Open Access Open Access  Restricted Access Subscription or Fee Access

Women Safety Device using GPS and GSM Alert

Anmol Khanna, Dheeraj Yadav, Mohan Kaushik, Vedant Kumar

Abstract


In many countries which are economic developed and has super power, but still there are many crimes against women. The world is becoming unsafe for women in all aspects. The crimes against women are increasing at a higher rate. Due to this most women feels unsafe as crime rate is increasing. This paper proposes a quick responding device that helps women when they are in trouble. When someone is going to harass, she just needs to press the PANIC BUTTON and her location is sent as an SMS to her close one in terms of latitude and longitude. Here in this device microcontroller used is ATMEGA328P which is connected with a button, a GSM module, GPS module and an LCD display. When someone presses button the GPS module traces live location and send it as message to a predefined mobile number with help of GSM module in terms of latitude and longitude. By entering latitude and longitude information one can trace the exact location of person who is in danger. The purpose of this project is to decrease women related crimes and is to feel safe the women.

Keywords: Arduino; GPS tracker; GSM Module

Full Text:

PDF

References


Premkumar. P Cibi Chakkaravarthi. R, Keerthana. M, Ravivarma. R, Sharmila. “ONE TOUCH ALARM SYSTEM FOR WOMEN’S SAFETY USING GSM” International Journal of Science Technology & Management, 2015 March.

Nishant Bhardwaj and Nitish Aggarwal Design and Development of “SURAKSHA”-A Women Safety Device International Journal of Information & Computation Technology, ISSN 0974-2239 Volume 4, Number 8 (2014), pp.

R. S. Singh, B. S. Saini, R. K. Sunkaria “Time-varying spectral coherence investigation of cardiovascular signals based on energy concentration in healthy young and elderly subjects by the adaptive continuous Morlet wavelet transform” Innovation and Research in Biomedical Engineering, Elsevier, 2018, 39 (1), 54–68.

Ram Sewak Singh, Barjinder Singh Saini, Ramesh Kumar Sunkaria “Classification of cardiac heart disease using reduced chaos features and 1-norm linear programming extreme learning machine” International Journal for Multiscale Computational Engineering, 16(5): 465–486 (2018).

Ram Sewak Singh, Barjinder Singh Saini, Ramesh Kumar Sunkaria “Detection of coronary artery disease by reduced features and extreme learning machine” Culuja Medical Journal, 2018, 91(2), 166-175.

Ram Sewak Singh, Barjinder Singh Saini, Ramesh Kumar Sunkaria “Assessment of cardiac heart failure and cardiac artery disease by the higher order spectra” Biomedical Engineering, 2018, 30(1), 18500161-9.

Ram Sewak SINGH, Barjinder Singh SAIN, Ramesh Kumar SUNKARIA “Power spectral analysis of short-term heart rate variability in healthy and arrhythmia subjects by the adaptive continuous Morlet wavelet transform”. Applied Medical Informatics, 2018, 39 (3).




DOI: https://doi.org/10.37628/jvdt.v4i2.984

Refbacks

  • There are currently no refbacks.