Neural Infrastructure a Federated AI Framework for Predictive Resilience in U.S. Transportation Systems
DOI:
https://doi.org/10.38124/ijsrmt.v4i5.540Keywords:
Federated Artificial Intelligence, Autonomous Vehicles, Traffic Flow Prediction, Predictive Maintenance, Intelligent Transportation SystemsAbstract
Because autonomous vehicles and intelligent traffic systems play a bigger role, robust, scalable and secure traffic prediction models are more necessary than ever. The integration of federated AI is studied in this article as a leading way to improve vehicle upkeep and guide traffic in autonomous transportation. Using just the most current research in deep learning for traffic flow modeling, forecasting vehicle routes and decision-making algorithms, the authors highlight that using federated AI can enhance safety, cut down on costs for repairs and increase up-to-date knowledge of how things are running, while preserving privacy. When learning is spread among connected vehicles and support nodes, the suggested method can support both geographical adaptability and nationwide scalability. As a result of this shift, everything from the design to the development of AI-driven mobility becomes smoother and people gain more trust. The analysis of present predictive methods and the issues of using them shows that federated AI holds great promise for intelligent transportation systems
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Copyright (c) 2025 International Journal of Scientific Research and Modern Technology

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