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Mapping Air Quality in IoT Cities: Cloud Calibration and Air Quality Inference of Sensor Data

Jelle Hofman, Martha E. Nikolaou, Tien Huu, Xuening Qin, Esther Rodrigo Bonet, Wilfried Philips, Nikos Deligiannis, Valerio Panzica La Manna

202021 citationsDOI

Abstract

Monitoring air quality in cities is challenging as a high resolution in both space and time is required to accurately assess population exposure. This paper presents an innovative IoT approach for highly granular air quality mapping in cities relying on (1) a combination of cloud-calibrated fixed and mobile air quality sensors and (2) machine learning approaches to infer the collected spatiotemporal point measurements in both space and time. Within this work, we focus on validation of this IoT approach by presenting data quality improvements of the cloud calibration algorithm and performance metrics of two spatiotemporal inference models (AVGAE and GRF). The observed cloud calibration improvements and model inference results approaching current physical state-of-the-art models demonstrate the potential of our approach in achieving accurate highly granular air quality maps and ultimately better air quality assessments.

Topics & Concepts

InferenceCloud computingAir quality indexComputer scienceCalibrationPoint cloudData miningPopulationFocus (optics)Quality (philosophy)Real-time computingRemote sensingMachine learningArtificial intelligenceGeographyMeteorologyMathematicsStatisticsPhysicsOpticsEpistemologyOperating systemSociologyPhilosophyDemographyAir Quality Monitoring and ForecastingAir Quality and Health ImpactsImpact of Light on Environment and Health