Health Care Monitoring System for Paralysis Patient
Journal Title: International Journal of Advanced Research in Science and Technology (IJARST) - Year 2024, Vol 13, Issue 3
Abstract
Falls pose significant risks for elderly and physically challenged individuals, presenting a prominent concern in public health care. Detecting falls remains a crucial challenge within this domain. This study proposes a Health Care Monitoring System for detecting falls and monitoring pulse rates among paralyzed patients using Internet of Things (IoT) technology. IoT facilitates the interconnection of various smart devices, a concept with widespread applicability. Specifically, an Arduino-based IoT device has been developed to detect falls, primarily targeting elderly individuals living alone. Prompt assistance is vital in such scenarios to prevent further harm, as falls often result in serious injuries and may leave individuals unable to seek help. The primary objective of this project is to implement fall detection on an Arduino-based device, utilizing an accelerometer to sense the person's position along three axes. Upon fall detection, the device automatically notifies a designated caretaker through both a phone call and SMS alert.
Authors and Affiliations
Mrs. X. Ignatius Selvarani1, M. Abdul Ajis2, M. Ahamed Adhil3, Soorya R4
Metal-Organic Frameworks on Cotton-Linen Blend for Hydrophobicity
Cotton Linen (CL) blended fabrics, extensively utilized in clothing, household items, and various applications, face limitations due to their inherent hydrophilicity, restricting their expansion into diverse fields. The...
A Review of Oil Spills on Marine Life and Associated Wildlife
Oil is an ancient fossil fuel used to power sectors like heat and electricity production. A wide range of fuels in automobiles and lubricants for mechanical machines have a significant role in our economy. Oil spills occ...
Studies on Fusarium wilt of Watermelon by using Antifungal Agents: An Invitro in Sights
Watermelon (Citrullus lanatus) is highly prone to Fusarium wilt, caused by a deadly soil-borne pathogen called Fusarium oxysporum f. sp. niveum (FON). Changes in production practices in crops, reduction in usage of fumig...
A SHAP and LIME based Explainable AI Solution for Predicting Chronic Kidney Diseases
Chronic Kidney Disease (CKD) presents a major global health issue, contributing to renal failure, cardiovascular problems, and elevated mortality rates. This research focuses on creating an effective machine learning (ML...
Design of Sensor and Relay Based Safety Mechanism For Industrial Cutting Power Press Machines
In industrial settings, the safety of operators working with power press machines is of paramount importance. This research introduces an advanced safety system designed to mitigate the risk of handrelated accidents by e...