Health Monitoring based Cognitive IoT using Fast Machine Learning Technique

Authors

  • Anurag Shrivastava Post-Doctoral Fellowship, Department of Electronics and Communication Engineering, Lincoln University College (LUC), Petaling Jaya, Malaysia
  • Midhun Chakkaravarthy Supervisor and Faculty of Computer Science and Multimedia, Lincoln University College, Malaysia
  • Mohd. Asif Shah Co-Supervisor and Faculty of Kebri Dehar University, Somali, Ethiopia

Keywords:

machine learning, internet of Things, healthcare, diabetic patient monitoring and data classification

Abstract

Diabetic patients' pleasant of life is advanced with continuous tracking. The usage of numerous technologies like the internet of factors (IoT), embedded software program, communications generation, synthetic intelligence, along with clever devices can assist to reduce the healthcare system's monetary prices. diverse communication technologies have enabled the availability of customised and remote fitness care. to meet the demands of development of sensible e-fitness apps, we have to construct clever health care structures and boom the amount of packages connected to the community. As a result, as a way to attain important wishes such as high bandwidth and strength efficiency, the 5G community need to consist of sensible healthcare applications. the usage of device getting to know methods, this research proposes an intelligent infrastructure for tracking diabetes sufferers. clever devices, sensors, and mobile phones had been used inside the architecture to enough exposure from the body. so one can produce a analysis, the sensible machine collected statistics from the patient and classified it the use of gadget getting to know. numerous machine getting to know methods were used to check the recommended prediction system, and the simulation results showed that the sequential minimum optimization (SMO) method gives extra category accuracy, sensitivity, and precision when compared to other strategies.

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References

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Proposed design structure for monitoring diabetic patient

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Published

17.05.2023

How to Cite

Shrivastava, A. ., Chakkaravarthy, M. ., & Asif Shah, M. (2023). Health Monitoring based Cognitive IoT using Fast Machine Learning Technique. International Journal of Intelligent Systems and Applications in Engineering, 11(6s), 720–729. Retrieved from https://ijisae.org/index.php/IJISAE/article/view/2907

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Research Article

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