Literature DB >> 30708163

An ensemble long short-term memory neural network for hourly PM2.5 concentration forecasting.

Yun Bai1, Bo Zeng2, Chuan Li2, Jin Zhang3.   

Abstract

To protect public health by providing an early warning, PM2.5 concentration forecasting is an essential and effective work. In this paper, an ensemble long short-term memory neural network (E-LSTM) is proposed for hourly PM2.5 concentration forecasting. The presented model is implemented using three steps: (1) ensemble empirical mode decomposition (EEMD) is firstly utilized for multi-modal feature extraction, (2) long short-term memory approach (LSTM) is then employed for multi-modal feature learning, and (3) inverse EEMD computation is finally used for multi-modal feature estimated integration. In each modeling process, the mode information of the PM2.5 and the corresponding meteorological variables in 1-h advance are utilized as inputs to forecast the next mode information of the PM2.5 concentration. To evaluate the performance of the E-LSTM model, two datasets collected from two environmental monitoring stations in Beijing, China, are investigated. It is demonstrated that the E-LSTM model inspired by ensemble learning, which constructs multiple LSTMs in different modes, obtained better forecasting performance than that using the single LSTM and feed forward neural network in terms of mean absolute percentage error (19.604% and 16.929%), root mean square error (12.077 μg m-3 and 13.983 μg m-3), and correlation coefficient criteria (0.994 and 0.991) respectively.
Copyright © 2019 Elsevier Ltd. All rights reserved.

Keywords:  Ensemble learning; Forecasting; Long short-term memory; Mode transformation; PM(2.5) concentrations

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Year:  2019        PMID: 30708163     DOI: 10.1016/j.chemosphere.2019.01.121

Source DB:  PubMed          Journal:  Chemosphere        ISSN: 0045-6535            Impact factor:   7.086


  8 in total

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7.  An ensemble LSTM-based AQI forecasting model with decomposition-reconstruction technique via CEEMDAN and fuzzy entropy.

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8.  Spatiotemporal Heterogeneity and the Key Influencing Factors of PM2.5 and PM10 in Heilongjiang, China from 2014 to 2018.

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  8 in total

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