A Novel Information Processing in IoT Based Real Time Health Care Monitoring System
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How to Cite

Raj, Jennifer S. 2020. “A Novel Information Processing in IoT Based Real Time Health Care Monitoring System”. Journal of Electronics and Informatics 2 (3): 188-96. https://doi.org/10.36548/jei.2020.3.006.

Keywords

— Internet of Things (IoT)
— Big Data
— Health care application
— Information processing
Published: 27-08-2020

Abstract

The recent technology developments and innovations improves the life style of people through smart applications, sensors, wireless communication networks, etc., for all those technologies internet is the backbone and the information processing like accessing, distributing the necessary information is achieved through Internet of Things (IoT). IoT supports multi-disciplinary applications as an active entity in engineering, science and business discipline. Based on the user preference these applications and its services could be framed in IoT. On contrary to the development, IoT has flaws in information processing as huge volume of data is need to be handled in a single environment. Considering these facts, the proposed research work is aimed to develop a novel information processing system in IoT platform through a reliable health care monitoring system. The effective utilization of big data in IoT environment is analysed through the proposed architecture to attain minimum delay in a real time environment. Conventional models are used to compare the performance of proposed design and the experimentation is performed to verify the superior performance of proposed approach using accuracy, cost functions in terms of transmission and storage, f-measure, sensitivity and specificity.

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