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一种改进的深度学习模型,用于预测日 PM2.5 浓度。

An improved deep learning model for predicting daily PM2.5 concentration.

机构信息

School of Public Health, Southern Medical University, Guangzhou, 510515, Guangdong, China.

State Key Laboratory of Information Engineering in Surveying, Mapping and Remote Sensing, Wuhan University, 129 Luoyu Road, Wuhan, 430079, China.

出版信息

Sci Rep. 2020 Dec 2;10(1):20988. doi: 10.1038/s41598-020-77757-w.

Abstract

Over the past few decades, air pollution has caused serious damage to public health. Therefore, making accurate predictions of PM2.5 is a crucial task. Due to the transportation of air pollutants among areas, the PM2.5 concentration is strongly spatiotemporal correlated. However, the distribution of air pollution monitoring sites is not even making the spatiotemporal correlation between the central site and surrounding sites vary with different density of sites, and this was neglected by previous methods. To this end, this study proposes a weighted long short-term memory neural network extended model (WLSTME), which addressed the issue that how to consider the effect of the density of sites and wind conditions on the spatiotemporal correlation of air pollution concentration. First, a number of nearest surrounding sites were chosen as the neighbor sites to the central site, and their distance, as well as their air pollution concentration and wind condition, were input to multilayer perception (MLP) to generate weighted historical PM2.5 time series data. Second, historical PM2.5 concentration of the central site and weighted PM2.5 series data of neighbor sites were input into a long short-term memory (LSTM) to address spatiotemporal dependency simultaneously and extract spatiotemporal features. Finally, another MLP was utilized to integrate spatiotemporal features extracted above with the meteorological data of the central site to generate the forecasts future PM2.5 concentration of the central site. Daily PM2.5 concentration and meteorological data on Beijing-Tianjin-Hebei from 2015 to 2017 were collected to train models and to evaluate its performance. Experimental results with three existing methods showed that the proposed WLSTME model has the lowest RMSE (40.67) and MAE (26.10) and the highest p (0.59). Further experiments showed that in all seasons and regions, WLSTME performed the best. This finding confirms that WLSTME can significantly improve PM2.5 prediction accuracy.

摘要

在过去的几十年中,空气污染对公众健康造成了严重的危害。因此,准确预测 PM2.5 是一项至关重要的任务。由于空气污染物在区域间的传输,PM2.5 浓度具有强烈的时空相关性。然而,空气污染监测站点的分布不均匀,使得中心站点和周边站点之间的时空相关性随站点密度的不同而变化,这一点被先前的方法所忽略。为此,本研究提出了一种加权长短时记忆神经网络扩展模型(WLSTME),旨在解决如何考虑站点密度和风向条件对空气污染浓度时空相关性的影响问题。首先,选择一些最近的周边站点作为中心站点的邻域站点,并将它们的距离以及它们的空气污染浓度和风向条件输入多层感知(MLP)中,以生成加权的历史 PM2.5 时间序列数据。其次,将中心站点的历史 PM2.5 浓度和邻域站点的加权 PM2.5 序列数据输入到长短期记忆(LSTM)中,以同时解决时空依赖性问题,并提取时空特征。最后,利用另一个 MLP 将上述时空特征与中心站点的气象数据相结合,生成中心站点未来 PM2.5 浓度的预测结果。收集了 2015 年至 2017 年京津冀地区的日 PM2.5 浓度和气象数据来训练模型并评估其性能。与三种现有方法的实验结果表明,所提出的 WLSTME 模型具有最低的 RMSE(40.67)和 MAE(26.10)以及最高的 p 值(0.59)。进一步的实验表明,在所有季节和地区,WLSTME 的表现都最好。这一发现证实了 WLSTME 可以显著提高 PM2.5 预测精度。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/0d74/7710732/0559478f25a6/41598_2020_77757_Fig1_HTML.jpg

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