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作者:

Qin, Zepeng (Qin, Zepeng.) | Cen, Chen (Cen, Chen.) | Guo, Xu (Guo, Xu.)

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EI Scopus

摘要:

Since most of the existing air quality index (AQI) predicting models focused on prediction of the time series data of a single target monitoring station, they failed to consider the correlation and mutual influence among the air quality monitoring station sites and the spatio-temporal characteristics of air quality. And this will lead to a certain one-sidedness during air quality prediction of a particular site. Aimed at this problem, a short-term air quality prediction model based on K-nearest neighbor (KNN) and Long Short-Term Memory (LSTM) was proposed. The model firstly used KNN algorithm to select the time and space-related monitoring stations, then the air quality index sequences of these stations were constructed into data sets, followed by training and testing processes in the LSTM model, and finally the model was verified with real data. It is suggested that the prediction accuracy of the hybrid prediction model constructed in this paper is acceptable in terms of the space-time correlation, and it could be an alternative for further application of air quality prediction. © Published under licence by IOP Publishing Ltd.

关键词:

Air quality Forecasting Intelligent computing Learning algorithms Long short-term memory Nearest neighbor search Predictive analytics Signal processing

作者机构:

  • [ 1 ] [Qin, Zepeng]Beijing Engineering Research Center for LoT Software and Systems, Beijing University of Technology, Beijing; 100124, China
  • [ 2 ] [Cen, Chen]Beijing Engineering Research Center for LoT Software and Systems, Beijing University of Technology, Beijing; 100124, China
  • [ 3 ] [Guo, Xu]Beijing Engineering Research Center for LoT Software and Systems, Beijing University of Technology, Beijing; 100124, China

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ISSN: 1742-6588

年份: 2019

期: 4

卷: 1237

语种: 英文

被引次数:

WoS核心集被引频次: 0

SCOPUS被引频次: 16

ESI高被引论文在榜: 0 展开所有

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