Machine Learning and Air Quality Modeling

被引:0
作者
Keller, Christoph A. [1 ,2 ]
Evans, Mathew J. [3 ]
Kutz, J. Nathan [4 ]
Pawson, Steven [1 ]
机构
[1] NASA, Goddard Space Flight Ctr, Global Modeling & Assimilat Off, Greenbelt, MD 20771 USA
[2] Univ Space Res Assoc USRA, Columbia, MD USA
[3] Univ York, Wolfson Atmospher Chem Lab, York, N Yorkshire, England
[4] Univ Washington, Dept Appl Math, Seattle, WA 98195 USA
来源
2017 IEEE INTERNATIONAL CONFERENCE ON BIG DATA (BIG DATA) | 2017年
关键词
Air Quality Modeling; Machine Learning; Big Data Analytics; Statistical Sub-samplitlg; EMPIRICAL INTERPOLATION METHOD; REDUCTION;
D O I
暂无
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Air quality models are limited by the computational costs associated with the simulation of the complex chemical and dynamical processes of reactive pollutants in the atmosphere. We discuss here the potential usage of machine learning and reduced-order modeling techniques to mitigate some of these limitations. We first give an overview of three new methods emerging from the field of signal processing - sparse sampling, randomized matrix decompositions and the construction of reduced order models - and discuss them in the context of air quality modeling. In the second part we discuss the substitution of the standard chemical solver of the chemistry model with a random forest regression model trained through machine learning. We find that this approach shows promising initial results for important air pollutants such as ozone (O-3), predicting concentrations that deviate less than 10% from the values computed by the traditional model. The here highlighted methods all have the potential to significantly reduce the computational burden of air quality models while maintaining the model's capability to capture all features relevant to air quality. Such lightweight air quality models offer new opportunities for air quality forecasting and to assimilate the rapidly increasing array of air quality observations.
引用
收藏
页码:4570 / 4576
页数:7
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