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Low-Cost Indoor Sensor Deployment for Predicting PM 2.5 Exposure.

Shahar TsameretDaniel FurutaProvat K SahaNohhyeon KwakAliaksei HauryliukXiang LiAlbert A PrestoJiayu Li
Published in: ACS ES&T air (2024)
Indoor air quality is critical to human health, as individuals spend an average of 90% of their time indoors. However, indoor particulate matter (PM) sensor networks are not deployed as often as outdoor sensor networks. In this study, indoor PM 2.5 exposure is investigated via 2 low-cost sensor networks in Pittsburgh. The concentrations reported by the networks were fed into a Monte Carlo simulation to predict daily PM 2.5 exposure for 4 demographics (indoor workers, outdoor workers, schoolchildren, and retirees). Additionally, this study compares the effects of 4 different correction factors on reported concentrations from the PurpleAir sensors, including both empirical and physics-based corrections. The results of the Monte Carlo simulation show that mean PM 2.5 exposure varied by 1.5 μg/m 3 or less when indoor and outdoor concentrations were similar. When indoor PM concentrations were lower than outdoor, increasing the time spent outdoors on the simulation increased exposure by up to 3 μg/m 3 . These differences in exposure highlight the importance of carefully selecting sites for sensor deployment and show the value of having a robust low-cost sensor network with both indoor and outdoor sensor placement.
Keyphrases
  • particulate matter
  • air pollution
  • low cost
  • monte carlo
  • human health
  • risk assessment
  • climate change
  • physical activity
  • health risk
  • heavy metals
  • single molecule
  • atomic force microscopy
  • high speed