Logo image
Secure smart wearable computing through Artificial Intelligence-enabled Internet of Things and Cyber-Physical Systems for health monitoring
Journal article   Open access   Peer reviewed

Secure smart wearable computing through Artificial Intelligence-enabled Internet of Things and Cyber-Physical Systems for health monitoring

R. Lakshmana Kumar, Firoz Khan, Mohammad Shah, B. V. V. Siva Prasad, Celestine Iwendi and Cresantus Biamba
Sensors, Vol.22(3), 1076
29/01/2022

Abstract

Internet of Computers Cyber-Physical System Artificial Intelligence Patients Classification Internet of Things
The functionality of the Internet is continually changing from the Internet of Computers (IoC) to the “Internet of Things (IoT)”. Most connected systems, called Cyber-Physical Systems (CPS), are formed from the integration of numerous features such as humans and the physical environment, smart objects, and embedded devices and infrastructure. There are a few critical problems, such as security risks and ethical issues that could affect the IoT and CPS. When every piece of data and device is connected and obtainable on the network, hackers can obtain it and utilise it for different scams. In medical healthcare IoT-CPS, everyday medical and physical data of a patient may be gathered through wearable sensors. This paper proposes an AI-enabled IoT-CPS which doctors can utilise to discover diseases in patients based on AI. AI was created to find a few disorders such as Diabetes, Heart disease and Gait disturbances. Each disease has various symptoms among patients or elderly. Dataset is retrieved from the Kaggle repository to execute AI-enabled IoT-CPS technology. For the classification, AI-enabled IoT-CPS Algorithm is used to discover diseases. The experimental results demonstrate that compared with existing algorithms, the proposed AI-enabled IoT-CPS algorithm detects patient diseases and fall events in elderly more efficiently in terms of Accuracy, Precision, Recall and F-measure.
pdf
sensors pub version 22-01076-v2.pdf1.19 MBDownloadView
Published (Version of record)CC BY V4.0 Open Access
url
Link to Published VersionView
Published (Version of record)Open AccessCC BY V4.0 Open

Metrics

11 Record Views
111 Times Cited - Scopus

Details

Logo image

Usage Policy