A genetically optimised neural network for prediction of maximum hourly PM10 concentration

被引:0
|
作者
Kapageridis, I
Triantafyllou, AG
机构
来源
AIR POLLUTION XII | 2004年 / 14卷
关键词
PM10; concentration; prediction; time lagged feed forward neural network; genetic optimisation;
D O I
暂无
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Concentrations of ambient air particles have been found to be associated with a wide range of effects on human health. PM 10 concentrations are usually used as a standard measure for air pollution. Increase in the level of PM10 has been associated with increases in mortality and cardio respiratory hospitalisations. Therefore, prediction of ambient levels in certain environments is of great importance, especially in urban and industrialised areas. The present work aims to develop an adaptive system based on Artificial Neural Networks (ANN) that will allow the prediction of the maximum 24-h moving average of PM10 concentration. A special ANN architecture is employed, the Time Lagged Feed forward Network (TLFN), with genetically optimised topology and learning parameters. This type of network is able to process information over time and produce time-varying nonlinear mappings from the chosen input variables to the predicted value. The network is trained and testified by hourly data collected at two air pollutant-monitoring stations in an urban and nearby industrial location in northern Greece. The initial study presented in this paper involves a small subset of the available data that were used to validate the approach and the chosen ANN architecture.
引用
收藏
页码:161 / 170
页数:10
相关论文
共 50 条
  • [1] Artificial neural network models for prediction of PM10 hourly concentrations, in the Greater Area of Athens, Greece
    Grivas, G
    Chaloulakou, A
    ATMOSPHERIC ENVIRONMENT, 2006, 40 (07) : 1216 - 1229
  • [2] Prediction of Hourly PM2.5 and PM10 Concentrations in Chongqing City in China Based on Artificial Neural Network
    Guo, Qingchun
    He, Zhenfang
    Wang, Zhaosheng
    AEROSOL AND AIR QUALITY RESEARCH, 2023, 23 (06)
  • [3] Multivariate Prediction of PM10 Concentration by LSTM Neural Networks
    Di Antonio, Ludovico
    Rosato, Antonello
    Colaiuda, Valentina
    Lombardi, Annalina
    Tomassetti, Barbara
    Panella, Massimo
    2019 PHOTONICS & ELECTROMAGNETICS RESEARCH SYMPOSIUM - FALL (PIERS - FALL), 2019, : 423 - 431
  • [4] Prediction of hourly PM10 concentration through a hybrid deep learning-based method
    Molaei, Sahar Nasabpour
    Salajegheh, Ali
    Khosravi, Hassan
    Nasiri, Amin
    Abadi, Abbas Ranjbar Saadat
    EARTH SCIENCE INFORMATICS, 2024, 17 (01) : 37 - 49
  • [5] Prediction of PM10 concentration in Seoul, Korea using Bayesian network
    Jo, Minjoo
    Oh, Rosy
    Oh, Man-Suk
    COMMUNICATIONS FOR STATISTICAL APPLICATIONS AND METHODS, 2023, 30 (05) : 517 - 530
  • [6] APPLICATION OF ARTIFICIAL NEURAL NETWORKS AND REGRESSION MODELS IN THE PREDICTION OF DAILY MAXIMUM PM10 CONCENTRATION IN DUZCE, TUKEY
    Taspinar, Fatih
    Bozkurt, Zehra
    FRESENIUS ENVIRONMENTAL BULLETIN, 2014, 23 (10): : 2450 - 2459
  • [7] Network Modeling Of PM10 Concentration in Malaysia
    Abu Supian, Muhammad Nazirul Aiman
    Abu Bakar, Sakhinah
    Razak, Fatimah Abdul
    PROCEEDINGS OF THE 24TH NATIONAL SYMPOSIUM ON MATHEMATICAL SCIENCES (SKSM24): MATHEMATICAL SCIENCES EXPLORATION FOR THE UNIVERSAL PRESERVATION, 2017, 1870
  • [8] Predicting Concentration of PM10 Using Optimal Parameters of Deep Neural Network
    Oh, Byoung-Doo
    Song, Hye-Jeong
    Kim, Jong-Dae
    Park, Chan-Young
    Kim, Yu-Seop
    INTELLIGENT AUTOMATION AND SOFT COMPUTING, 2019, 25 (02): : 343 - 350
  • [9] Prediction of fine dust PM10 using a deep neural network model
    Jeon, Seonghyeon
    Son, Young Sook
    KOREAN JOURNAL OF APPLIED STATISTICS, 2018, 31 (02) : 265 - 285
  • [10] Prediction of short and medium term PM10 concentration using artificial neural networks
    Schornobay-Lui, Elaine
    Alexandrina, Eduardo Carlos
    Aguiar, Monica Lopes
    Hanisch, Werner Siegfried
    Correa, Edinalda Moreira
    Correa, Nivaldo Aparecido
    MANAGEMENT OF ENVIRONMENTAL QUALITY, 2019, 30 (02) : 414 - 436