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Deep learning spatiotemporal air pollution data in China using data fusion

机译:利用数据融合,中国的深度学习时空空气污染数据

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摘要

An efficient and effective spatiotemporal prediction algorithm for PM2.5 (i.e. particulate matter with a diameter of less than 2.5 micrometers) is urgently needed to study the distribution of PM2.5 over a continuous spatiotemporal domain, which not only helps to make scientific decisions on the prevention and control of PM2.5 pollution but also promotes meaningful assessment of the quantitative relationship between adverse health effects and PM2.5 concentrations over time. Existing spatiotemporal interpolation algorithms are usually based on the assumption that interpolation models follow explicit and simple mathematical descriptions. Unfortunately, the real world does not really follow these perfect mathematical models. Combining data fusion techniques and a Long Short-Term Memory (LSTM) recurrent neural network (RNN), we present a novel spatiotemporal interpolation model, which is able to achieve high estimation accuracies over a long time period and a large area. By fusing the daily PM2.5 data, meteorological data, elevation data, and land-use data collected from China in 2016, four experiments were conducted in this study to evaluate the efficiency and effectiveness of the proposed approach. Results showed that applying LSTM RNN on the fused dataset can achieve consistent and high accuracy in different geographies.
机译:迫切需要一种高效且有效的时空预测算法(即直径小于2.5微米的颗粒物质),以研究PM2.5在连续的时空域中的分布,这不仅有助于对科学决策进行有助于实现预防和控制PM2.5污染,但随着时间的推移,对不利健康影响和PM2.5浓度之间的定量关系有意义的评估。现有的时空插值算法通常基于假设插值模型遵循显式和简单的数学描述。不幸的是,现实世界并没有真正遵循这些完美的数学模型。组合数据融合技术和长期内存(LSTM)复发性神经网络(RNN),我们提出了一种新的时空插值模型,能够在长时间和大面积上实现高估计精度。通过融合2016年从中国收集的日常PM2.5数据,气象数据,海拔数据和土地利用数据,在本研究中进行了四次实验,以评估所提出的方法的效率和有效性。结果表明,在融合数据集上应用LSTM RNN可以在不同的地理位置中实现一致和高精度。

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