2023
DOI: 10.3390/app131810514
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Short-Term Forecasting of Ozone Concentration in Metropolitan Lima Using Hybrid Combinations of Time Series Models

Natalí Carbo-Bustinza,
Hasnain Iftikhar,
Marisol Belmonte
et al.

Abstract: In the modern era, air pollution is one of the most harmful environmental issues on the local, regional, and global stages. Its negative impacts go far beyond ecosystems and the economy, harming human health and environmental sustainability. Given these facts, efficient and accurate modeling and forecasting for the concentration of ozone are vital. Thus, this study explores an in-depth analysis of forecasting the concentration of ozone by comparing many hybrid combinations of time series models. To this end, i… Show more

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Cited by 9 publications
(2 citation statements)
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References 41 publications
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“…Various time series are handled using the STL method [35,36]. The STL method decomposes time series data into variation components, including seasonality, trends, and residuals, as shown using Equation (1) [37].…”
Section: The Stl Methodsmentioning
confidence: 99%
“…Various time series are handled using the STL method [35,36]. The STL method decomposes time series data into variation components, including seasonality, trends, and residuals, as shown using Equation (1) [37].…”
Section: The Stl Methodsmentioning
confidence: 99%
“…Air pollution stands as one of the most detrimental environmental issues globally, necessitating the need for effective and accurate prediction of ozone concentrations. Carbo-Bustinza, et al [25] employed the seasonal trend decomposition method to decompose the time series into three distinct sub-series, i.e., long-term trend, seasonal trend, and random series, for ozone concentration prediction. The methodology of time series prediction is also commonly applied in the realm of studying infectious diseases.…”
Section: Recurring Event Predictionmentioning
confidence: 99%