A Transfer Learning–CNN Framework for Marine Atmospheric Pollutant Inversion Using Multi-Source Data Fusion

摘要
The concentration characteristics of SO2, NO2, O3, and CO in the marine atmosphere are of great significance for understanding air-sea interactions and regional atmospheric chemical processes. However, due to the challenging conditions of marine monitoring, long-term continuous observational data remain scarce. To address this gap, this study proposes a Transfer Learning-Convolutional Neural Network (TL-CNN) model that integrates ERA5 meteorological data, EAC4 atmospheric composition reanalysis data, and ground-based observations through multi-source data fusion. During data preprocessing, the Data Interpolating Empirical Orthogonal Function (DINEOF), inverse distance weighting (IDW) spatial interpolation, and Gaussian filtering methods were employed to improve data continuity and consistency. Using ERA5 meteorological variables as inputs and EAC4 pollutant concentrations as training targets, a CNN-based inversion framework was constructed. Results show that the CNN model achieved an average coefficient of determination (R2) exceeding 0.80 on the pretraining test set, significantly outperforming random forest and deep neural networks, particularly in reproducing nearshore gradients and regional spatial distributions. After incorporating transfer learning and fine-tuning with station observations, the model inversion results reached an average R2 of 0.72 against site measurements, effectively correcting systematic biases in the reanalysis data. Among the pollutants, the inversion of SO2 performed relatively poorly, mainly because emission reduction trends from anthropogenic sources were not sufficiently represented in the reanalysis dataset. Overall, the TL-CNN model provides more accurate pollutant concentration fields for offshore regions with limited observations, offering strong support for marine atmospheric environment studies and assessments of marine ecological effects. It also demonstrates the potential of combining deep learning and transfer learning in atmospheric chemistry research.
类型
出版物
Atmosphere

Authors
2023级数学硕士研究生
我目前是一名数学专业研究生,研究方向是人工智能海洋大气大数据分析领域, 我的研究核心围绕海洋大气数据的采集、预处理、建模与分析展开,依托数学专业扎实的数理基础、 数值分析能力和统计建模功底,运用机器学习、深度学习等人工智能技术,为海洋环境预测、气象灾害预警、 海洋资源开发等相关领域提供理论支撑与技术参考。

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副教授
中国海洋大学博士,博士后,现任数学系副主任兼应用数学教研室主任,青岛市人工智能海洋技术创新中心骨干,发表高水平论文40余篇,承担国家自然科学基金、国家博士后基金、青岛市博士后基金以及人工智能技术开发项目等10余项。多次获得“青岛科技大学先进工作者”、“青岛科技大学先进女职工”、青岛科技大学毕业生“我最喜爱的教师”等荣誉称号;指导本科生和研究生参加数学建模竞赛,获得省级以上奖项10余项;主持参与多项研究生和本科生课程教改项目。