Modeling and forecasting daily average PM10 concentrations by a seasonal long-memory model with volatility

This paper considers the possibility that the daily average Particulate Matter (PM10) concentration is a seasonal fractionally integrated process with time-dependent variance (volatility). In this context, one convenient extension is to consider the SARFIMA model (Reisen et al., 2006a,b) with GARCH...

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Veröffentlicht in:Environmental modelling & software : with environment data news 2014-01, Vol.51, p.286-295
Hauptverfasser: Reisen, Valdério Anselmo, Sarnaglia, Alessandro José Queiroz, Reis, Neyval Costa, Lévy-Leduc, Céline, Santos, Jane Méri
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container_title Environmental modelling & software : with environment data news
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creator Reisen, Valdério Anselmo
Sarnaglia, Alessandro José Queiroz
Reis, Neyval Costa
Lévy-Leduc, Céline
Santos, Jane Méri
description This paper considers the possibility that the daily average Particulate Matter (PM10) concentration is a seasonal fractionally integrated process with time-dependent variance (volatility). In this context, one convenient extension is to consider the SARFIMA model (Reisen et al., 2006a,b) with GARCH type innovations. The model is theoretically justified and its usefulness is corroborated with the application to PM10 concentration in the city of Cariacica, ES (Brazil). The fractional estimates evidenced that the series is stationary in the mean level and it has long-memory phenomenon in the long-run and, also, in the seasonal periods. A non-constant variance property was also found in the data. These interesting features observed in the PM10 concentration supports the use of a more sophisticated time series model structure, that is, a model that encompasses both time series properties seasonal long-memory and conditional variance. The adjusted model well captured the dynamics in the series. The out-of-sample forecast intervals were improved by considering heteroscedastic errors and they were able to capture the periods of more volatility. •SARFIMA-Garch model is proposed.•Properties of the model estimation are established.•The series PM10 concentration was used as an example.•The model is an alternative tool to obtain good forecasts in the air pollution area.
doi_str_mv 10.1016/j.envsoft.2013.09.027
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subjects Animal, plant and microbial ecology
ARFIMA
Biological and medical sciences
Computer Science
Environment and Society
Environmental Sciences
Fractional differencing
Fundamental and applied biological sciences. Psychology
General aspects. Techniques
Heteroscedasticity
Long-memory
Methods and techniques (sampling, tagging, trapping, modelling...)
Modeling and Simulation
PM10 contaminant
Seasonality
title Modeling and forecasting daily average PM10 concentrations by a seasonal long-memory model with volatility
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