A Period-Aware Hybrid Model Applied for Forecasting AQI Time Series

An accurate, reliable and stable air quality prediction system is conducive to the public health and management of atmospheric ecological environment; therefore, many models, individual or hybrid, have been implemented widely to deal with the prediction problem. However, many of these models do not...

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Main Authors: Ping Wang, Hongyinping Feng, Guisheng Zhang, Daizong Yu
Format: Article
Language:English
Published: MDPI AG 2020-06-01
Series:Sustainability
Subjects:
Online Access:https://www.mdpi.com/2071-1050/12/11/4730
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spelling doaj-7f6b2feee39049e8a82cadf0cf242b442020-11-25T03:17:50ZengMDPI AGSustainability2071-10502020-06-01124730473010.3390/su12114730A Period-Aware Hybrid Model Applied for Forecasting AQI Time SeriesPing Wang0Hongyinping Feng1Guisheng Zhang2Daizong Yu3College of Resources and Environment, Shanxi University of Finance and Economics, Taiyuan 030006, ChinaSchool of Mathematical Sciences, Shanxi University, Taiyuan 030006, ChinaSchool of Economics and Management, Shanxi University, Taiyuan 030006, ChinaCollege of Resources and Environment, Shanxi University of Finance and Economics, Taiyuan 030006, ChinaAn accurate, reliable and stable air quality prediction system is conducive to the public health and management of atmospheric ecological environment; therefore, many models, individual or hybrid, have been implemented widely to deal with the prediction problem. However, many of these models do not take into consideration or extract improperly the period information in air quality index (AQI) time series, which impacts the models’ learning efficiency greatly. In this paper, a period extraction algorithm is proposed by using a Luenberger observer, and then a novel period-aware hybrid model combined the period extraction algorithm and tradition time series models is build to exploit the comprehensive forecasting capacity to the AQI time series with nonlinear and non-stationary noise. The hybrid model requires a multi-phase implementation. In the first step, the Luenberger observer is used to estimate the implied period function in the one-dimensional AQI series, and then the analyzed time series is mapped to the period space through the function to obtain the period information sub-series of the original series. In the second step, the period sub-series is combined with the original input vector as input vector components according to the time points to establish a new data set. Finally, the new data set containing period information is applied to train the traditional time series prediction models. Both theoretical proof and experimental results obtained on the AQI hour values of Beijing, Tianjin, Taiyuan and Shijiazhuang in North China prove that the hybrid model with period information presents stronger robustness and better forecasting accuracy than the traditional benchmark models.https://www.mdpi.com/2071-1050/12/11/4730air quality indextime series forecastingLuenberger observerperiod-aware hybrid model
collection DOAJ
language English
format Article
sources DOAJ
author Ping Wang
Hongyinping Feng
Guisheng Zhang
Daizong Yu
spellingShingle Ping Wang
Hongyinping Feng
Guisheng Zhang
Daizong Yu
A Period-Aware Hybrid Model Applied for Forecasting AQI Time Series
Sustainability
air quality index
time series forecasting
Luenberger observer
period-aware hybrid model
author_facet Ping Wang
Hongyinping Feng
Guisheng Zhang
Daizong Yu
author_sort Ping Wang
title A Period-Aware Hybrid Model Applied for Forecasting AQI Time Series
title_short A Period-Aware Hybrid Model Applied for Forecasting AQI Time Series
title_full A Period-Aware Hybrid Model Applied for Forecasting AQI Time Series
title_fullStr A Period-Aware Hybrid Model Applied for Forecasting AQI Time Series
title_full_unstemmed A Period-Aware Hybrid Model Applied for Forecasting AQI Time Series
title_sort period-aware hybrid model applied for forecasting aqi time series
publisher MDPI AG
series Sustainability
issn 2071-1050
publishDate 2020-06-01
description An accurate, reliable and stable air quality prediction system is conducive to the public health and management of atmospheric ecological environment; therefore, many models, individual or hybrid, have been implemented widely to deal with the prediction problem. However, many of these models do not take into consideration or extract improperly the period information in air quality index (AQI) time series, which impacts the models’ learning efficiency greatly. In this paper, a period extraction algorithm is proposed by using a Luenberger observer, and then a novel period-aware hybrid model combined the period extraction algorithm and tradition time series models is build to exploit the comprehensive forecasting capacity to the AQI time series with nonlinear and non-stationary noise. The hybrid model requires a multi-phase implementation. In the first step, the Luenberger observer is used to estimate the implied period function in the one-dimensional AQI series, and then the analyzed time series is mapped to the period space through the function to obtain the period information sub-series of the original series. In the second step, the period sub-series is combined with the original input vector as input vector components according to the time points to establish a new data set. Finally, the new data set containing period information is applied to train the traditional time series prediction models. Both theoretical proof and experimental results obtained on the AQI hour values of Beijing, Tianjin, Taiyuan and Shijiazhuang in North China prove that the hybrid model with period information presents stronger robustness and better forecasting accuracy than the traditional benchmark models.
topic air quality index
time series forecasting
Luenberger observer
period-aware hybrid model
url https://www.mdpi.com/2071-1050/12/11/4730
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