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Long- and short-term time series forecasting of air quality by a multi-scale framework

机译:多规模框架的长期和短期时间系列空气质量预测

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摘要

Air quality forecasting for Hong Kong is a challenge. Even taking the advantages of auto-regressive integrated moving average and some state-of-the-art numerical models, a recently-developed hybrid method for one-day (two- and three-day) ahead forecasting performs similarly to (slightly better than) a simple persistence forecasting. Long-term forecasting also remains an important issue, especially for policy decision for better control of air pollution and for evaluation of the long-term impacts on public health. Given the well-recognized negative effects of PM2.5, NO2 and O-3 on public health, we study their time series under the multi-scale framework with empirical mode decomposition and nonstationary oscillation resampling to explore the possibility of long-term forecasting and to improve short-term forecasts in Hong Kong. Applied to a dataset from January 2016 to December 2018, the long-term forecasting (with lead time about 100 days) of the multi-scale framework has the root-mean-square error (RMSE) comparable with that of the short-term (with lead time of one or two days) forecasting by the persistence method, while its improvement for short-term forecasting (with lead time of one, two or three days) is quite substantial over the persistence forecasting, with RMSEs reduced by respectively 44%-47%, 30%-45%, and 40%-60% for PM2.5, NO2, and O-3. Compared to the hybrid method, it turns out that, for short-term forecasting for the same data, the multi-scale framework can reduce RMSE by about 25% (respectively 30%) for PM2.3 (respectively NO2 and O-3). In addition, we find no significant difference in the forecasting performance of the multi-scale framework among different types of stations. The multi-scale framework is feasible for time series forecasting and applicable to other pollutants in other cities. (C) 2020 Elsevier Ltd. All rights reserved.
机译:香港的空气质量预测是一项挑战。甚至采用自动回归集成的移动平均线和一些最先进的数值模型,最近开发的一天(两天和三天)前瞻性预测的混合方法表现得类似于(略大于)简单的持久预测。长期预测也仍然是一个重要问题,特别是对于更好地控制空气污染和评估对公共卫生的长期影响的政策决定。鉴于PM2.5,NO2和O-3对公共卫生的公认的负面影响,我们根据经验模式分解和非间断振荡重采样在多尺度框架下研究他们的时间序列,以探索长期预测的可能性和改善香港的短期预测。应用于2016年1月至2018年12月的数据集,多尺度框架的长期预测(大约100天大约100天)具有与短期内的根均方误差(RMSE)相当(通过持久性方法预测持久性方法,虽然对短期预测的改进(具有一台,两三天的延长时间),对持久预测相当大幅度,但RMS分别降低了44% PM2.5,NO2和O-3的47%,30%-45%和40%-60%。与混合方法相比,事实证明,对于对相同数据的短期预测,多尺度框架可以减少PM2.3(分别为NO 2和O-3)的25%(分别为30%)的RMSE 。此外,我们发现不同类型站之间的多尺度框架的预测性能没有显着差异。多尺度框架可用于时间序列预测,并适用于其他城市的其他污染物。 (c)2020 elestvier有限公司保留所有权利。

著录项

  • 来源
    《Environmental Pollution 》 |2021年第2期| 116381.1-116381.10| 共10页
  • 作者单位

    Xiangtan Univ Hunan Key Lab Computat & Simulat Sci & Engn Minist Educ Xiangtan 411105 Hunan Peoples R China|Xiangtan Univ Key Lab Intelligent Comp & Informat Proc Minist Educ Xiangtan 411105 Hunan Peoples R China;

    Xiangtan Univ Hunan Key Lab Computat & Simulat Sci & Engn Minist Educ Xiangtan 411105 Hunan Peoples R China|Xiangtan Univ Key Lab Intelligent Comp & Informat Proc Minist Educ Xiangtan 411105 Hunan Peoples R China|Queensland Univ Technol Sch Elect Engn & Comp Sci GPO Box 2434 Brisbane Qld 4001 Australia;

    Xiangtan Univ Hunan Key Lab Computat & Simulat Sci & Engn Minist Educ Xiangtan 411105 Hunan Peoples R China|Xiangtan Univ Key Lab Intelligent Comp & Informat Proc Minist Educ Xiangtan 411105 Hunan Peoples R China|Swinburne Univ Technol Fac Sci Engn & Technol POB 218 Hawthorn Vic 3122 Australia;

    Chinese Univ Hong Kong Inst Future Cities Shatin Hong Kong Peoples R China;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);美国《生物学医学文摘》(MEDLINE);美国《化学文摘》(CA);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Air quality; Long-term forecasting; Multi-scale analysis; Nonstationary oscillation resampling; Short-term forecasting;

    机译:空气质量;长期预测;多规模分析;非标准振荡重采样;短期预测;
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