학술논문

Efficient Task-Offloading in IoT-Fog Based Health Monitoring System
Document Type
Conference
Source
2022 OITS International Conference on Information Technology (OCIT) OCIT Information Technology (OCIT), 2022 OITS International Conference on. :495-500 Dec, 2022
Subject
Communication, Networking and Broadcast Technologies
Computing and Processing
Power, Energy and Industry Applications
Cloud computing
Computational modeling
Simulation
Medical services
Stability analysis
Real-time systems
Time factors
Internet of Things (IoT)
fog computing
cloud computing
Bayesian belief network (BBN)
wireless body area network (WBAN)
health monitoring
Language
Abstract
Recent advancement applications have more computation-intensive, and data-intensive tasks are delay-sensitive. In IoT-Cloud-based healthcare architecture, data is aggregated using edge devices and sent to the cloud for processing and analysis. Furthermore, we need to transfer the data information out of the network for each event. Hence it is a delay-sensitive process that is not useful for instant processing and is unacceptable for healthcare applications. To overcome this problem, we have focused on a fog layer between smart devices and the cloud layer. Additionally, we use the Bayesian Belief Network's classification technique in the fog layer for task offloading. This paper focuses on reducing the response time using the BBN classifier after task offloading and increasing the system's stability using fog computing. In the simulation result, we compare the cloud-based and fog-based models in which the fog-based model is dominant over the cloud- based. This fog-based approach is based on real-time data processing at the local network. Hence it is practically possible and acceptable to get an instant result.