A novel approach to forecast urban surface-level ozone considering heterogeneous locations and limited information

被引:12
作者
Gomez-Losada, Alvaro [1 ]
Asencio-Cortes, G. [2 ]
Martinez-Alvarez, F. [2 ]
Riquelme, J. C. [3 ]
机构
[1] European Commiss, Joint Res Ctr, Edificio Expo,C Inca Garcilaso 3, Seville 41092, Spain
[2] Pablo de Olavide Univ, Div Comp Sci, ES-41013 Seville, Spain
[3] Univ Seville, Dept Comp Sci, Seville, Spain
关键词
Time series; Forecasting; Data science; Ozone concentration; ARTIFICIAL NEURAL-NETWORK; PREDICTION; ALGORITHMS; MODELS; REGRESSION;
D O I
10.1016/j.envsoft.2018.08.013
中图分类号
TP39 [计算机的应用];
学科分类号
081203 ; 0835 ;
摘要
Surface ozone (O-3) is considered an hazard to human health, affecting vegetation crops and ecosystems. Accurate time and location O-3 forecasting can help to protect citizens to unhealthy exposures when high levels are expected. Usually, forecasting models use numerous O-3 precursors as predictors, limiting the reproducibility of these models to the availability of such information from data providers. This study introduces a 24 h-ahead hourly O-3 concentrations forecasting methodology based on bagging and ensemble learning, using just two predictors with lagged O-3 concentrations. This methodology was applied on ten-year time series (2006-2015) from three major urban areas of Andalusia (Spain). Its forecasting performance was contrasted with an algorithm especially designed to forecast time series exhibiting temporal patterns. The proposed methodology outperforms the contrast algorithm and yields comparable results to others existing in literature. Its use is encouraged due to its forecasting performance and wide applicability, but also as benchmark methodology.
引用
收藏
页码:52 / 61
页数:10
相关论文
共 30 条
[1]  
Bokde N, 2017, R J, V9, P324
[2]   Random forests [J].
Breiman, L .
MACHINE LEARNING, 2001, 45 (01) :5-32
[3]  
Carro-Calvo L, 2017, ATMOSFERA, V30, P1, DOI [10.20937/ATM.2017.30.01.01, 10.20937/atm.2017.30.01.01]
[4]   Artificial neural network with backpropagation learning to predict mean monthly total ozone in Arosa, Switzerland [J].
Chattopadhyay, Surajit ;
Bandyopadhyay, Goutami .
INTERNATIONAL JOURNAL OF REMOTE SENSING, 2007, 28 (20) :4471-4482
[5]   Air pollution prediction via multi-label classification [J].
Corani, Giorgio ;
Scanagatta, Mauro .
ENVIRONMENTAL MODELLING & SOFTWARE, 2016, 80 :259-264
[6]   Ensemble forecasting with machine learning algorithms for ozone, nitrogen dioxide and PM10 on the Prev'Air platform [J].
Debry, E. ;
Mallet, V. .
ATMOSPHERIC ENVIRONMENT, 2014, 91 :71-84
[7]  
Freund Y, 1996, P 13 INT C MACH LEAR, V96, P148, DOI DOI 10.5555/3091696.3091715
[8]   Stochastic gradient boosting [J].
Friedman, JH .
COMPUTATIONAL STATISTICS & DATA ANALYSIS, 2002, 38 (04) :367-378
[9]   Prediction of daily maximum ozone threshold exceedances by preprocessing and ensemble artificial intelligence techniques: Case study of Hong Kong [J].
Gong, Bing ;
Ordieres-Mere, Joaquin .
ENVIRONMENTAL MODELLING & SOFTWARE, 2016, 84 :290-303
[10]   Prediction of ground-level ozone concentration in Sao Paulo, Brazil: Deterministic versus statistic models [J].
Hoshyaripour, G. ;
Brasseur, G. ;
Andrade, M. F. ;
Gavidia-Calderon, M. ;
Bouarar, I. ;
Ynoue, R. Y. .
ATMOSPHERIC ENVIRONMENT, 2016, 145 :365-375