Literature DB >> 35312316

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

Xiang Ren1,2, Zhongyuan Mi1,3, Ting Cai1, Christopher G Nolte4, Panos G Georgopoulos1,2,3,5.   

Abstract

3D-grid-based chemical transport models, such as the Community Multiscale Air Quality (CMAQ) modeling system, have been widely used for predicting concentrations of ambient air pollutants. However, typical horizontal resolutions of nationwide CMAQ simulations (12 × 12 km2) cannot capture local-scale gradients for accurately assessing human exposures and environmental justice disparities. In this study, a Bayesian ensemble machine learning (BEML) framework, which integrates 13 learning algorithms, was developed for downscaling CMAQ estimates of ozone daily maximum 8 h averages to the census tract level, across the contiguous US, and was demonstrated for 2011. Three-stage hyperparameter tuning and targeted validations were designed to ensure the ensemble model's ability to interpolate, extrapolate, and capture concentration peaks. The Shapley value metric from coalitional game theory was applied to interpret the drivers of subgrid gradients. The flexibility (transferability) of the 2011-trained BEML model was further tested by evaluating its ability to estimate fine-scale concentrations for other years (2012-2017) without retraining. To demonstrate the feasibility of using the BEML approach to strictly "data-limited" situations, the model was applied to downscale CMAQ outputs for a future-year scenario-based simulation that considers effects of variations in meteorology associated with climate change.

Entities:  

Keywords:  data fusion; environmental and climate justice; exposure assessment; interpretable machine learning; ozone

Mesh:

Substances:

Year:  2022        PMID: 35312316      PMCID: PMC9133919          DOI: 10.1021/acs.est.1c04076

Source DB:  PubMed          Journal:  Environ Sci Technol        ISSN: 0013-936X            Impact factor:   11.357


  33 in total

1.  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.

Authors:  Baolei Lyu; Yongtao Hu; Wenxian Zhang; Yunsong Du; Bin Luo; Xiaoling Sun; Zhe Sun; Zhu Deng; Xiaojiang Wang; Jun Liu; Xuesong Wang; Armistead G Russell
Journal:  Environ Sci Technol       Date:  2019-06-21       Impact factor: 9.028

2.  Toward a Unified Terminology of Processing Levels for Low-Cost Air-Quality Sensors.

Authors:  Philipp Schneider; Alena Bartonova; Nuria Castell; Franck R Dauge; Michel Gerboles; Gayle S W Hagler; Christoph Hüglin; Roderic L Jones; Sean Khan; Alastair C Lewis; Bas Mijling; Michael Müller; Michele Penza; Laurent Spinelle; Brian Stacey; Matthias Vogt; Joost Wesseling; Ronald W Williams
Journal:  Environ Sci Technol       Date:  2019-07-29       Impact factor: 9.028

3.  Comparison of Machine Learning and Land Use Regression for fine scale spatiotemporal estimation of ambient air pollution: Modeling ozone concentrations across the contiguous United States.

Authors:  Xiang Ren; Zhongyuan Mi; Panos G Georgopoulos
Journal:  Environ Int       Date:  2020-06-25       Impact factor: 9.621

4.  An Ensemble Machine-Learning Model To Predict Historical PM2.5 Concentrations in China from Satellite Data.

Authors:  Qingyang Xiao; Howard H Chang; Guannan Geng; Yang Liu
Journal:  Environ Sci Technol       Date:  2018-11-01       Impact factor: 9.028

5.  Spatiotemporal distributions of surface ozone levels in China from 2005 to 2017: A machine learning approach.

Authors:  Riyang Liu; Zongwei Ma; Yang Liu; Yanchuan Shao; Wei Zhao; Jun Bi
Journal:  Environ Int       Date:  2020-06-07       Impact factor: 9.621

6.  Deep Learning for Prediction of the Air Quality Response to Emission Changes.

Authors:  Jia Xing; Shuxin Zheng; Dian Ding; James T Kelly; Shuxiao Wang; Siwei Li; Tao Qin; Mingyuan Ma; Zhaoxin Dong; Carey Jang; Yun Zhu; Haotian Zheng; Lu Ren; Tie-Yan Liu; Jiming Hao
Journal:  Environ Sci Technol       Date:  2020-07-01       Impact factor: 9.028

7.  Development of a stacked ensemble model for forecasting and analyzing daily average PM2.5 concentrations in Beijing, China.

Authors:  Binxu Zhai; Jianguo Chen
Journal:  Sci Total Environ       Date:  2018-04-24       Impact factor: 7.963

8.  A comparison of statistical and machine learning methods for creating national daily maps of ambient PM2.5 concentration.

Authors:  Veronica J Berrocal; Yawen Guan; Amanda Muyskens; Haoyu Wang; Brian J Reich; James A Mulholland; Howard H Chang
Journal:  Atmos Environ (1994)       Date:  2019-11-14       Impact factor: 4.798

9.  A hybrid model for spatially and temporally resolved ozone exposures in the continental United States.

Authors:  Qian Di; Sebastian Rowland; Petros Koutrakis; Joel Schwartz
Journal:  J Air Waste Manag Assoc       Date:  2017-01       Impact factor: 2.235

10.  An Ensemble Learning Approach for Estimating High Spatiotemporal Resolution of Ground-Level Ozone in the Contiguous United States.

Authors:  Weeberb J Requia; Qian Di; Rachel Silvern; James T Kelly; Petros Koutrakis; Loretta J Mickley; Melissa P Sulprizio; Heresh Amini; Liuhua Shi; Joel Schwartz
Journal:  Environ Sci Technol       Date:  2020-09-01       Impact factor: 9.028

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