International Journal of Innovative Research in Computer and Communication Engineering
ISSN Approved Journal | Impact factor: 8.771 | ESTD: 2013 | Follows UGC CARE Journal Norms and Guidelines
| Monthly, Peer-Reviewed, Refereed, Scholarly, Multidisciplinary and Open Access Journal | High Impact Factor 8.771 (Calculated by Google Scholar and Semantic Scholar | AI-Powered Research Tool | Indexing in all Major Database & Metadata, Citation Generator | Digital Object Identifier (DOI) |
| TITLE | An IoT-Based Innovative Life Alert System |
|---|---|
| ABSTRACT | Additionally, technology has increased the likelihood of traffic accidents, which typically result in significant losses in terms of lives and property, particularly when there are insufficient services available. Recently, intelligent transportation systems have become a popular and effective means of improving road transportation safety and clarity. One useful ITS tool is accident detection systems. The Global System for Mobile Communication (GSM)- based accident detection system may make use of one or more sensors. The system, referred to as an instance helping system, can rapidly collect data and coordinates from the accident site and transmit them via a network link to the rescue services center. In this review paper, we presented an intelligent system that is integrated with the Vehicular AD-Hoc Network and consists of a GSM modem and vibration sensor. To find the best path to the emergency message, these services employ the enhanced Ad hoc On-Demand Distance Vector protocol (AODV). |
| AUTHOR | AYESHA SIDDIQA, DIVYA SURESH GOULI, NARPLA NEHA, SYEDA AYESHA SIDDIQA, CHAITHRA G S UG Students, Dept. of CSE, Jain Institute of Technology, Davangere, Karnataka, India Assistant Professor, Dept. of CSE, Jain Institute of Technology, Davangere, Karnataka, India |
| VOLUME | 177 |
| DOI | DOI: 10.15680/IJIRCCE.2025.1312087 |
| pdf/87_An IoT-Based Innovative Life Alert System.pdf | |
| KEYWORDS | |
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