An IoT- and AI-Enabled Architecture for Intelligent Transportation Systems
编号:181
访问权限:仅限参会人
更新:2025-12-23 13:39:12 浏览:10次
拓展类型2
摘要
The swift expansion of urban mobility requires smart, data-oriented solutions that can improve transportation efficiency, safety, and sustainability. This document suggests a combined architecture for Intelligent Transportation Systems (ITS) that utilizes IoT and AI, incorporating diverse sensing, instant communication, and sophisticated analytics to enhance smart mobility solutions. The framework includes multi-tier IoT sensing, Vehicle-to-Everything (V2X) communication, edge–cloud cooperative processing, and integrated AI models for traffic forecasting, incident identification, and adaptive management. Real-time data feeds from vehicles, roadside devices, and environmental sensors are combined and analyzed using lightweight edge AI to minimize latency, while cloud intelligence facilitates extensive analytics and long-term optimization. The suggested system improves operational resilience by utilizing dynamic resource distribution, context-sensitive decision-making, and secure data handling. Experimental studies and simulations show enhancements in congestion reduction, response times, and predictive accuracy when contrasted with conventional ITS systems. The research emphasizes the possibility of IoT–AI integration to facilitate scalable, resilient, and self-sufficient transportation systems for future smart cities
关键词
IoT, Artificial Intelligence (AI), Intelligent Transportation Systems (ITS), and Smart Mobility.
稿件作者
Priya L
Sri Eshwar College of Engineering
Subramanya Sarma S
Ramachandra College of Engineering
Narayanasamy P
Vel Tech Rangarajan Dr.Sagunthala R&D Institute of Science and Technology
Subhash Chandra N
CVR College of Engineering
Sujitha R
SR University
Brilly Sangeetha S
IES College of Engineering
发表评论