Forecasting of Surface Ozone Concentration by Using Artificial Neural Networks in Rural and Urban Areas in Central Poland

This paper presents the development of artificial neural network models for the prediction of the daily maximum hourly mean of surface ozone concentration for the next day at rural and urban locations in central Poland. The models were generated with six input variables: forecasted basic meteorologi...

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Main Authors: Izabela Pawlak, Janusz Jarosławski
Format: Article
Language:English
Published: MDPI AG 2019-01-01
Series:Atmosphere
Subjects:
Online Access:https://www.mdpi.com/2073-4433/10/2/52
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spelling doaj-d93aae8a7b4a46268dd5ded0d6ea4f5a2020-11-25T01:33:15ZengMDPI AGAtmosphere2073-44332019-01-011025210.3390/atmos10020052atmos10020052Forecasting of Surface Ozone Concentration by Using Artificial Neural Networks in Rural and Urban Areas in Central PolandIzabela Pawlak0Janusz Jarosławski1Institute of Geophysics, Polish Academy of Sciences, 01-452 Warsaw, PolandInstitute of Geophysics, Polish Academy of Sciences, 01-452 Warsaw, PolandThis paper presents the development of artificial neural network models for the prediction of the daily maximum hourly mean of surface ozone concentration for the next day at rural and urban locations in central Poland. The models were generated with six input variables: forecasted basic meteorological parameters and the maximum O<sub>3</sub> concentration recorded on the previous day and number of the month. The training data set covered the period from April 2015 to September 2015. An analogous data set of input variables, for the 2014 year, not used during the process of training the networks, was used as test data to examine the quality of these models. From the results of simulations for the year 2014, the average relative error values were equal to 15.3% and 15.7% for Belsk and Warsaw stations, respectively. The mean error (ME) value indicates a tendency to overestimate the predicted values by 4.8 &#181;g/m<sup>3</sup> for Belsk station and to underestimate the predicted values by 0.9 &#181;g/m<sup>3</sup> for Warsaw station. The analysis of days when the relative error value was &gt;50% revealed that all predictions with extremely high relative error value were associated with relatively low daily maximum surface ozone concentration values that occurred suddenly due to a sharp drop in day-to-day ozone concentration values.https://www.mdpi.com/2073-4433/10/2/52surface ozoneartificial neural networkmeteorological factorscentral Poland
collection DOAJ
language English
format Article
sources DOAJ
author Izabela Pawlak
Janusz Jarosławski
spellingShingle Izabela Pawlak
Janusz Jarosławski
Forecasting of Surface Ozone Concentration by Using Artificial Neural Networks in Rural and Urban Areas in Central Poland
Atmosphere
surface ozone
artificial neural network
meteorological factors
central Poland
author_facet Izabela Pawlak
Janusz Jarosławski
author_sort Izabela Pawlak
title Forecasting of Surface Ozone Concentration by Using Artificial Neural Networks in Rural and Urban Areas in Central Poland
title_short Forecasting of Surface Ozone Concentration by Using Artificial Neural Networks in Rural and Urban Areas in Central Poland
title_full Forecasting of Surface Ozone Concentration by Using Artificial Neural Networks in Rural and Urban Areas in Central Poland
title_fullStr Forecasting of Surface Ozone Concentration by Using Artificial Neural Networks in Rural and Urban Areas in Central Poland
title_full_unstemmed Forecasting of Surface Ozone Concentration by Using Artificial Neural Networks in Rural and Urban Areas in Central Poland
title_sort forecasting of surface ozone concentration by using artificial neural networks in rural and urban areas in central poland
publisher MDPI AG
series Atmosphere
issn 2073-4433
publishDate 2019-01-01
description This paper presents the development of artificial neural network models for the prediction of the daily maximum hourly mean of surface ozone concentration for the next day at rural and urban locations in central Poland. The models were generated with six input variables: forecasted basic meteorological parameters and the maximum O<sub>3</sub> concentration recorded on the previous day and number of the month. The training data set covered the period from April 2015 to September 2015. An analogous data set of input variables, for the 2014 year, not used during the process of training the networks, was used as test data to examine the quality of these models. From the results of simulations for the year 2014, the average relative error values were equal to 15.3% and 15.7% for Belsk and Warsaw stations, respectively. The mean error (ME) value indicates a tendency to overestimate the predicted values by 4.8 &#181;g/m<sup>3</sup> for Belsk station and to underestimate the predicted values by 0.9 &#181;g/m<sup>3</sup> for Warsaw station. The analysis of days when the relative error value was &gt;50% revealed that all predictions with extremely high relative error value were associated with relatively low daily maximum surface ozone concentration values that occurred suddenly due to a sharp drop in day-to-day ozone concentration values.
topic surface ozone
artificial neural network
meteorological factors
central Poland
url https://www.mdpi.com/2073-4433/10/2/52
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