An ensemble multi-scale framework for long-term forecasting of air quality

Author:

Jiang Shan1,Yu Zu-Guo2ORCID,Anh Vo V.34ORCID,Lee Taesam5ORCID,Zhou Yu67ORCID

Affiliation:

1. School of Science, Hunan University of Technology and Business 1 , Changsha, Hunan 410205, China

2. National Center for Applied Mathematics in Hunan and Key Laboratory of Intelligent Computing and Information Processing of Ministry of Education, Xiangtan University 2 , Xiangtan, Hunan 411105, People’s Republic of China

3. School of Mathematical Sciences, Queensland University of Technology 3 , GPO Box 2434, Brisbane, QLD 4001, Australia

4. Department of Mathematics, Swinburne University of Technology, Hawthorn 4 , VIC 3122, Australia

5. Department of Civil Engineering, Gyeongsang National University 5 , Jinju, GyeongNam 52828, South Korea

6. School of Urban & Regional Science and Institute for Global Innovation and Development, East China Normal University 6 , Shanghai 200062, China

7. Institute of Future Cities, The Chinese University of Hong Kong 7 , Shatin, Hong Kong, China

Abstract

The significance of accurate long-term forecasting of air quality for a long-term policy decision for controlling air pollution and for evaluating its impacts on human health has attracted greater attention recently. This paper proposes an ensemble multi-scale framework to refine the previous version with ensemble empirical mode decomposition (EMD) and nonstationary oscillation resampling (NSOR) for long-term forecasting. Within the proposed ensemble multi-scale framework, we on one hand apply modified EMD to produce more regular and stable EMD components, allowing the long-range oscillation characteristics of the original time series to be better captured. On the other hand, we provide an ensemble mechanism to alleviate the error propagation problem in forecasts caused by iterative implementation of NSOR at all lead times and name it improved NSOR. Application of the proposed multi-scale framework to long-term forecasting of the daily PM2.5 at 14 monitoring stations in Hong Kong demonstrates that it can effectively capture the long-term variation in air pollution processes and significantly increase the forecasting performance. Specifically, the framework can, respectively, reduce the average root-mean-square error and the mean absolute error over all 14 stations by 8.4% and 9.2% for a lead time of 100 days, compared to previous studies. Additionally, better robustness can be obtained by the proposed ensemble framework for 180-day and 365-day long-term forecasting scenarios. It should be emphasized that the proposed ensemble multi-scale framework is a feasible framework, which is applicable for long-term time series forecasting in general.

Funder

National Key Reasearch and Development Program of China

National Natural Science Foundation of China

Natural Science Foundation of Hunan Province

Publisher

AIP Publishing

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