Literature DB >> 31244060

Fusion Method Combining Ground-Level Observations with Chemical Transport Model Predictions Using an Ensemble Deep Learning Framework: Application in China to Estimate Spatiotemporally-Resolved PM2.5 Exposure Fields in 2014-2017.

Baolei Lyu1, Yongtao Hu2, Wenxian Zhang3, Yunsong Du4, Bin Luo4, Xiaoling Sun5, Zhe Sun6, Zhu Deng6, Xiaojiang Wang1, Jun Liu1, Xuesong Wang7, Armistead G Russell2.   

Abstract

Atmospheric chemical transport models (CTMs) have been widely used to simulate spatiotemporally resolved PM2.5 concentrations. However, CTM results are usually prone to bias and errors. In this study, we improved the accuracy of PM2.5 predictions by developing an ensemble deep learning framework to fuse model simulations with ground-level observations. The framework encompasses four machine-learning models, i.e., general linear model, fully connected neural network, random forest, and gradient boosting machine, and combines them by stacking approach. This framework is applied to PM2.5 concentrations simulated by the Community Multiscale Air Quality (CMAQ) model for China from 2014 to 2017, which has complete spatial coverage over the entirety of China at a 12-km resolution, with no sampling biases. The fused PM2.5 concentration fields were evaluated by comparing with an independent network of observations. The R2 values increased from 0.39 to 0.64, and the RMSE values decreased from 33.7 μg/m3 to 24.8 μg/m3. According to the fused data, the percentage of Chinese population residing under the level II National Ambient Air Quality Standards of 35 μg/m3 for PM2.5 has increased from 46.5% in 2014 to 61.7% in 2017. The method is readily adapted to utilize near-real-time observations for operational analyses and forecasting of pollutant concentrations and can be extended to provide source apportionment forecasts as well.

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Year:  2019        PMID: 31244060     DOI: 10.1021/acs.est.9b01117

Source DB:  PubMed          Journal:  Environ Sci Technol        ISSN: 0013-936X            Impact factor:   9.028


  7 in total

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Authors:  Wenlong Gong; Brian J Reich; Howard H Chang
Journal:  Environ Res Commun       Date:  2021-10-27

2.  High-Resolution Urban Air Quality Mapping for Multiple Pollutants Based on Dense Monitoring Data and Machine Learning.

Authors:  Rong Guo; Ying Qi; Bu Zhao; Ziyu Pei; Fei Wen; Shun Wu; Qiang Zhang
Journal:  Int J Environ Res Public Health       Date:  2022-06-29       Impact factor: 4.614

3.  Flexible Bayesian Ensemble Machine Learning Framework for Predicting Local Ozone Concentrations.

Authors:  Xiang Ren; Zhongyuan Mi; Ting Cai; Christopher G Nolte; Panos G Georgopoulos
Journal:  Environ Sci Technol       Date:  2022-03-21       Impact factor: 11.357

4.  Statistical Emulation of Winter Ambient Fine Particulate Matter Concentrations From Emission Changes in China.

Authors:  Luke Conibear; Carly L Reddington; Ben J Silver; Ying Chen; Christoph Knote; Stephen R Arnold; Dominick V Spracklen
Journal:  Geohealth       Date:  2021-05-01

5.  Deep Ensemble Machine Learning Framework for the Estimation of PM2.5 Concentrations.

Authors:  Wenhua Yu; Shanshan Li; Tingting Ye; Rongbin Xu; Jiangning Song; Yuming Guo
Journal:  Environ Health Perspect       Date:  2022-03-07       Impact factor: 11.035

6.  Multi-stage ensemble-learning-based model fusion for surface ozone simulations: A focus on CMIP6 models.

Authors:  Zhe Sun; Alexander T Archibald
Journal:  Environ Sci Ecotechnol       Date:  2021-09-15

7.  Database Oriented Big Data Analysis Engine Based on Deep Learning.

Authors:  Xiaoran Shang
Journal:  Comput Intell Neurosci       Date:  2022-08-31
  7 in total

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