Vehicle Engine Surveillance System

Pesala Chakradhar ReddyCSE- (Artificial Intelligence), FET-Jain Deemed To Be University, Bengaluru, IndiaJanaki KandasamyCSE- (Artificial Intelligence), FET-Jain Deemed To Be University, Bengaluru, IndiaMohammed AfthabCSE- (Artificial Intelligence), FET-Jain Deemed To Be University, Bengaluru, IndiaMohammed ZaidCSE- (Artificial Intelligence), FET-Jain Deemed To Be University, Bengaluru, IndiaRajkuvar Amol JadhavCSE- (Artificial Intelligence), FET-Jain Deemed To Be University, Bengaluru, IndiaNihal P K PCSE- (Artificial Intelligence), FET-Jain Deemed To Be University, Bengaluru, India

Vol 10 No 4 (2026): Volume 10, Issue 4, April 2026 | Pages: 295-302

International Research Journal of Innovations in Engineering and Technology

OPEN ACCESS | Research Article | Published Date: 29-04-2026

doi Logo doi.org/10.47001/IRJIET/2026.104042

Abstract

This invention introduces an advanced Vehicle Engine Surveillance System designed to revolutionize automotive safety, energy management, and operational efficiency. By integrating a hybrid energy framework that utilizes conventional fuel, solar, and wind power, the system facilitates smart energy switching and real-time power optimization. At its core, the surveillance module acts as the "eyes" of the vehicle, employing high-quality vision-based sensors—including ADAS, blind-spot, and driver-monitoring cameras—to analyze road conditions and driver fatigue.

Processed through a centralized Smart Control Unit, the system correlates visual data with critical engine parameters such as RPM, thermal dynamics, and load. Unlike traditional diagnostic tools that offer delayed feedback, this architecture provides instant text and audio alerts via an IoT-enabled dashboard and mobile application. By identifying inefficiencies like thermal imbalances or aggressive driving patterns, the system significantly enhances fuel economy and minimizes environmental impact. This scalable, eco-friendly solution bridges the gap between mechanical performance and predictive analytics, ensuring a safer, more sustainable driving experience.

Keywords

Vehicle Engine Surveillance System, Smart Vehicle Monitoring, Hybrid Energy Framework, Renewable Energy Vehicles, Solar and Wind Energy Integration, Smart Energy Switching, Automotive Safety System, Advanced Driver Assistance System (ADAS), Driver Monitoring System


Citation of this Article

Pesala Chakradhar Reddy, Janaki Kandasamy, Mohammed Afthab, Mohammed Zaid, Rajkuvar Amol Jadhav, & Nihal P K P. (2026). Vehicle Engine Surveillance System. International Research Journal of Innovations in Engineering and Technology - IRJIET, 10(4), 295-302. Article DOI https://doi.org/10.47001/IRJIET/2026.104042

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