International Journal of Innovative Research in Computer and Communication Engineering

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TITLE Intelligent Ship Monitoring System with Geofencing and Weight Tamper Detection
ABSTRACT Maritime safety is essential for secure ship operations and cargo transport. This project proposes an IoT-based intelligent ship monitoring system that continuously tracks the vessel’s location using GPS and detects geofencing violations, sending instant alerts through Telegram. It monitors cargo weight using a load cell to prevent tampering and uses flux sensors to identify structural cracks. An ultrasonic sensor helps avoid collisions, while an ADXL accelerometer detects abnormal tilt and instability caused by unsafe loading or rough sea conditions. Local alerts through an LCD display and buzzer ensure immediate operator awareness. Overall, the system improves ship safety, enables quick response to emergencies, and protects cargo during transportation.
AUTHOR NIRMALA BAI L, LIKHITHA SAGAR M, NANDITHA B M, PRAMEELA ACHARI, SHEELA SURESH B S Assistant Professor, Dept. of EIE, Dr. Ambedkar Institute of Technology, Karnataka, India Student, Dept. of EIE, Dr. Ambedkar Institute of Technology, Karnataka, India
VOLUME 177
DOI DOI: 10.15680/IJIRCCE.2025.1312077
PDF pdf/77_Intelligent Ship Monitoring System with Geofencing and Weight Tamper Detection.pdf
KEYWORDS
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