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- Title
A Fog Computing Architecture with Multi-Layer for Computing-Intensive IoT Applications.
- Authors
Muneeb, Muhammad; Ko, Kwang-Man; Park, Young-Hoon
- Abstract
The emergence of new technologies and the era of IoT which will be based on compute-intensive applications. These applications will increase the traffic volume of today's network infrastructure and will impact more on emerging Fifth Generation (5G) system. Research is going in many details, such as how to provide automation in managing and configuring data analysis tasks over cloud and edges, and to achieve minimum latency and bandwidth consumption with optimizing task allocation. The major challenge for researchers is to push the artificial intelligence to the edge to fully discover the potential of the fog computing paradigm. There are existing intelligence-based fog computing frameworks for IoT based applications, but research on Edge-Artificial Intelligence (Edge-AI) is still in its initial stage. Therefore, we chose to focus on data analytics and offloading in our proposed architecture. To address these problems, we have proposed a prototype of our architecture, which is a multi-layered architecture for data analysis between cloud and fog computing layers to perform latency- sensitive analysis with low latency. The main goal of this research is to use this multi-layer fog computing platform for enhancement of data analysis system based on IoT devices in real-time. Our research based on the policy of the OpenFog Consortium which will offer the good outcomes, but also surveillance and data analysis functionalities. We presented through case studies that our proposed prototype architecture outperformed the cloud-only environment in delay-time, network usage, and energy consumption.
- Subjects
DATABASES; INTERNET of things; ARTIFICIAL intelligence; TRAFFIC flow; COMMUNICATION infrastructure
- Publication
Applied Sciences (2076-3417), 2021, Vol 11, Issue 24, p11585
- ISSN
2076-3417
- Publication type
Article
- DOI
10.3390/app112411585