| نویسندگان | Elham Yousefi roobiat,Fatemeh Kafi Seghaleh,Ehteram,Ashrafi |
| نشریه | Theoretical and Applied Climatology |
| شماره صفحات | 1-27 |
| شماره سریال | 157 |
| شماره مجلد | 126 |
| ضریب تاثیر (IF) | 2.64 |
| نوع مقاله | Full Paper |
| تاریخ انتشار | 2026 |
| رتبه نشریه | ISI |
| نوع نشریه | چاپی |
| کشور محل چاپ | ایران |
| نمایه نشریه | ISI،JCR،Scopus |
| کلید واژه ها | ozone concentration, spatiotemporal |
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چکیده مقاله
Predicting ozone concentration is an important issue because ozone is a harmful air pollutant that can have negative
effects on human health and the ecosystem. However, there are challenges that negatively affect the accuracy of ozone
concentration predictions. These challenges include handling non-stationary data, efficiently extracting information, and
selecting input features. Thus, our paper proposes a new ozone concentration prediction model called complete ensemble
empirical mode decomposition adaptive noise (CEEMDAN)- variational mode decomposition method (VMD)- Gated
recurrent unit (GRU)- extreme learning machine model (ELM) to overcome these challenges. This model is created in
several steps. First, the best input scenario was chosen using an effective method called Boruta feature selection algorithm
(BFSA). The input data included wind speed, relative humidity, solar radiation, temperature, air pressure, NO2, SO2,
PM2.5, PM10, and CO. In the second step, each submodel was run separately to perform data preprocessing, extract important
information, and generate predictions. First, the CEEMDAN method was run to transform non-stationary data into a
set of more stationary components called intrinsic mode functions (IMFs). The VMD method was then run to decompose
the high-frequency IMFs into modal components, making them suitable for modeling purposes. Afterward, GRU model
extracted important information from VMDs and IMFs. Finally, the extracted information was input into the ELM model
to forecast ozone concentration in Khorasan province, Iran. The performance of the models was evaluated using several
error indices. Specifically, this model achieved mean absolute error (MAE) values of 0.312 and 0.325 during training and
testing, respectively. Furthermore, it reduced the testing MAEs of other models by 34% to 55%. It was also observed
that the CEEMDAN-VMD-GRU-ELM model improved the R2 value of other models by 1.02% to 14%. The results also
highlighted two significant achievements. Firstly, the CEEMDAN-VMD method effectively addressed the issue of nonstationarity
in the input data, resulting in improved prediction accuracy. Secondly, the GRU model improved the feature
extraction capabilities of machine learning models. Generally, our paper study demonstrates that the new model is a reliable
and effective tool for predicting ozone concentration data. The accurate predictions of this model make a significant
contribution to the prediction of environmental pollutants.
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