1. Correction Model for Particulate Matter Measurements with a Low-Cost Sensor Network in Rotterdam
- Author
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Bebelaar, Niek (author) and Bebelaar, Niek (author)
- Abstract
Low-cost air quality sensors can fill gaps between the sparse measurements done with high-quality national monitoring grids and might contribute to creating a more complete understanding of air pollution in an urban area. However, until there is no agreement on what degree of sensor accuracy is acceptable, the sensor data quality should be validated before governmental bodies use it as input for decision-making (Lewis2017). This research proposes a method to assess and improve the data quality of low-cost air quality sensors measuring Particulate Matter (PM). To answer the research question "How can accuracy and precision of Particulate Matter measurement results from a low-cost outdoor sensor network be improved by using a correction model, using data from reference sensors and additional sensors measuring inferencing phenomena?" an experiment setup with sensors operating under real-world conditions is applied. Two low-cost sensor nodes, both containing a microcontroller, two low-cost PM sensors, and a temperature and humidity sensor, are placed at two locations in the city of Rotterdam. At those two locations, they are placed next to a high-quality air quality monitoring station from the environmental agency of Rotterdam. These monitoring stations provide benchmark data for the low-cost sensor nodes. A third data source provides data on air pressure and wind speed for the whole city of Rotterdam. The data that originates from both sensor nodes and monitoring stations are matched and correlated with each other. Subsequently, the measurements from the low-cost sensor nodes are evaluated. Correlations and cross inferences of PM with other independent variables such as humidity, ambient temperature, wind speed and air pressure are investigated. Thereafter, utilizing the Stepwise Multiple Linear Regression method, various correction models are created that take various combinations of external variables into account. The correction models va, Geomatics
- Published
- 2019