Litcius/Paper detail

IoT-Enabled Wireless Sensor Networks for Air Pollution Monitoring with Extended Fractional-Order Kalman Filtering

Santanu Metia, Huynh Nguyen, Q. P. Ha

2021Sensors34 citationsDOIOpen Access PDF

Abstract

This paper presents the development of high-performance wireless sensor networks for local monitoring of air pollution. The proposed system, enabled by the Internet of Things (IoT), is based on low-cost sensors collocated in a redundant configuration for collecting and transferring air quality data. Reliability and accuracy of the monitoring system are enhanced by using extended fractional-order Kalman filtering (EFKF) for data assimilation and recovery of the missing information. Its effectiveness is verified through monitoring particulate matters at a suburban site during the wildfire season 2019-2020 and the Coronavirus disease 2019 (COVID-19) lockdown period. The proposed approach is of interest to achieve microclimate responsiveness in a local area.

Topics & Concepts

Kalman filterWireless sensor networkAir quality indexReal-time computingReliability (semiconductor)Internet of ThingsComputer scienceEnvironmental monitoringWirelessAir pollutionComputer networkEngineeringTelecommunicationsMeteorologyEmbedded systemEnvironmental engineeringArtificial intelligenceGeographyPower (physics)Organic chemistryChemistryQuantum mechanicsPhysicsAir Quality Monitoring and ForecastingAtmospheric aerosols and cloudsCOVID-19 impact on air quality
IoT-Enabled Wireless Sensor Networks for Air Pollution Monitoring with Extended Fractional-Order Kalman Filtering | Litcius