32 research outputs found
Recommended from our members
Comparing Building and Neighborhood-Scale Variability of CO₂ and O₃ to Inform Deployment Considerations for Low-Cost Sensor System Use.
The increased use of low-cost air quality sensor systems, particularly by communities, calls for the further development of best-practices to ensure these systems collect usable data. One area identified as requiring more attention is that of deployment logistics, that is, how to select deployment sites and how to strategically place sensors at these sites. Given that sensors are often placed at homes and businesses, ideal placement is not always possible. Considerations such as convenience, access, aesthetics, and safety are also important. To explore this issue, we placed multiple sensor systems at an existing field site allowing us to examine both neighborhood-level and building-level variability during a concurrent period for CO₂ (a primary pollutant) and O₃ (a secondary pollutant). In line with previous studies, we found that local and transported emissions as well as thermal differences in sensor systems drive variability, particularly for high-time resolution data. While this level of variability is unlikely to affect data on larger averaging scales, this variability could impact analysis if the user is interested in high-time resolution or examining local sources. However, with thoughtful placement and thorough documentation, high-time resolution data at the neighborhood level has the potential to provide us with entirely new information on local air quality trends and emissions
Community-Based Health and Exposure Study around Urban Oil Developments in South Los Angeles.
Oilfield-adjacent communities often report symptoms such as headaches and/or asthma. Yet, little data exists on health experiences and exposures in urban environments with oil and gas development. In partnership with Promotoras de Salud (community health workers), we gathered household surveys nearby two oil production sites in Los Angeles. We tested the capacity of low-cost sensors for localized exposure estimates. Bilingual surveys of 205 randomly sampled residences were collected within two 1500 ft. buffer areas (West Adams and University Park) surrounding oil development sites. We used a one-sample proportion test, comparing overall rates from the California Health Interview Survey (CHIS) of Service Planning Area 6 (SPA6) and Los Angeles County for variables of interest such as asthma. Field calibrated low-cost sensors recorded methane emissions. Physician diagnosed asthma rates were reported to be higher within both buffers than in SPA6 or LA County. Asthma prevalence in West Adams but not University Park was significantly higher than in Los Angeles County. Respondents with diagnosed asthma reported rates of emergency room visits in the previous 12 months similar to SPA6. 45% of respondents were unaware of oil development; 63% of residents would not know how to contact local regulatory authorities. Residents often seek information about their health and site-related activities. Low-cost sensors may be useful in highlighting differences between sites or recording larger emission events and can provide localized data alongside resident-reported symptoms. Regulatory officials should help clarify information to the community on methods for reporting health symptoms. Our community-based participatory research (CBPR) partnership supports efforts to answer community questions as residents seek a safety buffer between sensitive land uses and active oil development
Recommended from our members
Using A Low-Cost Sensor Array and Machine Learning Techniques to Detect Complex Pollutant Mixtures and Identify Likely Sources
An array of low-cost sensors was assembled and tested in a chamber environment wherein several pollutant mixtures were generated. The four classes of sources that were simulated were mobile emissions, biomass burning, natural gas emissions, and gasoline vapors. A two-step regression and classification method was developed and applied to the sensor data from this array. We first applied regression models to estimate the concentrations of several compounds and then classification models trained to use those estimates to identify the presence of each of those sources. The regression models that were used included forms of multiple linear regression, random forests, Gaussian process regression, and neural networks. The regression models with human-interpretable outputs were investigated to understand the utility of each sensor signal. The classification models that were trained included logistic regression, random forests, support vector machines, and neural networks. The best combination of models was determined by maximizing the F1 score on ten-fold cross-validation data. The highest F1 score, as calculated on testing data, was 0.72 and was produced by the combination of a multiple linear regression model utilizing the full array of sensors and a random forest classification model.</div
Low-Cost Air Quality Monitoring Tools: From Research to Practice (A Workshop Summary).
In May 2017, a two-day workshop was held in Los Angeles (California, U.S.A.) to gather practitioners who work with low-cost sensors used to make air quality measurements. The community of practice included individuals from academia, industry, non-profit groups, community-based organizations, and regulatory agencies. The group gathered to share knowledge developed from a variety of pilot projects in hopes of advancing the collective knowledge about how best to use low-cost air quality sensors. Panel discussion topics included: (1) best practices for deployment and calibration of low-cost sensor systems, (2) data standardization efforts and database design, (3) advances in sensor calibration, data management, and data analysis and visualization, and (4) lessons learned from research/community partnerships to encourage purposeful use of sensors and create change/action. Panel discussions summarized knowledge advances and project successes while also highlighting the questions, unresolved issues, and technological limitations that still remain within the low-cost air quality sensor arena
Understanding the ability of low-cost MOx sensors to quantify ambient VOCs
Volatile organic compounds (VOCs) present a unique challenge in air quality
research given their importance to human and environmental health, and their
complexity to monitor resulting from the number of possible sources and
mixtures. New technologies, such as low-cost air quality sensors, have the
potential to support existing air quality measurement methods by providing
data in high time and spatial resolution. These higher-resolution data could
provide greater insight into specific events, sources, and local variability.
Furthermore, given the potential for differences in selectivities for
sensors, leveraging multiple sensors in an array format may even be able to
provide insight into which VOCs or types of VOCs are present. During the
FRAPPE and DISCOVER-AQ monitoring
campaigns, our team was able to co-locate two sensor systems, using metal
oxide (MOx) VOC sensors, with a proton-transfer-reaction quadrupole mass
spectrometer (PTR-QMS) providing speciated VOC data. This dataset provided
the opportunity to explore the ability of sensors to estimate specific VOCs
and groups of VOCs in real-world conditions, e.g., dynamic temperature and
humidity. Moreover, we were able to explore the impact of changing VOC
compositions on sensor performance as well as the difference in selectivities
of sensors in order to consider how this could be utilized. From this
analysis, it seems that systems using multiple VOC sensors are able to
provide VOC estimates at ambient levels for specific VOCs or groups of VOCs.
It also seems that this performance is fairly robust in changing VOC
mixtures, and it was confirmed that there are consistent and useful
differences in selectivities between the two MOx sensors studied. While this
study was fairly limited in scope, the results suggest that there is the
potential for low-cost VOC sensors to support highly resolved ambient
hydrocarbon measurements. The availability of this technology could enhance
research and monitoring for public health and communities impacted by air
toxics, which in turn could support a better understanding of exposure and
actions to reduce harmful exposure.</p
Recommended from our members
Understanding the ability of low-cost MOx sensors to quantify ambient VOCs
Volatile organic compounds (VOCs) present a unique challenge in air quality research given their importance to human and environmental health, and their complexity to monitor resulting from the number of possible sources and mixtures. New technologies, such as low-cost air quality sensors, have the potential to support existing air quality measurement methods by providing data in high time and spatial resolution. These higher-resolution data could provide greater insight into specific events, sources, and local variability. Furthermore, given the potential for differences in selectivities for sensors, leveraging multiple sensors in an array format may even be able to provide insight into which VOCs or types of VOCs are present. During the FRAPPE and DISCOVER-AQ monitoring campaigns, our team was able to co-locate two sensor systems, using metal oxide (MOx) VOC sensors, with a proton-transfer-reaction quadrupole mass spectrometer (PTR-QMS) providing speciated VOC data. This dataset provided the opportunity to explore the ability of sensors to estimate specific VOCs and groups of VOCs in real-world conditions, e.g., dynamic temperature and humidity. Moreover, we were able to explore the impact of changing VOC compositions on sensor performance as well as the difference in selectivities of sensors in order to consider how this could be utilized. From this analysis, it seems that systems using multiple VOC sensors are able to provide VOC estimates at ambient levels for specific VOCs or groups of VOCs. It also seems that this performance is fairly robust in changing VOC mixtures, and it was confirmed that there are consistent and useful differences in selectivities between the two MOx sensors studied. While this study was fairly limited in scope, the results suggest that there is the potential for low-cost VOC sensors to support highly resolved ambient hydrocarbon measurements. The availability of this technology could enhance research and monitoring for public health and communities impacted by air toxics, which in turn could support a better understanding of exposure and actions to reduce harmful exposure.</p
Recommended from our members
Assessing a low-cost methane sensor quantification system for use in complex rural and urban environments
Low-cost sensors have the potential to facilitate the exploration of air
quality issues on new temporal and spatial scales. Here we evaluate a
low-cost sensor quantification system for methane through its use in two
different deployments. The first was a 1-month deployment along the
Colorado Front Range and included sites near active oil and gas operations in
the Denver-Julesburg basin. The second deployment was in an urban Los Angeles
neighborhood, subject to complex mixtures of air pollution sources including
oil operations. Given its role as a potent greenhouse gas, new low-cost
methods for detecting and monitoring methane may aid in protecting human and
environmental health. In this paper, we assess a number of linear calibration
models used to convert raw sensor signals into ppm concentration values. We
also examine different choices that can be made during calibration and data
processing and explore cross sensitivities that impact this sensor type. The
results illustrate the accuracy of the Figaro TGS 2600 sensor when methane is
quantified from raw signals using the techniques described. The results also
demonstrate the value of these tools for examining air quality trends and
events on small spatial and temporal scales as well as their ability to
characterize an area – highlighting their potential to provide preliminary
data that can inform more targeted measurements or supplement existing
monitoring networks
Recommended from our members
Evaluating and improving the reliability of gas-phase sensor system calibrations across new locations for ambient measurements and personal exposure monitoring
Advances in ambient environmental monitoring technologies are enabling concerned communities and citizens to collect data to better understand their local environment and potential exposures. These mobile, low-cost tools make it possible to collect data with increased temporal and spatial resolution, providing data on a large scale with unprecedented levels of detail. This type of data has the potential to empower people to make personal decisions about their exposure and support the development of local strategies for reducing pollution and improving health outcomes. We performed experiments confirming that transferability is indeed a problem and show that it can be improved by collecting data from multiple regulatory sites and building a calibration model that leverages data from a more diverse data set. We deployed three sensor packages to each of three sites with reference monitors (nine packages total) and then rotated the sensor packages through the sites over time. Two sites were in San Diego, CA, with a third outside of Bakersfield, CA, offering varying environmental conditions, general air quality composition, and pollutant concentrations.</p