Air quality forecasting using arti ficial neural networks with real time dynamic error correction in highly polluted regions

被引:70
作者
Agarwal, Shivang [1 ]
Sharma, Sumit [1 ]
Suresh, R. [1 ]
Rahman, Md H. [1 ]
Vranckx, Stijn [2 ]
Maiheu, Bino [2 ]
Blyth, Lisa [2 ]
Janssen, Stijn [2 ]
Gargava, Prashant [3 ]
Shukla, V. K. [3 ]
Batra, Sakshi [3 ]
机构
[1] TERI, Energy & Resources Inst, IHC Complex,Lodi Rd, New Delhi 110003, India
[2] VITO, Flemish Inst Technol Res, Boeretang 200, B-2400 Mol, Belgium
[3] CPCB, Cent Pollut Control Board, Delhi 110032, India
关键词
Artificial neural network; Air pollution forecasting; Delhi pollution; Real-time correction; Pollution prediction; PM10; CONCENTRATIONS; PARTICULATE MATTER; URBAN AIR; PREDICTION; DELHI; OZONE; EMISSIONS; AVERAGE; PM2.5; MODEL;
D O I
10.1016/j.scitotenv.2020.139454
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 important issue, especially in megacities across the world. There are emission sources within and also in the regions around these cities, which cause fluctuations in air quality based on prevailing meteorological conditions. Short term air quality forecasting is used not to just possibly mitigate forthcoming high air pollution episodes, but also to plan for reduced exposures of residents. In this study, a model using Artificial Neural Networks (ANN) has been developed to forecast pollutant concentration of PM10, PM2.5, NO2, and O-3 for the current day and subsequent 4 days in a highly polluted region (32 different locations in Delhi). The model has been trained using meteorological parameters and hourly pollution concentration data for the year 2018 and then used for generating air quality forecasts in real-time. It has also been equipped with Real Time Correction (RTC), to improve the quality of the forecasts by dynamically adjusting the forecasts based on the model performance during the past few days. The model without RTC performs decently, but with RTC the errors are further reduced in forecasted values. The utility of the model has been demonstrated in real-time and model validations were performed for the whole year of 2018 and also independently for 2019. The model shows very good performance for all the pollutants on several evaluation metrics. Coefficient of correlations for various pollutants varies from 0.790.88 to 0.490.68 between the Day0 to Day4 forecasts. Lowest deterioration of performance was observed for ozone over the four days of forecasts. Use of RTC further improves the model performance for all pollutants.
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页数:12
相关论文
共 34 条
[1]   Surface ozone scenario at Pune and Delhi during the decade of 1990s [J].
Ali, Kaushar ;
Inamdar, S. R. ;
Beig, G. ;
Ghude, S. ;
Peshin, Sunil .
JOURNAL OF EARTH SYSTEM SCIENCE, 2012, 121 (02) :373-383
[2]   Spatial estimation of urban air pollution with the use of artificial neural network models [J].
Alimissis, A. ;
Philippopoulos, K. ;
Tzanis, C. G. ;
Deligiorgi, D. .
ATMOSPHERIC ENVIRONMENT, 2018, 191 :205-213
[3]  
[Anonymous], 2014, BURD DIS AMB HOUS AI
[4]   An Integrated Risk Function for Estimating the Global Burden of Disease Attributable to Ambient Fine Particulate Matter Exposure [J].
Burnett, Richard T. ;
Pope, C. Arden, III ;
Ezzati, Majid ;
Olives, Casey ;
Lim, Stephen S. ;
Mehta, Sumi ;
Shin, Hwashin H. ;
Singh, Gitanjali ;
Hubbell, Bryan ;
Brauer, Michael ;
Anderson, H. Ross ;
Smith, Kirk R. ;
Balmes, John R. ;
Bruce, Nigel G. ;
Kan, Haidong ;
Laden, Francine ;
Pruess-Ustuen, Annette ;
Turner, Michelle C. ;
Gapstur, Susan M. ;
Diver, W. Ryan ;
Cohen, Aaron .
ENVIRONMENTAL HEALTH PERSPECTIVES, 2014, 122 (04) :397-403
[5]  
Chelani AB, 2002, ENVIRON MODELL SOFTW, V17, P161, DOI 10.1016/S1364-8152(01)00061-5
[6]   Status and characteristics of ambient PM2.5 pollution in global megacities [J].
Cheng, Zhen ;
Luo, Lina ;
Wang, Shuxiao ;
Wang, Yungang ;
Sharma, Sumit ;
Shimadera, Hikari ;
Wang, Xiaoliang ;
Bressi, Michael ;
de Miranda, Regina Maura ;
Jiang, Jingkun ;
Zhou, Wei ;
Fajardo, Oscar ;
Yan, Naiqiang ;
Hao, Jiming .
ENVIRONMENT INTERNATIONAL, 2016, 89-90 :212-221
[7]   Development of an ANN-based air pollution forecasting system with explicit knowledge through sensitivity analysis [J].
Elangasinghe, Madhavi Anushka ;
Singhal, Naresh ;
Dirks, Kim N. ;
Salmond, Jennifer A. .
ATMOSPHERIC POLLUTION RESEARCH, 2014, 5 (04) :696-708
[8]   Seasonal prediction of particulate matter over the steel city of India using neural network models [J].
Gogikar, Priyanjali ;
Tyagi, Bhishma ;
Gorai, A. K. .
MODELING EARTH SYSTEMS AND ENVIRONMENT, 2019, 5 (01) :227-243
[9]  
Health Effects Institute (HEI), 2019, STAT GLOB AIR 2019
[10]   A neural network forecast for daily average PM10 concentrations in Belgium [J].
Hooyberghs, J ;
Mensink, C ;
Dumont, G ;
Fierens, F ;
Brasseur, O .
ATMOSPHERIC ENVIRONMENT, 2005, 39 (18) :3279-3289