TY - JOUR ID - SisLab3918 UR - https://eprints.uet.vnu.edu.vn/eprints/id/eprint/3918/ A1 - Ha, Quang A1 - Metia, Santanu A1 - Phung, Manh Duong Y1 - 2020/// N2 - Multisensor fusion of air pollutant data in smart buildings remains an important input to address the well-being and comfort perceived by their inhabitants. An integrated sensing system is part of a smart building where real-time indoor air quality data are monitored round the clock using sensors and operating in the Internet-of-Things (IoT) environment. In this work, we propose an air quality management system merging indoor air quality index (IAQI) and humidex into an enhanced indoor air quality index (EIAQI) by using sensor data on a real-time basis. Here, indoor air pollutant levels are measured by a network of waspmote sensors while IAQI and humidex data are fused together using an extended fractional-order Kalman filter (EFKF). According to the obtained EIAQI, overall air quality alerts are provided in a timely fashion for accurate prediction with enhanced performance against measurement noise and nonlinearity. The estimation scheme is implemented by using the fractional-order modeling and control (FOMCON) toolbox. A case study is analysed to prove the effectiveness and validity of the proposed approach. PB - IEEE JF - IEEE Sensors Journal SN - 1530-437X TI - Sensing Data Fusion for Enhanced Indoor Air Quality Monitoring AV - public ER -