Ground-level ozone forecasting using data-driven methods

被引:0
|
作者
T. A. Solaiman
P. Coulibaly
P. Kanaroglou
机构
[1] University of Western Ontario,Department of Civil and Environmental Engineering
[2] McMaster University,Department of Civil Engineering/ School of Geography and Earth Sciences
[3] McMaster University,School of Geography and Earth Sciences
来源
关键词
Hamilton; Ground-level ozone; Air quality modeling and forecasting; Neural networks;
D O I
暂无
中图分类号
学科分类号
摘要
Accurate site-specific forecasting of hourly ground-level ozone concentrations is a key issue in air quality research nowadays due to increase of smog pollution problem. This paper investigates three emergent data-driven methods to address the complex nonlinear relationships between ozone and meteorological variables in Hamilton (Ontario, Canada). Three dynamic neural networks with different structures: a time-lagged feed-forward network, a recurrent neural network neural network, and a Bayesian neural network models are investigated. The results suggest that the three models are effective forecasting tools and outperform the commonly used multilayer perceptron and hence can be applicable for short-term forecasting of ozone level. Overall, the Bayesian neural network model’s capability of providing prediction with uncertainty estimate in the form of confidence intervals and its inherent ability to prevent under-fitting and over-fitting problems have established it as a good alternative to the other data-driven methods.
引用
收藏
页码:179 / 193
页数:14
相关论文
共 50 条
  • [1] Ground-level ozone forecasting using data-driven methods
    Solaiman, T. A.
    Coulibaly, P.
    Kanaroglou, P.
    AIR QUALITY ATMOSPHERE AND HEALTH, 2008, 1 (04): : 179 - 193
  • [2] A data-driven approach to forecasting ground-level ozone concentration
    Marvin, Dario
    Nespoli, Lorenzo
    Strepparava, Davide
    Medici, Vasco
    INTERNATIONAL JOURNAL OF FORECASTING, 2022, 38 (03) : 970 - 987
  • [3] Ground-Level Ozone Forecasting Using Explainable Machine Learning
    Robledo Troncoso-Garcia, Angela
    Jesus Jimenez-Navarro, Manuel
    Martinez-Alvarez, Francisco
    Troncoso, Alicia
    ADVANCES IN ARTIFICIAL INTELLIGENCE, CAEPIA 2024, 2024, : 71 - 80
  • [4] Nonlinear models for ground-level ozone forecasting
    Bordignon S.
    Gaetan C.
    Lisi F.
    Statistical Methods and Applications, 2002, 11 (2) : 227 - 245
  • [5] Research on satellite data-driven algorithm for ground-level ozone concentration inversion: case of Yunnan, China
    Yu, Weiqiang
    Feng, Tao
    Man, Xingwei
    Lin, Huan
    Zhang, Haonan
    Liu, Rui
    EARTH SCIENCE INFORMATICS, 2024, 17 (02) : 1053 - 1066
  • [6] Forecasting ground-level ozone concentration levels using machine learning
    Du, Jianbang
    Qiao, Fengxiang
    Lu, Pan
    Yu, Lei
    RESOURCES CONSERVATION AND RECYCLING, 2022, 184
  • [7] Research on satellite data-driven algorithm for ground-level ozone concentration inversion: case of Yunnan, China
    Weiqiang Yu
    Tao Feng
    Xingwei Man
    Huan Lin
    Haonan Zhang
    Rui Liu
    Earth Science Informatics, 2024, 17 : 1053 - 1066
  • [8] A ground-level ozone forecasting model for Santiago, Chile
    Jorquera, H
    Palma, W
    Tapia, J
    JOURNAL OF FORECASTING, 2002, 21 (06) : 451 - 472
  • [9] Multivariate methods for ground-level ozone modeling
    Ozbay, Bilge
    Keskin, Gulsen Aydin
    Dogruparmak, Senay Cetin
    Ayberk, Savas
    ATMOSPHERIC RESEARCH, 2011, 102 (1-2) : 57 - 65
  • [10] Understanding the variability of ground-level ozone and fine particulate matter over the Tibetan plateau with data-driven approach
    Zhong, Haobin
    Zhen, Ling
    Yang, Lin
    Lin, Chunshui
    Yao, Qiufang
    Xiao, Yanping
    Xu, Qi
    Liu, Jinsong
    Chen, Baihua
    Ni, Haiyan
    Xu, Wei
    JOURNAL OF HAZARDOUS MATERIALS, 2024, 477