Random Forest Algorithm for Real-Time Health Monitoring Throught Iot Data

Main Article Content

Chetana Vidyasagar Thorat, Dattatray G. Takale, Dattatray S. Galhe, Piyush P. Gawali, Parikshit N. Mahalle, Bipin Sule, Pallavi V. Bhaskare

Abstract

The last decade made significant progress in the empire of orientation to the health monitoring systems after the invention of wearable devices, simplifying health monitoring on a daily base. Devices combining “Internet-of-Things” and “Machine learning” technologies provide a solution that is persistent, objective, and feasible for remote monitoring, thereby facilitating ambient assisted living. This study aims to utilize a Random Forest machine learning algorithm to address clinical issues after achieving results on ML computations implemented on a dataset. In the subsequent tests, certain data will be collected, e.g., vital signs and body temperature heart rate, blood pressure, etc, utilizing IoT implemented devices. Health tracker devices combined with a series of body sensors revolutionize the system of living and health care regarding patient activity. Smartwatches bring the sensation of being one of the principal devices that often provide information regarding the step counter, heart rate, and sleep pattern, which is also crucial. The combination of the intelligent system of SPO2, heart rate, and body temperature sensors is often integrated with smartwatches find application, collecting the data and transferring it to the cloud for further analysis achieved by ML algorithm and Random Forest Machine Learning algorithm utilization. The testing phase pursues the notion, aiming to identify the level of accuracy in clinical issue detection, which confirms the system demonstrated in the work is efficient for remote monitoring.

Article Details

How to Cite
Piyush P. Gawali, Parikshit N. Mahalle, Bipin Sule, Pallavi V. Bhaskare, C. V. T. D. G. T. D. S. G. (2024). Random Forest Algorithm for Real-Time Health Monitoring Throught Iot Data . International Journal on Recent and Innovation Trends in Computing and Communication, 11(9), 3835–3841. Retrieved from https://ijritcc.org/index.php/ijritcc/article/view/10422
Section
Articles