Descripción
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Abstract: Ozone is one of the worst harmful pollutants nowadays which affects the public health, so it is necessary to predict ozone level accurately in order to prevent the public from exposing to the pollution when it exceeds the limits. This study aims to predict daily maximum ozone concentrations in the metropolitan area of Mexico City by using four individual artificial intelligence techniques: multiple linear regression, neural networks, support vector machine, random forest, and two ensemble techniques: linear ensemble and greedy ensemble. Results from the comparison among different artificial intelligence techniques clearly showed that ensemble models, especially linear ensemble model, outperformed the individual artificial intelligence techniques. Moreover, it is concluded that the performance of models is influenced by the time ahead factor for the predictors. The errors of prediction models related to the data of current day are only around 50% of ones corresponding to the data of the previous day. In addition, in order to select the input variables properly, analysis of variance (ANOVA) based on multiple linear regression models was performed. Best model prediction capability also depends on the ranges of input variables. | |
Internacional
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Si |
JCR del ISI
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No |
Título de la revista
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International Journal of Information And Decision Sciences |
ISSN
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1756-7017 |
Factor de impacto JCR
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Información de impacto
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Volumen
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7 |
DOI
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http://doi.org/10.1504/IJIDS.2015.068756 |
Número de revista
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2 |
Desde la página
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115 |
Hasta la página
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139 |
Mes
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SIN MES |
Ranking
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Scopus (Elsevier) Advanced Technologies with Aerospace (CSA) ANTE: Abstracts in New Technologies & Engineering (CSA) DBLP Computer Science Bibliography Engineering Materials Abstracts (CSA) Expanded Academic ASAP (Gale) Google Scholar Inspec (Institution of Engineering and Technolo |