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A long short-term memory approach to predicting air quality based on social media data

机译:基于社交媒体数据预测空气质量的长期短期内存方法

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摘要

Air pollution, such as PM2.5 (particulate matter with an aerodynamic equivalent diameter of less than 2.5 mu m), PM10 (particulate matter with an aerodynamic equivalent diameter of less than 10 mu m), NOx, and SOx, is a global concern because it may cause many chronic and fatal diseases, especially in developing countries. To better address air pollution problems, an important step is the timely and accurate prediction of air quality. Traditional methods are mainly based on meteorological data, regression model data, remote sensing data and different retrieval methods. Numerous studies on deep learning methods have suggested that these approaches may be able to perform accurate predictions for complex systems. In this paper, a long short-term memory (LSTM) approach for predicting air quality is proposed; moreover, meteorological data are used and Chinese social media is investigated as a proxy for public perceptions and responses for air quality prediction. We gathered daily air quality data, meteorological data and Weibo check-in data for Beijing, China from January 1, 2015 to December 31, 2016. The average sentiment of the related Weibo posts was selected as the public response proxy. The performance of our proposed model is evaluated based on real data. The root-mean-square error (RMSE) and the mean absolute error (MAE) indicated that our method presented better prediction results than traditional methods in terms of the PM2.5, PM10, O-3, NO2, SO2 and CO concentrations. We focused on the prediction performance during the 2015 China Victory Day Parade period, during which social and political factors played an important role in air quality predictions. The results indicated that the proposed method, which incorporates public response data, was especially suitable for predicting the air quality in extreme short-term social events and provides a timely social measurement and feedback for environmental problems.
机译:空气污染,如PM2.5(具有空气动力等效直径小于2.5μm的颗粒物质),PM10(具有空气动力等效直径小于10μm的颗粒物质),NOx和SOX是全球担忧因为它可能导致许多慢性和致命疾病,特别是在发展中国家。为了更好地解决空气污染问题,重要的一步是及时准确地预测空气质量。传统方法主要基于气象数据,回归模型数据,遥感数据和不同的检索方法。许多关于深度学习方法的研究表明这些方法可能能够对复杂系统进行准确的预测。在本文中,提出了一种用于预测空气质量的长短期内存(LSTM)方法;此外,使用气象数据,并调查了中国社交媒体作为公众看法的代理,以及对空气质量预测的反应。我们收集了2015年1月1日至2016年12月1日至12月31日北京的日常空气质量数据,气象数据和Weibo签入数据。相关的微博帖的平均情绪被选为公共响应代理。基于真实数据评估我们提出模型的性能。根均方误差(RMSE)和平均绝对误差(MAE)表明,我们的方法在PM2.5,PM10,O-3,NO2,SO2和CO浓度方面呈现比传统方法更好的预测结果。我们专注于2015年中国胜利日游行期间的预测表现,社会和政治因素在空气质量预测中发挥着重要作用。结果表明,该方法包括公共响应数据的方法特别适用于预测极端短期社交活动中的空气质量,并为环境问题提供及时的社会测量和反馈。

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