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Selecting Data Analytic and Modeling Methods to Support Air Pollution and Environmental Justice Investigations: A Critical Review and Guidance Framework

Journal

ENVIRONMENTAL SCIENCE & TECHNOLOGY
Volume 56, Issue 5, Pages 2843-2860

Publisher

AMER CHEMICAL SOC
DOI: 10.1021/acs.est.1c01739

Keywords

Environmental Justice; Air Pollution; Methods; Personal Exposure; Kriging Interpolation; Land Use Regression; Machine Learning; Chemical Transport Modeling

Funding

  1. Social Sciences and Humanities Research Council of Canada (SSHRC) [435-2018-0379]
  2. University of British Columbia

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This article reviews the various data analysis and modeling methods used in previous studies on air pollution and environmental injustice, and proposes a guidance framework for selecting these methods to improve accuracy, interpretability, spatiotemporal features, and usability of the analysis.
Given the serious adverse health effects associated with many pollutants, and the inequitable distribution of these effects between socioeconomic groups, air pollution is often a focus of environmental justice (EJ) research. However, EJ analyses that aim to illuminate whether and how air pollution hazards are inequitably distributed may present a unique set of requirements for estimating pollutant concentrations compared to other air quality applications. Here, we perform a scoping review of the range of data analytic and modeling methods applied in past studies of air pollution and environmental injustice and develop a guidance framework for selecting between them given the purpose of analysis, users, and resources available. We include proxy, monitor-based, statistical, and process-based methods. Upon critically synthesizing the literature, we identify four main dimensions to inform method selection: accuracy, interpretability, spatiotemporal features of the method, and usability of the method. We illustrate the guidance framework with case studies from the literature. Future research in this area includes an exploration of increasing data availability, advanced statistical methods, and the importance of science-based policy.

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