Deep Sequence Learning for Prediction of Daily NO2 Concentration in Coastal Cities of Northern China

2023年2月27日·
Xingbin Jia
宫响
宫响
Corresponding
,
Xiaohuan Liu
,
Xianzhi Zhao
,
He Meng
,
Quanyue Dong
,
Guangliang Liu
,
Huiwang Gao
· 2 分钟阅读时长
摘要
Nitrogen dioxide (NO2) is an important precursor of atmospheric aerosol. Forecasting urban NO2 concentration is vital for effective control of air pollution. This paper proposes a hybrid deep learning model for predicting daily average NO2 concentrations on the next day, based on atmospheric pollutants, meteorological data, and historical data during 2014 to 2020 in five coastal cities of Shandong peninsula, northern China. A random Forest (RF) algorithm was used to select input variables to reduce data dimensionality trained by the sequence to sequence (Seq2Seq) the model and describe how the Seq2Seq model understands each predictor variable. The hybrid model combining an RF with Seq2Seq network (RF-S2S) was evaluated and achieved a Pearson’s correlation coefficient of 0.93, a Nash–Sutcliffe coefficient (NS) of 0.79, a Root Mean Square Error (RMSE) of 5.85 µg/m3, a Mean Absolute Error (MAE) of 4.50 µg/m3, and a Mean Absolute Percentage Error (MAPE) of 20.86%. Feature selection by an RF model improves the performance of the Seq2Seq model, reducing errors by 19.7% (RMSE), 20.3% (MAE), and 29.3% (MAPE), respectively. Carbon monoxide (CO) and PM10 are two common, important features influencing the prediction of NO2 concentrations in coastal areas of northern China. The results of RF-S2S models can capture general trends and disruptions more accurately than can long-short term memory (LSTM) models with and without feature selection. The decreasing tendency of NO2 from 2014 to 2020 illustrated by the empirical mode decomposition (EMD) method is one important obstacle to improving the RF-S2S prediction accuracy. An EMD-based RF-S2S model could help to perform the short-term forecast of NO2 concentrations efficiently.
类型
出版物
In atmosphere
datasets

信息卡片

  • 中文名称: 中国北方沿海城市NO₂浓度预测数据集
  • 英文名称: Dataset for prediction of daily NO₂ concentration in coastal cities of northern China
  • DOI: [https://doi.org/10.3390/atmos14030467]
  • CSTR:
  • 数据集编码:
  • 数据共享方式:
  • 授权许可方式: CC BY 4.0(论文开放获取许可)
  • 学科分类: 大气环境 / 空气污染预测
  • 数据量: 55.5M

基本信息

  • 时间范围: 2014年—2020年
  • 水平分辨率: 城市站点数据(非格点)
  • 空间区域: 中国山东半岛沿海城市
  • 垂直分辨率: 地面空气质量监测数据
  • 经度范围:
  • 时间分辨率: 日平均
  • 纬度范围:
  • 存储格式: csv
  • 要素信息: NO₂;PM₂.₅;PM₁₀;SO₂;CO;O₃;相对湿度;气压;风速;气温
  • 关键词:
  • 资助项目编码: U1906215;42175129;S2022KY029
  • 资助项目: 山东联合基金;国家自然科学基金;青岛科技大学研究生自主创新专项

数据联系信息

  • 数据生产者: 
  • 单位: 空气质量监测数据平台;中国气象数据服务中心
  • 联系方式: 
  • 中心联系人: 
  • 联系方式: 

数据使用声明

  • 声明内容: 为尊重知识产权、保障生产者和数据服务提供者的权益,请数据使用者在基于本数据所产生的研究成果(包括项目评估报告、验收报告,以及学术论文或毕业论文等) 中标注数据来源,并按照[文献引用方式]标注需引用的参考文献,同时将可公开成果提交到本平台。
  • 引用方式:
  • 致谢方式:
宫响
Authors
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。
Authors