基于深度学习方法的气象因素和污染物排放清单对京津冀地区 PM2.5 预测的影响评估

Xiaofei Shi, Bo Li, Xiaoxiao Gao, Stephen Dauda Yabo, Kun Wang, Hong Qi, Jie Ding, Donglei Fu, Wei Zhang
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引用次数: 0

摘要

本研究采用长短期记忆(LSTM)网络方法评估京津冀地区(BTH)PM2.5 的预测性能。使用中国国家环境监测中心、欧洲中期天气预报中心ERA5(ECMWF-ERA5)和中国多分辨率排放清单(MEIC)提供的2016年和2017年每小时空气质量数据集对所提出的方法进行了评估。预测的 PM2.5 浓度与空气质量数据集中的观测值(R2 = 0.871-0.940)具有很强的相关性。此外,该模型在重度污染(PM2.5 > 150 μg/m3)情况下和冬季表现最佳,R2 值分别为 0.689 和 0.915。此外,还评估了 ECMWF-ERA5 每小时气象因子的影响,结果显示了大尺度的区域异质性。通过分析 MEIC 清单的化学成分对预测性能的影响,进行了进一步评估。我们得出结论,相同的时间剖面可能不适合用深度学习方法处理大面积的排放清单。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Evaluation of the Influence of Meteorological Factors and a Pollutant Emission Inventory on PM2.5 Prediction in the Beijing–Tianjin–Hebei Region Based on a Deep Learning Method
In this study, a Long Short-Term Memory (LSTM) network approach is employed to evaluate the prediction performance of PM2.5 in the Beijing–Tianjin–Hebei region (BTH). The proposed method is evaluated using the hourly air quality datasets from the China National Environmental Monitoring Center, European Center for Medium-range Weather Forecasts ERA5 (ECMWF-ERA5), and Multi-resolution Emission Inventory for China (MEIC) for the years 2016 and 2017. The predicted PM2.5 concentrations demonstrate a strong correlation with the observed values (R2 = 0.871–0.940) in the air quality dataset. Furthermore, the model exhibited the best performance in situations of heavy pollution (PM2.5 > 150 μg/m3) and during the winter season, with respective R2 values of 0.689 and 0.915. In addition, the influence of ECMWF-ERA5’s hourly meteorological factors was assessed, and the results revealed regional heterogeneity on a large scale. Further evaluation was conducted by analyzing the chemical components of the MEIC inventory on the prediction performance. We concluded that the same temporal profile may not be suitable for addressing emission inventories in a large area with a deep learning method.
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