Department of Geomatics Engineering, Faculty of Civil Engineering and Transportation, University of Isfahan, HezarJerib St., Isfahan 81746-73441, Iran.
Department of Civil and Environmental Engineering, Carleton University, Ottawa, ON K1S 5B6, Canada.
Sci Total Environ. 2022 Aug 15;834:155324. doi: 10.1016/j.scitotenv.2022.155324. Epub 2022 Apr 19.
This study proposes a new model for the spatiotemporal prediction of PM concentration at hourly and daily time intervals. It has been constructed on a combination of three-dimensional convolutional neural network and gated recurrent unit (3D CNN-GRU). The performance of the proposed model is boosted by learning spatial patterns from similar air quality (AQ) stations while maintaining long-term temporal dependencies with simultaneous learning and prediction for all stations over different time intervals. 3D CNN-GRU model was applied to air pollution observations, especially PM level, collected from several AQ stations across the city of Tehran, the capital of Iran, from 2016 to 2019. It could achieve promising results compared to the methods such as LSTM, GRU, ANN, SVR, and ARIMA, which are recently introduced in the literature; it estimates 84% (R = 0.84) and 78% (R = 0.78) of PM concentration variations for the next hour and the following day, respectively.
本研究提出了一种新的模型,用于在小时和日时间间隔内对 PM 浓度进行时空预测。它是基于三维卷积神经网络和门控循环单元(3D CNN-GRU)的组合构建的。通过从类似空气质量(AQ)站学习空间模式,同时对不同时间间隔内所有站进行同步学习和预测,从而提高了所提出模型的性能。3D CNN-GRU 模型应用于空气污染观测,特别是 PM 水平,这些观测是从伊朗首都德黑兰的几个空气质量站收集的,时间跨度为 2016 年至 2019 年。与最近文献中介绍的方法(如 LSTM、GRU、ANN、SVR 和 ARIMA)相比,它可以取得有希望的结果;它分别估计了下一小时和第二天的 PM 浓度变化的 84%(R = 0.84)和 78%(R = 0.78)。