Author:
Zong Chen Dr. Joy Iong,S. Dr. Smys
Abstract
Cloud computing is equipped with the numerous of advantageous features to support software and utilities on the Internet of Things (IoT). Cloud-based technology is widely used when offering support for heterogeneous applications integrating specific IoT that follows various semantics. Attaching additional information to raw data sensed with the help of ontology is accomplished in semantic model. The longer distance between the cloud and IoT applications, however, is a bottleneck for vital IoT software. So the paper puts forth a semantic frame work assisted by the fog to enhance the interoperability in the internet of things. The structure put forth moves some of the cloud's commonly used semantic resources sensor networks edge and also offers an effective off-loading technique between fog – fog and fog – cloud devices to diminish total computation time of the task and the energy consumed by the nodes in the fog. The proposed method further follows an efficient mapping technique to transform the data’s sensed into a RDF-format such that it is compatible for processing. The proposed model is evaluated on the basis of delay in the service provision, the energy consumed , and the total cost of the system and further the results obtained are compared with the relevant cloud based computing models , to reveal the proficiency of the proposed.
Publisher
Inventive Research Organization
Cited by
8 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献
1. A lightweight semantic model for IoT architecture: Smart water meter usecase;2023 4th International Conference on Computing and Communication Systems (I3CS);2023-03-16
2. Adaptive Hybrid Optimization Based Virtual Machine Placement in Cloud Computing;2022 4th International Conference on Smart Systems and Inventive Technology (ICSSIT);2022-01-20
3. Semantic Interoperability Issues and Challenges in IoT: A Brief Review;Intelligence of Things: Technologies and Applications;2022
4. HealthCare Data Analytics: A Machine Learning-Based Perspective;Mobile Computing and Sustainable Informatics;2022
5. Latency Aware Resource Scheduling and Queuing;Smart Innovation, Systems and Technologies;2021-10-09