Machine learning based bias correction for numerical chemical transport models

Journal Article (2021)
Author(s)

Min Xu (Shanghai University of Engineering Science)

Jianbing Jin (Nanjing University of Information Science and Technology)

Guoqiang Wang (Shanghai University of Engineering Science)

Arjo Segers (TNO)

T. Deng (TU Delft - Mathematical Physics)

H.X. Lin (TU Delft - Mathematical Physics)

Research Group
Mathematical Physics
DOI related publication
https://doi.org/10.1016/j.atmosenv.2020.118022
More Info
expand_more
Publication Year
2021
Language
English
Research Group
Mathematical Physics
Volume number
248
Pages (from-to)
1 - 10

Abstract

Air quality warning and forecasting systems are usually based on numerical chemical transport models (CTMs). Those dynamic models perform predictions by simulating the life cycles of the atmospheric components, including emission, transport and removal. However, the accuracy of these CTMs are still limited because of many imperfections, e.g., uncertainties in the input sources such as emission inventories, wind fields, boundary conditions, as well as insufficient knowledge about the atmospheric dynamics themselves. All these will mislead the CTM prediction constantly, or in a systematic way. In this paper, an approach based on machine learning is applied to predict model bias in the CTM. It is then combined with the CTM for formulating a hybrid forecast system. To our knowledge, it is the first time that machine learning methods are used in this way. The hybrid system is tested on the fine particular matter (PM2.5) prediction in Shanghai, China. The results showed that machine learning can be an effective tool to improve the accuracy of CTM prediction. In case of short term PM2.5 forecast (forecast length less than 12 h), statistical metrics of the root mean square error, mean absolute error, mean absolute percentage error as well as the air quality rank predicted accuracy all show the forecast skill is remarkably improved; while for long term prediction, improvement is not ensured.

No files available

Metadata only record. There are no files for this record.