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Forecasting air quality in China using novel self-adaptive seasonal grey forecasting models

Xiaoyue Zhu (College of Economics and Management, Nanjing University of Aeronautics and Astronautics, Nanjing, China)
Yaoguo Dang (College of Economics and Management, Nanjing University of Aeronautics and Astronautics, Nanjing, China)
Song Ding (School of Economics, Zhejiang University of Finance and Economics, Hangzhou, China)

Grey Systems: Theory and Application

ISSN: 2043-9377

Article publication date: 11 February 2021

Issue publication date: 19 October 2021

373

Abstract

Purpose

Aiming to address the forecasting dilemma of seasonal air quality, the authors design the novel self-adaptive seasonal adjustment factor to extract the seasonal fluctuation information about the air quality index. Based on the novel self-adaptive seasonal adjustment factor, the novel seasonal grey forecasting models are established to predict the air quality in China.

Design/methodology/approach

This paper constructs a novel self-adaptive seasonal adjustment factor for quantifying the seasonal difference information of air quality. The novel self-adaptive seasonal adjustment factor reflects the periodic fluctuations of air quality. Therefore, it is employed to optimize the data generation of three conventional grey models, consisting of the GM(1,1) model, the discrete grey model and the fractional-order grey model. Then three novel self-adaptive seasonal grey forecasting models, including the self-adaptive seasonal GM(1,1) model (SAGM(1,1)), the self-adaptive seasonal discrete grey model (SADGM(1,1)) and the self-adaptive seasonal fractional-order grey model (SAFGM(1,1)), are put forward for prognosticating the air quality of all provinces in China .

Findings

The experiment results confirm that the novel self-adaptive seasonal adjustment factors promote the precision of the conventional grey models remarkably. Simultaneously, compared with three non-seasonal grey forecasting models and the SARIMA model, the performance of self-adaptive seasonal grey forecasting models is outstanding, which indicates that they capture the seasonal changes of air quality more efficiently.

Research limitations/implications

Since air quality is affected by various factors, subsequent research may consider including meteorological conditions, pollutant emissions and other factors to perfect the self-adaptive seasonal grey models.

Practical implications

Given the problematic air pollution situation in China, timely and accurate air quality forecasting technology is exceptionally crucial for mitigating their adverse effects on the environment and human health. The paper proposes three self-adaptive seasonal grey forecasting models to forecast the air quality index of all provinces in China, which improves the adaptability of conventional grey models and provides more efficient prediction tools for air quality.

Originality/value

The self-adaptive seasonal adjustment factors are constructed to characterize the seasonal fluctuations of air quality index. Three novel self-adaptive seasonal grey forecasting models are established for prognosticating the air quality of all provinces in China. The robustness of the proposed grey models is reinforced by integrating the seasonal irregularity. The proposed methods acquire better forecasting precisions compared with the non-seasonal grey models and the SARIMA model.

Keywords

Acknowledgements

Funding information: This work is supported by National Natural Science Foundation of China (Grant NO. 71901191, 71771119, 71971194), Youth Fund Project for Humanities and Social Science Research of the Ministry of Education (Grant NO. 19YJC630167), Scientific Research and Innovation Project funded by Jiangsu Provincial Department of Education (Grant NO. KYCX20_0229), Key Project of Social Science Foundation of Jiangsu Province (Grant NO. 16GLA001), Natural Science Youth Fund Project of Jiangsu Province (Grant NO. BK20190426), Projects Funded by Special Funds for Basic Scientific Research Operating Expenses of Central Universities (Grant NO. NW2019001, NP2017301), Soft Science Research Program of Zhejiang Province (2021C35068).

Citation

Zhu, X., Dang, Y. and Ding, S. (2021), "Forecasting air quality in China using novel self-adaptive seasonal grey forecasting models", Grey Systems: Theory and Application, Vol. 11 No. 4, pp. 596-618. https://doi.org/10.1108/GS-06-2020-0081

Publisher

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Emerald Publishing Limited

Copyright © 2021, Emerald Publishing Limited

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