作者
Brian S Freeman, Graham Taylor, Bahram Gharabaghi, Jesse Thé
发表日期
2018/8/3
期刊
Journal of the Air & Waste Management Association
卷号
68
期号
8
页码范围
866-886
出版商
Taylor & Francis
简介
This paper presents one of the first applications of deep learning (DL) techniques to predict air pollution time series. Air quality management relies extensively on time series data captured at air monitoring stations as the basis of identifying population exposure to airborne pollutants and determining compliance with local ambient air standards. In this paper, 8 hr averaged surface ozone (O3) concentrations were predicted using deep learning consisting of a recurrent neural network (RNN) with long short-term memory (LSTM). Hourly air quality and meteorological data were used to train and forecast values up to 72 hours with low error rates. The LSTM was able to forecast the duration of continuous O3 exceedances as well. Prior to training the network, the dataset was reviewed for missing data and outliers. Missing data were imputed using a novel technique that averaged gaps less than eight time steps with …
引用总数
20182019202020212022202320245184469516127
学术搜索中的文章
BS Freeman, G Taylor, B Gharabaghi, J Thé - Journal of the Air & Waste Management Association, 2018