Hybrid deep learning model for ozone concentration prediction: Comprehensive evaluation and comparison with various machine and deep learning algorithms

To accurately predict tropospheric ozone concentration(O-3), it is needed to investigate the variety of artificial intelligence techniques' performance, such as machine learning, deep learning and hybrid models. This research aims to effectively predict the hourly ozone trend via fewer input va...

Full description

Saved in:
Bibliographic Details
Main Authors: Yafouz, Ayman, Ahmed, Ali Najah, Zaini, Nur'atiah, Sherif, Mohsen, Sefelnasr, Ahmed, El-Shafie, Ahmed
Format: Article
Published: Taylor & Francis 2021
Subjects:
Online Access:http://eprints.um.edu.my/28354/
Tags: Add Tag
No Tags, Be the first to tag this record!
id my.um.eprints.28354
record_format eprints
spelling my.um.eprints.283542022-07-31T08:41:31Z http://eprints.um.edu.my/28354/ Hybrid deep learning model for ozone concentration prediction: Comprehensive evaluation and comparison with various machine and deep learning algorithms Yafouz, Ayman Ahmed, Ali Najah Zaini, Nur'atiah Sherif, Mohsen Sefelnasr, Ahmed El-Shafie, Ahmed TA Engineering (General). Civil engineering (General) To accurately predict tropospheric ozone concentration(O-3), it is needed to investigate the variety of artificial intelligence techniques' performance, such as machine learning, deep learning and hybrid models. This research aims to effectively predict the hourly ozone trend via fewer input variables. This ozone prediction attempt is performed on diversity data of air pollutants (NO2, NOx, CO, SO2) and meteorological parameters (wind-speed and humidity). The historical datasets are collected from 3 sites in Malaysia. The study's methodology progressed in two paths: standalone and hybrid models where hourly-averaged datasets are applied based on 5-time horizon analysis scenario, with different inputs' combinations. For evaluation, all models are tested throughout 5-performance indicator and illustrated on Modified Taylor diagram. Sensitivity analysis of input variables is quantified. Additionally, uncertainty analysis is conducted to assess their confidence level associated with Willmott Index. Based on R (2), results indicated that XGBoost has higher accuracy compared to MLP and SVR; meanwhile, LSTM and CNN outweighs XGBoost. In terms of robustness and accuracy, the proposed hybrid model possesses superlative performance compared to all above-mentioned techniques. The proposed model achieved exceptional results as the highest R (2), the highest 95% confidence degree, and narrower confidence interval width, are 93.48%, 98.16%, and 0.0014195, respectively. Taylor & Francis 2021-01-01 Article PeerReviewed Yafouz, Ayman and Ahmed, Ali Najah and Zaini, Nur'atiah and Sherif, Mohsen and Sefelnasr, Ahmed and El-Shafie, Ahmed (2021) Hybrid deep learning model for ozone concentration prediction: Comprehensive evaluation and comparison with various machine and deep learning algorithms. Engineering Applications of Computational Fluid Mechanics, 15 (1). pp. 902-933. ISSN 1994-2060, DOI https://doi.org/10.1080/19942060.2021.1926328 <https://doi.org/10.1080/19942060.2021.1926328>. 10.1080/19942060.2021.1926328
institution Universiti Malaya
building UM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Malaya
content_source UM Research Repository
url_provider http://eprints.um.edu.my/
topic TA Engineering (General). Civil engineering (General)
spellingShingle TA Engineering (General). Civil engineering (General)
Yafouz, Ayman
Ahmed, Ali Najah
Zaini, Nur'atiah
Sherif, Mohsen
Sefelnasr, Ahmed
El-Shafie, Ahmed
Hybrid deep learning model for ozone concentration prediction: Comprehensive evaluation and comparison with various machine and deep learning algorithms
description To accurately predict tropospheric ozone concentration(O-3), it is needed to investigate the variety of artificial intelligence techniques' performance, such as machine learning, deep learning and hybrid models. This research aims to effectively predict the hourly ozone trend via fewer input variables. This ozone prediction attempt is performed on diversity data of air pollutants (NO2, NOx, CO, SO2) and meteorological parameters (wind-speed and humidity). The historical datasets are collected from 3 sites in Malaysia. The study's methodology progressed in two paths: standalone and hybrid models where hourly-averaged datasets are applied based on 5-time horizon analysis scenario, with different inputs' combinations. For evaluation, all models are tested throughout 5-performance indicator and illustrated on Modified Taylor diagram. Sensitivity analysis of input variables is quantified. Additionally, uncertainty analysis is conducted to assess their confidence level associated with Willmott Index. Based on R (2), results indicated that XGBoost has higher accuracy compared to MLP and SVR; meanwhile, LSTM and CNN outweighs XGBoost. In terms of robustness and accuracy, the proposed hybrid model possesses superlative performance compared to all above-mentioned techniques. The proposed model achieved exceptional results as the highest R (2), the highest 95% confidence degree, and narrower confidence interval width, are 93.48%, 98.16%, and 0.0014195, respectively.
format Article
author Yafouz, Ayman
Ahmed, Ali Najah
Zaini, Nur'atiah
Sherif, Mohsen
Sefelnasr, Ahmed
El-Shafie, Ahmed
author_facet Yafouz, Ayman
Ahmed, Ali Najah
Zaini, Nur'atiah
Sherif, Mohsen
Sefelnasr, Ahmed
El-Shafie, Ahmed
author_sort Yafouz, Ayman
title Hybrid deep learning model for ozone concentration prediction: Comprehensive evaluation and comparison with various machine and deep learning algorithms
title_short Hybrid deep learning model for ozone concentration prediction: Comprehensive evaluation and comparison with various machine and deep learning algorithms
title_full Hybrid deep learning model for ozone concentration prediction: Comprehensive evaluation and comparison with various machine and deep learning algorithms
title_fullStr Hybrid deep learning model for ozone concentration prediction: Comprehensive evaluation and comparison with various machine and deep learning algorithms
title_full_unstemmed Hybrid deep learning model for ozone concentration prediction: Comprehensive evaluation and comparison with various machine and deep learning algorithms
title_sort hybrid deep learning model for ozone concentration prediction: comprehensive evaluation and comparison with various machine and deep learning algorithms
publisher Taylor & Francis
publishDate 2021
url http://eprints.um.edu.my/28354/
_version_ 1740826004443627520
score 13.18916