Development of a city-level surface ozone forecasting system using deep learning techniques and air quality model: Application in eastern China

IF 4.2 2区 环境科学与生态学 Q2 ENVIRONMENTAL SCIENCES Atmospheric Environment Pub Date : 2024-10-18 DOI:10.1016/j.atmosenv.2024.120865
Qianyun Li , Jie Li , Zixi Wang , Bing Liu , Wei Wang , Zifa Wang
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Abstract

Utilizing regional air quality models to accurately forecast surface ozone (O3) concentrations, particularly high concentrations, is essential for protecting public health. However, forecasts of air quality model often deviate from site observations due to the limitation of grid resolution and uncertainties from emission sources, meteorological conditions, and chemical reaction mechanisms. Especially, the underestimation is significant under condition of high O3 concentrations. Moreover, such deviations tend to accumulate as forecast lead time increases, compounding the challenges associated with reliable air quality forecast. In this study, we employed AlexNet architecture, a classical convolutional neural network, combined with multiple variables related to meteorology, chemistry, emission and geography to establish a non-linear relationship between grid-scale input variables and site-scale hourly O3 forecast biases in Eastern China, aiming to realize accurate city-level ozone forecast based on a regional air quality prediction model (i.e., Nested Air Quality Prediction Model System, NAQPMS). By assigning weights to high-bias samples and high-concentration samples within the loss function, the proposed Weighted AlexNet model (W_AlexNet) effectively reduced forecast biases and enhanced its capability to predict O3 pollution levels. Compared to NAQPMS, W_AlexNet model demonstrated a 25.71% improvement in RMSE and a 7.17% increase in IOA averagely for hourly O3 (O3-1h) forecasts across four different lead times (24-h, 48-h, 72-h, and 96-h). Notably, W_AlexNet model alleviated the tendency of NAQPMS to underestimate high concentrations and showed a superior performance in improving O3-1h pollution level forecasts, particularly for the 72-h and 96-h lead times. W_AlexNet model can effectively mitigate the bias accumulation effect over increasing lead times, thereby enhancing the reliability of longer-term forecasts. Thus, the W_AlexNet model serves as a post-processing model that can calibrate forecast biases in air quality prediction models, significantly improving the accuracy of O3 high concentration forecasts and providing more precise early warnings of O3 pollution. This underscores its utility in air quality management.
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利用深度学习技术和空气质量模型开发城市级地表臭氧预报系统:在华东地区的应用
利用区域空气质量模型准确预测地表臭氧(O3)浓度,尤其是高浓度臭氧,对于保护公众健康至关重要。然而,由于网格分辨率的限制以及排放源、气象条件和化学反应机制的不确定性,空气质量模型的预测往往与现场观测结果存在偏差。尤其是在臭氧浓度较高的情况下,这种低估更为明显。此外,随着预报准备时间的延长,这种偏差会不断累积,从而加剧了可靠的空气质量预报所面临的挑战。在本研究中,我们采用经典卷积神经网络 AlexNet 架构,结合气象、化学、排放和地理相关的多个变量,建立了华东地区网格尺度输入变量与站点尺度每小时臭氧预报偏差之间的非线性关系,旨在实现基于区域空气质量预报模式(即嵌套空气质量预报模式系统,NAQPMS)的城市臭氧精确预报。通过在损失函数中为高偏差样本和高浓度样本分配权重,所提出的加权 AlexNet 模型(W_AlexNet)有效地减少了预报偏差,提高了预报臭氧污染水平的能力。与 NAQPMS 相比,W_AlexNet 模型在四个不同提前期(24 小时、48 小时、72 小时和 96 小时)的每小时臭氧(O3-1 小时)预测中,均方根误差(RMSE)改善了 25.71%,平均 IOA 增加了 7.17%。值得注意的是,W_AlexNet 模型缓解了 NAQPMS 低估高浓度的倾向,在改善 O3-1h 污染水平预报方面表现出色,尤其是在 72-h 和 96-h 提前期。W_AlexNet 模型可有效缓解偏差累积效应,从而提高长期预报的可靠性。因此,W_AlexNet 模型作为一种后处理模型,可以校准空气质量预测模型中的预测偏差,显著提高 O3 高浓度预测的准确性,并提供更精确的 O3 污染预警。这凸显了其在空气质量管理中的实用性。
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来源期刊
Atmospheric Environment
Atmospheric Environment 环境科学-环境科学
CiteScore
9.40
自引率
8.00%
发文量
458
审稿时长
53 days
期刊介绍: Atmospheric Environment has an open access mirror journal Atmospheric Environment: X, sharing the same aims and scope, editorial team, submission system and rigorous peer review. Atmospheric Environment is the international journal for scientists in different disciplines related to atmospheric composition and its impacts. The journal publishes scientific articles with atmospheric relevance of emissions and depositions of gaseous and particulate compounds, chemical processes and physical effects in the atmosphere, as well as impacts of the changing atmospheric composition on human health, air quality, climate change, and ecosystems.
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