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An Improved Air Quality Index Machine Learning-Based Forecasting with Multivariate Data Imputation Approach
by
Zhu, Qinqin
, Alkabbani, Hanin
, Elkamel, Ali
, Ramadan, Ashraf
in
Air pollution
/ Air pollution control
/ Air pollution measurements
/ Air quality
/ Air quality forecasting
/ Algorithms
/ ambient air quality observations
/ AQI
/ artificial neural network
/ Artificial neural networks
/ Criteria
/ Dust
/ Forecasting
/ Land degradation
/ Learning algorithms
/ Machine learning
/ Mathematical models
/ Methods
/ missForest imputation
/ Missing data
/ Multivariate analysis
/ Neural networks
/ Nitrogen dioxide
/ Outdoor air quality
/ Particulate matter
/ Pollutants
/ Pollution control
/ Predictions
/ Sulfur dioxide
2022
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An Improved Air Quality Index Machine Learning-Based Forecasting with Multivariate Data Imputation Approach
by
Zhu, Qinqin
, Alkabbani, Hanin
, Elkamel, Ali
, Ramadan, Ashraf
in
Air pollution
/ Air pollution control
/ Air pollution measurements
/ Air quality
/ Air quality forecasting
/ Algorithms
/ ambient air quality observations
/ AQI
/ artificial neural network
/ Artificial neural networks
/ Criteria
/ Dust
/ Forecasting
/ Land degradation
/ Learning algorithms
/ Machine learning
/ Mathematical models
/ Methods
/ missForest imputation
/ Missing data
/ Multivariate analysis
/ Neural networks
/ Nitrogen dioxide
/ Outdoor air quality
/ Particulate matter
/ Pollutants
/ Pollution control
/ Predictions
/ Sulfur dioxide
2022
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Do you wish to request the book?
An Improved Air Quality Index Machine Learning-Based Forecasting with Multivariate Data Imputation Approach
by
Zhu, Qinqin
, Alkabbani, Hanin
, Elkamel, Ali
, Ramadan, Ashraf
in
Air pollution
/ Air pollution control
/ Air pollution measurements
/ Air quality
/ Air quality forecasting
/ Algorithms
/ ambient air quality observations
/ AQI
/ artificial neural network
/ Artificial neural networks
/ Criteria
/ Dust
/ Forecasting
/ Land degradation
/ Learning algorithms
/ Machine learning
/ Mathematical models
/ Methods
/ missForest imputation
/ Missing data
/ Multivariate analysis
/ Neural networks
/ Nitrogen dioxide
/ Outdoor air quality
/ Particulate matter
/ Pollutants
/ Pollution control
/ Predictions
/ Sulfur dioxide
2022
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An Improved Air Quality Index Machine Learning-Based Forecasting with Multivariate Data Imputation Approach
Journal Article
An Improved Air Quality Index Machine Learning-Based Forecasting with Multivariate Data Imputation Approach
2022
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Overview
Accurate, timely air quality index (AQI) forecasting helps industries in selecting the most suitable air pollution control measures and the public in reducing harmful exposure to pollution. This article proposes a comprehensive method to forecast AQIs. Initially, the work focused on predicting hourly ambient concentrations of PM2.5 and PM10 using artificial neural networks. Once the method was developed, the work was extended to the prediction of other criteria pollutants, i.e., O3, SO2, NO2, and CO, which fed into the process of estimating AQI. The prediction of the AQI not only requires the selection of a robust forecasting model, it also heavily relies on a sequence of pre-processing steps to select predictors and handle different issues in data, including gaps. The presented method dealt with this by imputing missing entries using missForest, a machine learning-based imputation technique which employed the random forest (RF) algorithm. Unlike the usual practice of using RF at the final forecasting stage, we utilized RF at the data pre-processing stage, i.e., missing data imputation and feature selection, and we obtained promising results. The effectiveness of this imputation method was examined against a linear imputation method for the six criteria pollutants and the AQI. The proposed approach was validated against ambient air quality observations for Al-Jahra, a major city in Kuwait. Results obtained showed that models trained using missForest-imputed data could generalize AQI forecasting and with a prediction accuracy of 92.41% when tested on new unseen data, which is better than earlier findings.
Publisher
MDPI AG
Subject
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