Implementation of Intelligent Smart Heart Health Monitoring System using IOT

Main Article Content

M. Venkata Sudhakar
Srinivasa Rao Kandula
V. Teju
K. V. Sowmya
Vipparla Aruna
Abdul Hussain Sharief
Koteswararao Seelam

Abstract

There are a lot of severe diseases that are associated with humans, but one of them is cardiac arrest, which, in general terms, we call a heart attack. The already existing heart rate monitoring systems are not mobile, are expensive, and take a little longer to give out the results. So, in this work, we will go for a system called Heart Rate Monitoring system using an ECG sensor and a Raspberry Pi, which actually represents the acquisition and interpretation of a human heart’s data collected with the help of sensors, anywhere and everywhere on the earth, through IOT. We generally consider heart rate while noting the status of the heart, but the oxygen level and body temperature also play a major role in determining the exact heart status. So, the hardware required to implement this heart rate monitoring model consists of different health sensors and a Raspberry Pi configured in a way to communicate with the guardian and the respective doctors over the Internet through an available smart mobile phone. In this work, the sensors configured with the hardware collect the required information about the patient’s health, which includes parameters such as the patient’s heart rate, body temperature, and SPo2 levels. Then, using the collected information from the sensors, the patient’s heart activity is actively observed. Thus, the patient himself or herself can easily identify his or her heart condition with the help of collected data anywhere on the earth through the internet. An alert indicating that their heart status is not good is displayed to the caretakers on the mobile, which shows a message called "abnormal condition to the patient" given the condition that the collected sensors’ values are beyond the threshold information through the GSM module, and also the GPS location of the patient will be sent to the caretakers as well as to the doctors.

Article Details

How to Cite
Sudhakar, M. V. ., Kandula, S. R. ., Teju, V. ., Sowmya, K. V. ., Aruna, V. ., Sharief, A. H. ., & Seelam, K. . (2023). Implementation of Intelligent Smart Heart Health Monitoring System using IOT. International Journal on Recent and Innovation Trends in Computing and Communication, 11(10s), 214–219. https://doi.org/10.17762/ijritcc.v11i10s.7621
Section
Articles

References

Chandini, Harshitha P, Mangala HD, Sapna C L, and Manojkumar SB, (2018) “ECG Telemetry System for IoT using Raspberry Pi”, International journal of engineering research & technology, 6(13), 1-4.

Chaithra, Amrutha C.T, and Rajesh N.K, (2019) “Heart attack detection using IoT ”, International journal of engineering research & technology, 7(8), 1-3.

Sunilkumar Laxmanbhai Rohit and Bharat V.T, (2018) “ IoT based health monitoring system Using Raspberry PI - Review”, 2018 Second International Conference on Inventive Communication and Computational Technologies (ICICCT), 1-4.

R.J Sapkal, Ankita M.S, Shradha D.S, Monica D.S, (2018) “Physiological System for parameter monitoring system using raspberry pi”, 4(8), 97-100.

Nguyen Thanh Tung, Luong Van Van. (2023). Effect of Braking Force on Wheel Load and Braking Efficiency of Tractor Semi-Trailer on A Roundabout Using Machine Learning Techniques. International Journal of Intelligent Systems and Applications in Engineering, 11(4s), 428–433. Retrieved from https://ijisae.org/index.php/IJISAE/article/view/2689

M Mathivanan, M Balamurugan, Harish. L, Nandini, and Manisha Reddy, (2018) “IoT based continuous monitoring of cardiac patients using Raspberry Pi," AIP Conference Proceedings, https://doi.org/10.1063/1.5078984.

Laxmi Bhaskar, Prabhakar M, (2017) “IOT based Patient Health Monitoring System using Raspberry pi 3 ”, International Research Journal of Engineering and Technology, 4(7), 2593-2597.

Sufiya S.K, Gayatri B, Trupti T, “Remote heart rate monitoring using IoT” (2018), International Research Journal of Engineering and Technology, 5(4), 2956-2963.

Pranoti R.D, Vaishnavi M.N, (2021) “Human Health Care Monitoring System using Raspberry Pi3”, International Journal of Engineering Science and Computing (IJESC), 11(10), pp. 28926.

Sanjeev Kumar Jain and Basabi Bhaumik, (2017) “An Energy Efficient ECG Signal Processor Detecting Cardiovascular Diseases onSmartphone”, IEEE Transactions on Biomedical Circuits and Systems, 11(2), 314-323.

G. Mohana Prabha, (2018) “Automatic health monitoring system using raspberry pi”, International Journal of Pure and Applied Mathematics, 118 (8), 613-619.