| Literature DB >> 31522003 |
Wenyan Yuan1, Kaiqi Wang1, Xin Bo2, Ling Tang3, Junjie Wu4.
Abstract
In the era of big data, a variety of factors (particularly meteorological factors) have been applied to PM2.5 concentration prediction, revealing a clear discrepancy in timescale. To capture the complicated multi-scale relationship with PM2.5-related factors, a novel multi-factor & multi-scale method is proposed for PM2.5 forecasting. Three major steps are taken: (1) multi-factor analysis, to select predictive factors via statistical tests; (2) multi-scale analysis, to extract scale-aligned components via multivariate empirical mode decomposition; and (3) PM2.5 prediction, including individual prediction at each timescale and ensemble prediction across different timescales. The empirical study focuses on the PM2.5 of Cangzhou, which is one of the most air-polluted cities in China, and indicates that the proposed multi-factor & multi-scale learning paradigms statistically outperform their corresponding original techniques (without multi-factor and multi-scale analysis), semi-improved variants (with either multi-factor or multi-scale analysis), and similar counterparts (with other multi-scale analyses) in terms of prediction accuracy.Entities:
Keywords: Air quality forecast; Big data; Meteorological factors; Multi-scale analysis; Multivariate empirical mode decomposition
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Year: 2019 PMID: 31522003 DOI: 10.1016/j.envpol.2019.113187
Source DB: PubMed Journal: Environ Pollut ISSN: 0269-7491 Impact factor: 8.071