Selection and Ranking of Fog Computing-Based IoT for Monitoring of Health Using the Analytic Network Approach
Dong Xue,
Shah Nazir,
Zhiqiang Peng,
Hizbullah Khattak and
Muhammad Ahmad
Complexity, 2021, vol. 2021, 1-11
Abstract:
Numerous raised areas are established in the field of fog computing (FC), applied for various purposes, and are evaluated for running analytics on various devices including devices of internet of things and many others in a disseminated way. FC progresses the prototype of cloud computing to network edge leading various possibilities and services. FC improves processing, decision, and intervention to take place through devices of IoT and communicate essential details. The idea of FC in healthcare based on frameworks of IoT is exploited by determining dispersed delegate layer of comprehension between the cloud and sensor hubs. The clouds suggested systems improved to overcome several challenges in ubiquitous frameworks of medical services such as energy efficiency, portability, adaptableness, and quality issues by accommodating right to take care of definite weights of the distant medical services group and sensor networks. The proposed research work has considered the analytic network process (ANP) for selection and ranking of FC-based IoT for health monitoring systems. The approach works in situation when complexity arises for health monitoring. Results of the study show the success of the research for facilitating healthcare.
Date: 2021
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Persistent link: https://EconPapers.repec.org/RePEc:hin:complx:9964303
DOI: 10.1155/2021/9964303
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