Data‐Driven Placement of PM2.5 Air Quality Sensors in the United States: An Approach to Target Urban Environmental Injustice

Author:

Kelp Makoto M.1ORCID,Fargiano Timothy C.2,Lin Samuel3,Liu Tianjia4,Turner Jay R.5ORCID,Kutz J. Nathan6,Mickley Loretta J.7ORCID

Affiliation:

1. Department of Earth and Planetary Sciences Harvard University Cambridge MA USA

2. Center for the Environment Harvard University Cambridge MA USA

3. Department of Computer Science Harvard University Cambridge MA USA

4. Department of Earth System Science University of California, Irvine Irvine CA USA

5. Department of Energy Environmental and Chemical Engineering Washington University St. Louis MO USA

6. Department of Applied Mathematics University of Washington Seattle WA USA

7. John A. Paulson School of Engineering and Applied Sciences Harvard University Cambridge MA USA

Abstract

AbstractIn the United States, citizens and policymakers heavily rely upon Environmental Protection Agency mandated regulatory networks to monitor air pollution; increasingly they also depend on low‐cost sensor networks to supplement spatial gaps in regulatory monitor networks coverage. Although these regulatory and low‐cost networks in tandem provide enhanced spatiotemporal coverage in urban areas, low‐cost sensors are located often in higher income, predominantly White areas. Such disparity in coverage may exacerbate existing inequalities and impact the ability of different communities to respond to the threat of air pollution. Here we present a study using cost‐constrained multiresolution dynamic mode decomposition (mrDMDcc) to identify the optimal and equitable placement of fine particulate matter (PM2.5) sensors in four U.S. cities with histories of racial or income segregation: St. Louis, Houston, Boston, and Buffalo. This novel approach incorporates the variation of PM2.5 on timescales ranging from 1 day to over a decade to capture air pollution variability. We also introduce a cost function into the sensor placement optimization that represents the balance between our objectives of capturing PM2.5 extremes and increasing pollution monitoring in low‐income and nonwhite areas. We find that the mrDMDcc algorithm places a greater number of sensors in historically low‐income and nonwhite neighborhoods with known environmental pollution problems compared to networks using PM2.5 information alone. Our work provides a roadmap for the creation of equitable sensor networks in U.S. cities and offers a guide for democratizing air pollution data through increasing spatial coverage of low‐cost sensors in less privileged communities.

Publisher

American Geophysical Union (AGU)

Subject

Health, Toxicology and Mutagenesis,Management, Monitoring, Policy and Law,Public Health, Environmental and Occupational Health,Pollution,Waste Management and Disposal,Water Science and Technology,Epidemiology,Global and Planetary Change

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