An attention-based CNN model integrating observational and simulation data for high-resolution spatial estimation of urban air quality

IF 4.2 2区 环境科学与生态学 Q2 ENVIRONMENTAL SCIENCES
Shibao Wang , Yanxu Zhang
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引用次数: 0

Abstract

Machine learning, especially deep learning, can outperform traditional atmospheric models in air quality assessment, offering enhanced efficiency and accuracy without relying on detailed emission inventories and atmospheric chemical mechanisms. Despite their predictive power, deep learning models often grapple with the perception of being “black boxes” due to their intricate architectures. Here, we develop an attention-based convolutional neural network (CNN-attention) model that incorporates observational data, the parallelized large-eddy-simulation model (PALM), and urban morphology data for high-resolution spatial estimation of urban air quality. Our findings indicate that the CNN-attention model outperforms traditional CNN with higher accuracy and efficiency, achieving R2 = 0.987 and root mean square error (RMSE) = 0.15 mg/m3, while significantly reducing training time and memory usage. Compared to traditional machine learning models, the CNN exhibits higher R2 values and lower RMSE, showcasing its adeptness at capturing complex nonlinear patterns. The inclusion of attention layer further improves the model's performance by dynamically assigning attention scores to key features, enabling the model to focus on areas of critical emissions and distinctive urban features such as highways, arterial roads, intersections, and dense building clusters. This approach also reveals fluid dynamical principles, highlighting the significant disparities in pollutant concentration across roadways caused by atmospheric turbulence, and the distinct plume formations influenced by land use and topography. When applied to various urban settings, the CNN-attention model exhibits superior generalizability and transferability. This study provides valuable scientific insights and technical support for urban planning, air quality management, and exposure risk evaluation.
基于注意力的 CNN 模型整合了观测和模拟数据,用于高分辨率城市空气质量空间估算
在空气质量评估中,机器学习,尤其是深度学习,可以超越传统的大气模型,提供更高的效率和准确性,而无需依赖详细的排放清单和大气化学机制。尽管深度学习模型具有强大的预测能力,但由于其复杂的架构,它们常常被认为是 "黑盒子"。在此,我们开发了一种基于注意力的卷积神经网络(CNN-attention)模型,该模型结合了观测数据、并行化大涡度模拟模型(PALM)和城市形态数据,可用于城市空气质量的高分辨率空间估算。我们的研究结果表明,CNN-注意力模型以更高的精度和效率超越了传统的 CNN,达到了 R2 = 0.987 和均方根误差 (RMSE) = 0.15 mg/m3,同时显著减少了训练时间和内存使用。与传统的机器学习模型相比,CNN 的 R2 值更高,均方根误差更小,这表明它善于捕捉复杂的非线性模式。注意力层的加入进一步提高了模型的性能,它可以动态地为关键特征分配注意力分数,使模型能够关注关键排放区域和独特的城市特征,如高速公路、主干道、十字路口和密集的建筑群。这种方法还揭示了流体动力学原理,突出了大气湍流造成的各条道路污染物浓度的显著差异,以及受土地利用和地形影响的独特羽流形态。在应用于各种城市环境时,CNN-注意力模型表现出卓越的普适性和可移植性。这项研究为城市规划、空气质量管理和暴露风险评估提供了宝贵的科学见解和技术支持。
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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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