Development of an LSTM broadcasting deep-learning framework for regional air pollution forecast improvement
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Published:2022-11-21
Issue:22
Volume:15
Page:8439-8452
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ISSN:1991-9603
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Container-title:Geoscientific Model Development
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language:en
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Short-container-title:Geosci. Model Dev.
Author:
Sun Haochen, Fung Jimmy C. H.ORCID, Chen Yiang, Li ZhenningORCID, Yuan Dehao, Chen Wanying, Lu Xingcheng
Abstract
Abstract. Deep-learning frameworks can effectively forecast the air pollution data for individual stations by decoding time series data. However, most of the existing time-series-based deep-learning models use offline spatial interpolation strategies and thus cannot reliably project the station-based forecast to the spatial region of interest. In this study, the station-based long short-term memory (LSTM) technique was extended for spatial air quality forecasting by combining a novel deep-learning layer, termed the broadcasting layer, which incorporates a learnable weight decay
parameter designed for point-to-area extension. Unlike most existing
deep-learning-based methods that isolate the interpolation from the model
training process, the proposed end-to-end LSTM broadcasting framework can
consider the temporal characteristics of the time series and spatial relationships among different stations. To validate the proposed deep-learning framework, PM2.5 and O3 forecasts for the next 48 h were obtained using 3D chemical transport model simulation results and ground observation data as the inputs. The root mean square error associated with the proposed framework was 40 % and 20 % lower than those of the Weather Research and Forecasting–Community Multiscale Air Quality model and an offline combination of the deep-learning and spatial interpolation methods, respectively. The novel LSTM broadcasting framework can be extended for air pollution forecasting in other regions of interest.
Funder
Guangzhou Municipal Science and Technology Bureau National Natural Science Foundation of China
Publisher
Copernicus GmbH
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