| Literature DB >> 28812989 |
Ajay Pillarisetti1, Tracy Allen2, Ilse Ruiz-Mercado3, Rufus Edwards4, Zohir Chowdhury5, Charity Garland6, L Drew Hill7, Michael Johnson8, Charles D Litton9, Nicholas L Lam10, David Pennise11, Kirk R Smith12.
Abstract
Over the last 20 years, the Kirk R. Smith research group at the University of California Berkeley-in collaboration with Electronically Monitored Ecosystems, Berkeley Air Monitoring Group, and other academic institutions-has developed a suite of relatively inexpensive, rugged, battery-operated, microchip-based devices to quantify parameters related to household air pollution. These devices include two generations of particle monitors; data-logging temperature sensors to assess time of use of household energy devices; a time-activity monitoring system using ultrasound; and a CO₂-based tracer-decay system to assess ventilation rates. Development of each system involved numerous iterations of custom hardware, software, and data processing and visualization routines along with both lab and field validation. The devices have been used in hundreds of studies globally and have greatly enhanced our understanding of heterogeneous household air pollution (HAP) concentrations and exposures and factors influencing them.Entities:
Keywords: PM2.5 monitor; air exchange rate monitor; field validation; household air pollution; intrahousehold variation; stove use monitor; time-activity monitor
Mesh:
Substances:
Year: 2017 PMID: 28812989 PMCID: PMC5579926 DOI: 10.3390/s17081879
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Figure 1Relationships between PATS+ photoelectric response (low and high sensitivity channels in mV) and PM2.5 concentrations based on laboratory chamber tests. Each point represents 15-min mean concentrations during a particle exposure event. The Y-axis is based on calibrated DustTrak readings.
Figure 2Correlation between the PATS+ estimate of PM2.5 (μg/m3) and collocated gravimetric samples of PM2.5 (μg/m3) from a PATS+ field performance test in the kitchens of families using traditional wood burning cookstoves in Alotenango, Guatemala. PATS+ units were individually calibrated against wood smoke in the lab.
Figure 3Hourly average trace of responses from (1) co-located PATS+ units (change in mV from the photoelectric chamber), (2) a DustTrak (μg/m3, uncorrected PM2.5) near Beijing University of Chemical Technology (BUCT), and (3) the US Embassy BAM (μg/m3, PM2.5) located approximately four kilometers away.
Figure 4Correlation of (a) PATS+ and DustTrak and (b) PATS+ intra-instrument comparison during the Beijing monitoring period (see Figure 3). Each data point represents a one-hour average.
Figure 5SUMs data from households with different usage patterns. Panels show temperature traces (degrees C) for a traditional stove (blue dashed line) and for the Philips, a fan-assisted intervention stove (solid red line). The top panel shows a household where the stove was incompletely used, with consistent use of both the traditional and intervention stoves. The bottom panel shows a household that moves from their traditional stove to the advanced cookstove. Adapted from [21].
Figure 6Direct observation vs. UCB-TAMS data for one mealtime observation. The lowest set of dashes represent time that the child was in the kitchen based on fieldworker observation—the ‘gold standard’. Adapted from Piccolo-Allen [33].
Figure 7Sample ARMs trace from a single measurement period in a rural Nepali kitchen. A line was fit to the long-transformed values during the linear decay period (marked on the graph by the pink square) to estimate air changes per hour.