Okkaoglu, YasinAkdi, YilmazUnlu, Kamil DemirberkIndustrial Engineering2024-07-052024-07-052020141352-23101873-284410.1016/j.atmosenv.2020.1177552-s2.0-85088215455https://doi.org/10.1016/j.atmosenv.2020.117755https://hdl.handle.net/20.500.14411/3249Ünlü, Kamil Demirberk/0000-0002-2393-6691One of the most important and distinguishable features of the climate driven data can be shown as the seasonality. Due to its nature air pollution data may have hourly, daily, weekly, monthly or even seasonal cycles. Many techniques such as non-linear time series analysis, machine learning algorithms and deterministic models, have been used to deal with this non-linear structure. Although, these models can capture the seasonality they can't identify the periodicity. Periodicity is beyond the seasonality, it is the hidden pattern of the time series. In this study, it is aimed to investigate the periodicity of daily Particulate Matter (PM10) of London between the periods 2014 and 2018. PM10 is the particulate matter of which aerodynamic diameter is less than 10 mu m. Firstly, periodogram based unit root test is used to check the stationarity of the investigated data. Afterwards, hidden periodic structure of the data is revealed. It is found that, it has five different cycle periods as 7 days, 25 days, 6 months, a year and 15 months. Lastly, it is shown that harmonic regression performs better in forecasting monthly and daily averages of the data.eninfo:eu-repo/semantics/closedAccessHarmonic regressionPeriodogramsPM10LondonNonlinear time series analysisAir pollutionDaily PM<sub>10</sub>, periodicity and harmonic regression model: The case of LondonArticleQ1Q1238WOS:000558539100020