Ozone Content Variability in the Ground-level Atmosphere Layer in the Mazowieckie Voivodeship, Central Poland
Streszczenie
This publication presents an analysis of the variability of ground-level ozone in the Mazowieckie Voivodeship, Central Poland, in 2005−2012 and the forecast of ground-level ozone
for the next day using artificial neural network models. The content of ground-level ozone in
a given area is mainly determined by meteorological conditions and the presence of appropriate chemical compounds, i.e. ozone precursors. The average ozone mixing ratio is from 20 to
100 ppb, depending on the location of the measurement site.
Despite its low concentration, ozone in the ground layer has a significant impact on natural environment, through the production of free radicals, shaping the greenhouse effect on
the Earth and the formation of photochemical smog, to mention just a few effects. High contents of ground-level ozone may result in the occurrence of episodes that are harmful to human
health.
The analysis of ground-level ozone measurements in various time scales resulted in the
following findings: (1) on an annual scale − the occurrence of a characteristic maximum in
the spring-summer period and the minimum in the autumn-winter period, (2) on a daily scale
− the occurrence of the highest ground-level ozone content in the afternoon and the lowest
just before the sunrise, and (3) on a weekly scale − the existence of a weekend ozone phenomenon.
The analysis of the long-term (1995-2016) ozone measurement series at Belsk gave
grounds for distinguishing the three periods, representing an increase, decrease and re-increase of ozone content in the ground-level atmosphere in this locality.
Models for forecasting the maximum 1-hour daily ozone concentration for the next day
over the period of April–September 2015 were constructed using the Statistica 10 “Automatic
Neural Networks” program package. The quality of the forecast based on neural models was
verified for data from the same months of 2014. The results testify to the ability of the network
to generalize the training-acquired knowledge for new, previously unexamined cases. A comparison of neural network modeling results with those of the Global Environmental Multiscale-Air Quality (GEM-AQ) troposphere chemistry model shows that the Unidirectional
Multi-Layer Perceptron (MLP) type models applied in this study are an effective tool for the
next-day ground-level ozone forecasting