo Cassiraga
Predictive analysis of urban waste generation for the city of Bogotá, Colombia, through the implementation of decision trees-based machine learning, support vector machines and artificial neural networks
Heliyon
Environmental science
Waste treatment
Water treatment
Green engineering
Environmental chemical engineering
Waste
author_facet Johanna Karina Solano Meza
David Orjuela Yepes
Javier Rodrigo-Ilarri
Eduardo Cassiraga
author_sort Johanna Karina Solano Meza
title Predictive analysis of urban waste generation for the city of Bogotá, Colombia, through the implementation of decision trees-based machine learning, support vector machines and artificial neural networks
title_short Predictive analysis of urban waste generation for the city of Bogotá, Colombia, through the implementation of decision trees-based machine learning, support vector machines and artificial neural networks
title_full Predictive analysis of urban waste generation for the city of Bogotá, Colombia, through the implementation of decision trees-based machine learning, support vector machines and artificial neural networks
title_fullStr Predictive analysis of urban waste generation for the city of Bogotá, Colombia, through the implementation of decision trees-based machine learning, support vector machines and artificial neural networks
title_full_unstemmed Predictive analysis of urban waste generation for the city of Bogotá, Colombia, through the implementation of decision trees-based machine learning, support vector machines and artificial neural networks
title_sort predictive analysis of urban waste generation for the city of bogotá, colombia, through the implementation of decision trees-based machine learning, support vector machines and artificial neural networks
publisher Elsevier
series Heliyon
issn 2405-8440
publishDate 2019-11-01
description This study presents an analysis of three models associated with artificial intelligence as tools to forecast the generation of urban solid waste in the city of Bogotá, in order to learn about this type of waste's behavior. The analysis was carried out in such a manner that different efficient alternatives are presented. In this paper, a possible decision-making strategy was explored and implemented to plan and design technologies for the stages of collection, transport and final disposal of waste in cities, while taking into account their particular characteristics. The first model used to analyze data was the decision tree which employed machine learning as a non-parametric algorithm that models data separation limitations based on the learning decision rules on the input characteristics of the model. Support vector machines were the second method implemented as a forecasting model. The primary advantage of support vector machines is their proper adjustment to data despite its variable nature or when faced with problems with a small amount of training data. Lastly, recurrent neural network models to forecast data were implemented, which yielded positive results. Their architectural design is useful in exploring temporal correlations among the same. Distribution by collection zone in the city, socio-economic stratification, population, and quantity of solid waste generated in a determined period of time were factors considered in the analysis of this forecast. The results found that support vector machines are the most appropriate model for this type of analysis.
topic Environmental science
Waste treatment
Water treatment
Green engineering
Environmental chemical engineering
Waste
url http://www.sciencedirect.com/science/article/pii/S2405844019364709
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