Global Clean Air

Air Pollution Research Reveals Exposure Disparities in Bay Area

After working with EDF and partners to map hyperlocal pollution in Oakland, CA using Google Street View vehicles, researchers Dr. Joshua Apte (University of California, Berkeley) and Dr. Sarah Chambliss (University of Texas at Austin) collected additional mobile data across the San Francisco Bay Area to expand understanding of street-level air quality and disparities in pollution exposure. Their new paper, Local- and regional-scale racial and ethnic disparities in air pollution determined by long-term mobile monitoring” was published in September in the Proceedings of the National Academies of Sciences. It builds on previous work in Oakland published by Dr. Apte in 2017. I recently spoke with Dr. Chambliss about the latest findings.

What were the key findings of this new research?

Dr. Chambliss: In this study, we broadened the geographic scope of our mobile pollution measurements beyond Oakland to neighborhoods across the Bay Area. Throughout the other areas we drove across the SF Bay Area, we saw some of the same types of patterns that we originally described in the original Oakland study: steep increases in concentrations near major roads (especially for nitric oxide, or NO) and some additional localized peaks that could be attributable to other localized sources that we are still working to identify.

We also saw evidence that the types of sources contributing to local pollution differ among study areas: some areas have more prominent peaks for black carbon, others for NO. The mix of pollution is different in different areas around the Bay. We saw that some neighborhoods were much cleaner than others, and some neighborhoods had higher levels of some pollutants but were not higher for every pollutant. Because we had looked at so many different types of neighborhoods, we saw an opportunity to extend the Oakland analysis by also asking: Who lives in the neighborhoods that are more polluted, and how do pollution patterns compare to or interact with patterns of racial/ethnic segregation that persist in the Bay Area?

After connecting the street-level air pollution data with census data, we found that there were systematic differences in pollution exposure across racial/ethnic groups. Specifically, Black and Hispanic/Latino people had 10-30% higher average exposure to NO, nitrogen dioxide (NO2) and ultrafine particles (UFP) than the population as a whole, while white non-Hispanic residents had 20-30% lower average exposure. The neighborhoods where we measured the cleanest air tended to have higher proportions of white residents, as well. In contrast, neighborhoods where more people of color lived tended to have higher concentrations not just near roadways but in areas of the neighborhood we would consider “background” locations: residential areas where we expect conditions to be cleaner.

Why do these disparities in air pollution exposure matter?

Dr. Chambliss: Air pollution can have major short-term and long-term health impacts. Studies have shown linkages among the group of pollutants we looked at–NO and nitrogen dioxide (NO2), black carbon, and ultrafine particles- with hospital visits, chronic lung and heart disease, with particular risks for the health of newborns and the elderly.

Because air pollution causes systemic inflammation, its impacts spread far beyond the lungs: there is evidence of air pollution affecting cognitive development and diabetes prevalence, for example. Those exposed to higher air pollution are at higher risk of a wide range of health problems. When disparities fall along lines of socioeconomic status or other social vulnerabilities, the health risks caused by air pollution can compound with issues like lower access to medical care or less capacity to handle the financial burden of health issues.

How did you collect such detailed street-level pollution data?

Dr. Chambliss: We had several partnerships that allowed us to achieve this level of coverage. A partnership with Google Earth Outreach allowed us to use Google Street View vehicles to drive “blackout” patterns, where we drove down every road in a study area each time we visited. We also partnered with Aclima, Inc., who installed laboratory-grade instrumentation in these cars and kept the equipment maintained and calibrated for near-daily driving.

We drove two of these “mobile laboratories” nearly every weekday over a 32-month period, visiting different neighborhoods each day and revisiting each neighborhood every 6 weeks or so to collect measurements representing different seasonal conditions.

What kind of policy implications do you see for this work?

Dr. Chambliss: That there are higher pollution levels in neighborhoods with more people of color isn’t a new finding in and of itself, but the level of spatial detail that we could bring to this analysis provided some additional insights. Often, within one neighborhood or several adjoining neighborhoods, there is a wide range in the outdoor pollution levels at different addresses. And these differences do not typically lie along racial/ethnic lines. It’s only when you zoom out to look at city-wide patterns of segregation that you see racial/ethnic disparity in exposures. This is strongly influenced by neighborhoods where the lowest levels of pollutants like NO2 and UFP are higher than even peak levels in cleaner neighborhoods.

This gives us an indication of how policies could be improved to geographically target pollution mitigations to better address disparity and promote environmental justice. Look specifically at communities where the baseline pollution levels are higher and where residents are predominantly people of color. This segregation is often connected with historically racist policies such as discriminatory lending policies or racial covenants built into housing deeds. While those policies may have ended, they leave a persistent legacy placing communities of people of color in areas with higher pollution and greater environmental health risks. To help reverse these patterns of environmental injustice, it’s critical to work to clean up the air pollution sources within those neighborhoods.

What does work like this mean for the future of hyperlocal air pollution monitoring?

Dr. Chambliss: An implication of how localized some pollutant peaks are – a phenomenon that mobile monitoring is particularly suited to measure – is that when you cut emissions from a particular source or type of source, you will see major benefits very close to that source but more moderate reductions everywhere else. If you want to evaluate the full benefits of such a policy, making measurements with fuller spatial coverage may show a magnitude of improvement that wouldn’t be reflected at a single fixed monitoring site. For example, anti-idling policies would help specifically at locations with a lot of truck activity, like ports or warehouses, but it may not be obvious from the outset where the most idling occurs. Mobile monitoring is a way to find those areas that really benefit.

Another thing this research shows is how important it is to spread out measurements over a broader geography as much as possible, given time and resource constraints. It would be great to do a similar study in another US city, because each one has a unique history of growth, industrialization and zoning, and segregation or discriminatory housing policies. It would also be interesting to look at cities outside of the US where urban development patterns, both demographic and land-use related, are much different.

What’s next for you in this field?

Dr. Chambliss: We are continuing to work with these mobile monitoring data to gather further insight into what features of the urban environment lead to pollution hot spots.

 

 

Also posted in Academic, Health, Homepage / Comments are closed

Better data is critical to address health disparities in air pollution’s impacts

Ananya Roy, Senior Health Scientist, and Maria Harris, Environmental Epidemiologist 

The last several months have seen a wave of momentum in policies seeking toward advance environmental justice and equity through better data collection and mapping. In his first week in office, President Biden signed an executive order to initiate the development of a screening and mapping tool to identify disadvantaged communities with the goal of informing equitable decision making. And legislation introduced in the House of Representatives and Senate would launch a similar effort. This focus on data and mapping is critical.  

Read More »

Also posted in Environmental Justice, Government Official/Policymaker, Health, Homepage, Partners, Public Health/Environmental Official, Science / Comments are closed

Global Clean Air Blog: How increasing data transparency can help reduce pollution

By Millie Chu Baird, Associate Vice President, Office of the Chief Scientist

Harnessing data for good has been at the heart of EDF science for decades. Whether we’re identifying gas leaks underground or methane leaks from the air, we want to use the data we collect and analyze to help the planet and the people who inhabit it. Sometimes, that means turning it over to another organization that can do even more with it.

OpenAQ now features both reference-grade and low-cost sensor data.

One of the keys to fighting air pollution inequity is data transparency—ensuring that as wide a range of people as possible have access to as much of it as possible.

When EDF embarked on our air pollution work several years ago, we partnered with Google, whose Street View Cars drove 23,000 kilometers in Oakland, CA, collecting 3 million unique measurements of black carbon (BC) particles, nitric oxide (NO) and nitrogen dioxide (NO2). This was an astounding dataset at the time, and it took careful analysis and thoughtful work with critical community partners, who helped us better understand the hot spots the data revealed.

Those research partners—the West Oakland Environmental Indicators Project—showed us just how critical getting data into the hands of a robust, engaged community is to turning insights into the kind of action that will improve air pollution, which kills an estimated 6.5 million people every year. They provided essential local insights to help our scientists interpret the data and draw relevant conclusions. This collaboration, built on long-term engagement and trust and a recognition of their role in community organizing in data analysis, was critical to informing policy action. 

Taking advantage of multiple types of pollution and health data and a new legal mandate from the state legislature, the West Oakland Environmental Indicators Project worked with community members and the Bay Area Air Quality Management District to co-create the West Oakland Community Emissions Reduction Plan, turning air pollution data in action.

Merging our data with a robust, community platform

That’s why I’m excited that OpenAQ will be using the datasets we’ve collected and analyzed over the last 5 years. They’ve invested in and continue to build and maintain a robust platform for sharing data from a variety of sources, including government monitors, PurpleAir, HabitatMap and Carnegie Mellon University.

Through workshops in various countries around the world—currently held online—they’ve developed and nurtured a community of researchers and dedicated activists who can access air pollution information in one central location. After all, this air quality sensor revolution is only a revolution if people can see the data. It’s foundational to the ability to take action–whether in West Oakland, California or on the other side of the world.  

This data they present isn’t just for air quality scientists. Their dashboards are accessible enough for those with even a casual interest in air pollution to read and understand. For more technical users, OpenAQ provides an API to pull data for analysis.

As momentum grows to tackle the global air pollution crisis, groups like OpenAQ will be instrumental in helping EDF drive clean air action by shining a light on air quality at a scale and scope never seen before. We hope you’ll spend some time on their platforms, explore the data, and share it with your community. 

Also posted in Community Organizer, Partners / Comments are closed

How new data is helping West Oakland clear the air

Fern Uennatornwaranggoon is EDF’s Air Quality Policy Manager.

Community groups are using California’s first-of-its-kind Community Air Protection Plan to reduce pollution in the city’s most impacted areas.

Owning Our Air

The fight for healthier air in West Oakland spans generations. Just Ask Ms. Margaret Gordon, who has been at it since 1992. “I’ve had 16 grandchildren and one great-grandchild since then,” says the co-director of the West Oakland Environmental Indicators Project (WOEIP). Two years ago her community’s efforts got a much-needed boost: California passed AB 617, establishing a program requiring the state to reduce air pollution in those areas most impacted. Under the Community Air Protection Plan, community groups, environmental organizations, industry and local air districts work with the California Air Resources Board (CARB) to develop improvement plans.

Ms. Margaret, who has been an integral part of West Oakland’s efforts, tells EDF’s Fern Uennatornwaranggoon how the plan unfolded and how data gathered from Google Street View cars fed into its development.

Fern: Why did CARB turn to WOEIP to facilitate the community air plan?

Ms. Margaret: We were asked, because of the work we have done over the last 25 years on air quality. We had demonstrated our capacity to participate technically with the air district staff. In 2015 and 2016, we started doing the air monitoring with EDF, Google, the University of Texas and Aclima, and we also deployed 100 sensors with UC Berkeley throughout West Oakland for the 100×100 project.

Fern: WOEIP and the local Air District serve as co-leads for the plan. What was the process like for developing it?

Ms. Margaret: We had a partner agreement and a charter that outlined tasks, roles, materials development, who was going to meet with whom, and what technology we were going to use. And we had neutral facilitators to support the process—all those things were identified up front. We had a steering committee that met once a month for 17 months. Steering committee members had to residents or be part of an organization within the defined target area, so they could report back to their groups. We had people from neighborhood associations and business groups, the port and a truck working group.

Fern: So what were the steps you had to go through to get to the plan?

Ms. Margaret: We had to merge the modeling with the monitoring, and we had to communicate that to the West Oakland community. We worked with the Bay Area Air Quality Management District engineers and scientists to break down the information into small bites so people could clearly understand what we were talking about—it wasn’t dumbing it down, but we didn’t want to overwhelm people. The other part of the work was developing the strategies to reduce pollution. Some of the strategies came from the co-leads, but 75% came from the residents, based on the things they saw impacting emissions in West Oakland. The strategies were all based on 4 areas of concern: exposure, proximity, land use and enforcement.

Fern: How did the data from the Google study help in developing strategies to reduce pollution?

Ms. Margaret: It helped us establish priorities and gave us ground-up evidence we’d never had before The Google car data was the first time outside of us having our own backpacks that we were able to establish on-the-ground air monitoring. It showed us hot spots, more hyperlocal, more refined data than we’d seen before. It gave us another set of lenses to hone in and really focus on certain areas. And then to overlay that with the Kaiser Permanente health data—showing cardiovascular disease. That closed a lot of gaps and connected the dots.

Fern: How did the community use data to influence the truck plan on 7th street, which is designated as a truck route?

Ms. Margaret: Between Brush Street and the Frontage Road is where we have very low- to medium-income housing. This is one of the highest sensitive receptor areas.

Fern: There’s a higher density of children under 5 and a bunch of childcare centers.

Ms. Margaret: A school, a neighborhood clinic, the family resource center, stores, and a commercial area. It’s a multi-racial community living along that corridor, and we have a homeless population.

Fern: The city had proposed prohibiting trucks from near Frontage to not quite Market, but then from Market almost all the way to the 980, they’d just leave it as is. How do you think the data addressed that?

Ms. Margaret: Looking at the data and seeing pollution all the way on 7th street, the city is looking at the truck plan again and maybe banning truck traffic along the whole stretch. They have to study it first.

Fern: It’s also worth mentioning that you and your team has been using the air quality maps for educational and outreach purpose. And next month, the Oakland Museum of California will be featuring WOEIP’s work on air pollution and this kind of spatial data in a new exhibition.

Fern: Did you learn anything in this process that would be useful to other communities trying to reduce pollution?

Ms. Margaret: You have to have the commitment and the foresight and be willing to see the light at the end of the tunnel, to go through the hoops and the barriers and the challenges. And you have to be able to transcend your skills to other people within your community, while also transcending the understanding of agency staff and business. We have to figure out how we could coexist to make this better—this is all about collaboration and problem solving and having real, authentic equity in doing what needs to be done. And it’s not always about complaining but also having some resolution.

Learn more about our air quality mapping projects in Oakland.

 

This was originally posted on the EDF Health blog.

Also posted in Health, Public Health/Environmental Official / Authors: / Comments are closed