Evaluation of Deep Learning Models for Predicting the Concentration of Air Pollutants in Urban Environments

被引:0
|
作者
Tello-Leal, Edgar [1 ]
Ramirez-Alcocer, Ulises Manuel [2 ]
Macias-Hernandez, Barbara A. [1 ]
Hernandez-Resendiz, Jaciel David [2 ]
机构
[1] Autonomous Univ Tamaulipas, Fac Engn & Sci, Tamaulipas 87000, Mexico
[2] Autonomous Univ Tamaulipas, Multidisciplinary Acad Unit Reynosa Rodhe, Reynosa 88779, Mexico
关键词
predictive model; air pollution; LSTM; deep learning; PM10; PM2.5; CO; CARBON-MONOXIDE; NEURAL-NETWORK; LSTM; PREGNANCY;
D O I
10.3390/su16167062
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Air pollution is an issue of great concern globally due to the risks to the health of humanity, animals, and ecosystems. On the one hand, air quality monitoring systems allow for determining the concentration level of air pollutants and health risks through an air quality index (AQI). On the other hand, accurate future predictions of air pollutant concentration levels can provide valuable information for data-driven decision-making to reduce health risks from short- and long-term exposure when indicators exceed permissible limits. In this paper, five deep learning architectures are evaluated to predict the concentration of particulate matter pollutants (in their fractions PM2.5 and PM10) and carbon monoxide (CO) in consecutive hours. The proposed prediction models are based on recurrent neural networks (RNNs), long short-term memory (LSTM), vanilla LSTM, Stacked LSTM, Bi-LSTM, and encoder-decoder LSTM networks. Moreover, a methodology is presented to guide the construction of the prediction model, encompassing raw data processing, model design and optimization, and neural network training, testing, and evaluation. The results underscore the precision and reliability of the Stacked LSTM model in predicting the hourly concentration level for PM2.5, with an RMSE of 3.4538 mu g/m(3). Similarly, the encoder-decoder LSTM model accurately predicts the concentration level for PM10 and CO, with an RMSE of 3.2606 mu g/m(3) and 2.1510 ppm, respectively. These evaluations, with their minimal differences in error metrics and coefficient of determination, validate the effectiveness and superiority of the deep learning models over other reference models, instilling confidence in their potential.
引用
收藏
页数:19
相关论文
共 50 条
  • [31] Generalizable deep learning models for predicting laboratory earthquakes
    Wang, Chonglang
    Xia, Kaiwen
    Yao, Wei
    Marone, Chris
    COMMUNICATIONS EARTH & ENVIRONMENT, 2025, 6 (01):
  • [32] Evaluation of Dominant Microbial Air Pollutants in Hospital Environments and Nearby Areas in Albania
    Troja, Erjon
    Ceci, Ranela
    Markaj, Albana
    Dhamo, Eltion
    Troja, Rozana
    JOURNAL OF ECOLOGICAL ENGINEERING, 2021, 22 (05): : 32 - 38
  • [33] Evaluation of machine learning models for predicting TiO2 photocatalytic degradation of air contaminants
    Javed, Muhammad Faisal
    Shahab, Muhammad Zubair
    Asif, Usama
    Najeh, Taoufik
    Aslam, Fahid
    Ali, Mujahid
    Khan, Inamullah
    SCIENTIFIC REPORTS, 2024, 14 (01):
  • [34] Quantifying and predicting air quality on different road types in urban environments using mobile monitoring and automated machine learning
    Miao, Chunping
    Peng, Zhong-Ren
    Cui, Aiwei
    He, Xingyuan
    Chen, Fengxian
    Lu, Kaifa
    Jia, Guangliang
    Yu, Shuai
    Chen, Wei
    ATMOSPHERIC POLLUTION RESEARCH, 2024, 15 (03)
  • [35] Analysis of Air Pollutants' Concentration in Terms of Traffic Conditions and Road Gradient in an Urban Area
    Abusalem, Zaydoun
    Odeh, Issam
    Al-Hazim, Nabil
    Bazlamit, Subhi M.
    Al-Saket, Amal
    JORDAN JOURNAL OF CIVIL ENGINEERING, 2019, 13 (03) : 405 - 411
  • [36] Machine Learning Models for Predicting the Ammonium Concentration in Alluvial Groundwaters
    Marija Perović
    Ivana Šenk
    Laslo Tarjan
    Vesna Obradović
    Milan Dimkić
    Environmental Modeling & Assessment, 2021, 26 : 187 - 203
  • [37] Predicting the Poaceae pollen concentration in the air using time series models
    Rojo, J.
    Rapp, A.
    Lara, B.
    Romero, J.
    Perez-Badia, R.
    ALLERGY, 2016, 71 : 215 - 215
  • [38] Machine Learning Models for Predicting the Ammonium Concentration in Alluvial Groundwaters
    Perovic, Marija
    Senk, Ivana
    Tarjan, Laslo
    Obradovic, Vesna
    Dimkic, Milan
    ENVIRONMENTAL MODELING & ASSESSMENT, 2021, 26 (02) : 187 - 203
  • [39] Application of deep learning models with spectral data augmentation and Denoising for predicting total phosphorus concentration in water pollution
    Wang, Cailing
    Xiong, Wolong
    Zhang, Guohao
    JOURNAL OF THE TAIWAN INSTITUTE OF CHEMICAL ENGINEERS, 2025, 167
  • [40] Evaluation of machine learning and deep learning models for daily air quality index prediction in Delhi city, India
    Pande, Chaitanya Baliram
    Radhadevi, Latha
    Satyanarayana, Murthy Bandaru
    ENVIRONMENTAL MONITORING AND ASSESSMENT, 2024, 196 (12)