TY - GEN
T1 - A Probabilistic Graphical Model for Social IoT-based Indoor Air Quality Monitoring in Smart Villages
AU - Ahmadinabi, Sajad
AU - Naderi Soorki, Mehdi
AU - Aghajari, Hossein
AU - Jafari, Amir Reza
AU - Ranjbaran, Sara
N1 - Publisher Copyright:
© 2024 IEEE.
PY - 2024
Y1 - 2024
N2 - The smart village is a promising approach for achieving socio-economic sustainability in rural areas. This paper utilizes Social Internet of Things (SIoT) methodologies to realize the smart village concept through efficient and cost-effective IoT technology. Each physical sensor and IoT device has a virtual counterpart Digital Twin (DT) at the edge for effective data analysis and optimization. For emerging public health services, monitoring indoor air quality (IAQ) in critical rural buildings is crucial. This paper proposes a probabilistic graphical model to capture IAQ changes using low-cost LoRa end nodes (EN) and gateway devices. These devices measure light intensity, temper- ature, and polluting gas concentration levels. The unsupervised k-means algorithm clusters the real-time IAQ data. At the same time, a Markov-based model visualizes and predicts IAQ changes. The model parameters are updated in real-time using data from a deployed LoRa wireless network. The framework was evaluated in rural areas near Ghaletol, Khuzestan province, Iran, with deployments in schools, agri- cultural warehouses, medical centers, and supermarkets. The best IAQ Markov states were 3 for schools, 3 for agricultural warehouses, 4 for medical centers, and 5 for supermarkets. For instance, the supermarket's IAQ model showed a polluting gas concentration of 862.6 ppm, an indoor temperature of 28.66°C, and a light intensity of 70.05 Lux.
AB - The smart village is a promising approach for achieving socio-economic sustainability in rural areas. This paper utilizes Social Internet of Things (SIoT) methodologies to realize the smart village concept through efficient and cost-effective IoT technology. Each physical sensor and IoT device has a virtual counterpart Digital Twin (DT) at the edge for effective data analysis and optimization. For emerging public health services, monitoring indoor air quality (IAQ) in critical rural buildings is crucial. This paper proposes a probabilistic graphical model to capture IAQ changes using low-cost LoRa end nodes (EN) and gateway devices. These devices measure light intensity, temper- ature, and polluting gas concentration levels. The unsupervised k-means algorithm clusters the real-time IAQ data. At the same time, a Markov-based model visualizes and predicts IAQ changes. The model parameters are updated in real-time using data from a deployed LoRa wireless network. The framework was evaluated in rural areas near Ghaletol, Khuzestan province, Iran, with deployments in schools, agri- cultural warehouses, medical centers, and supermarkets. The best IAQ Markov states were 3 for schools, 3 for agricultural warehouses, 4 for medical centers, and 5 for supermarkets. For instance, the supermarket's IAQ model showed a polluting gas concentration of 862.6 ppm, an indoor temperature of 28.66°C, and a light intensity of 70.05 Lux.
KW - Indoor Air Quality Monitoring
KW - LoRa technology
KW - Probabilistic graphical model
KW - Smart Village
KW - Social IoT (SIoT)
UR - http://www.scopus.com/inward/record.url?scp=85214702819&partnerID=8YFLogxK
U2 - 10.1109/WiMob61911.2024.10770516
DO - 10.1109/WiMob61911.2024.10770516
M3 - Conference article in proceedings
AN - SCOPUS:85214702819
T3 - International Conference on Wireless and Mobile Computing, Networking and Communications
SP - 289
EP - 294
BT - 2024 20th International Conference on Wireless and Mobile Computing, Networking and Communications, WiMob 2024
PB - IEEE
T2 - IEEE International Conference on Wireless and Mobile Computing, Networking and Communications
Y2 - 21 October 2024 through 23 October 2024
ER -