A New Hybrid Deep Sequence Model for Decomposing, Interpreting, and Predicting Sulfur Dioxide Decline in Coastal Cities of Northern China

2025年3月14日·
Guoju Wang
,
Rongjie Zhu
,
宫响
,
Xiaoling Li
,
Yuanzheng Gao
,
Wenming Yin
,
Renzheng Wang
,
Huan Li
,
Huiwang Gao
,
Tao Zou
· 0 分钟阅读时长
摘要
The recent success of emission reduction policies in China has significantly lowered sulfur dioxide (SO2) levels. However, accurately forecasting these concentrations remains challenging due to their inherent non-stationary tendency. This study introduces an innovative hybrid deep learning model, RF-VMD-Seq2Seq, combining the Random Forest (RF) algorithm, Variational Mode Decomposition (VMD), and the Sequence-to-Sequence (Seq2Seq) framework to improve SO2 concentration forecasting in five coastal cities of northern China. Our results show that the predicted SO2 concentrations closely align with observed values, effectively capturing fluctuations, outliers, and extreme events-such as sharp declines the Novel Coronavirus Pneumonia (COVID-19) pandemic in 2020-along with the upper 5% of SO2 levels. The model achieved high coefficients of determination ($>$0.91) and Pearson’s correlation ($>$0.96), with low prediction errors (RMSE $<$ 1.35 mu g/m(3), MAE $<$ 0.94 mu g/m(3), MAPE $<$ 15%). The low-frequency band decomposing from VMD showed a notable long-term decrease in SO2 concentrations from 2013 to 2020, with a sharp decline since 2018 during heating seasons, probably due to the ‘Coal-to-Natural Gas’ policy in northern China. The input sequence length of seven steps was recommended for the prediction model, based on high-frequency periodicities extracted through VMD, which significantly improved our model performance. This highlights the critical role of weekly-cycle variations in SO2 levels, driven by anthropogenic activities, in enhancing the accuracy of one-day-ahead SO2 predictions across northern China’s coastal regions. The results of the RF model further reveal that CO and NO2, sharing common anthropogenic sources with SO2, contribute over 50% to predicting SO2 concentrations, while meteorological factors-relative humidity (RH) and air temperature-contribute less than 20%. Additionally, the integration of VMD outperformed both the standard Seq2Seq and Ensemble Empirical Mode Decomposition (EEMD)-enhanced Seq2Seq models, showcasing the advantages of VMD in predicting SO2 decline. This research highlights the potential of the RF-VMD-Seq2Seq model for non-stationary SO2 prediction and its relevance for environmental protection and public health management.
类型
出版物
Sustainability
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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。
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