Intelligent Network Traffic Management in Smart Cities Using AI

Authors

  • Zhang Wei Ming Liu Sr Software Engineer, Collins Aerospace, United States of America Author

DOI:

https://doi.org/10.15680/5aj38n88

Keywords:

AI, Smart Cities, Traffic Management, Machine Learning, Deep Learning, Reinforcement Learning, IoT, Predictive Analytics, Urban Mobility, Smart Infrastructure

Abstract

Urbanization has led to increased traffic congestion, pollution, and inefficiencies in transportation systems. Traditional traffic management methods are often inadequate to address the complexities of modern urban mobility. Artificial Intelligence (AI) offers transformative solutions by enabling adaptive, real-time traffic control, predictive analytics, and efficient resource utilization. This paper explores the integration of AI in network traffic management within smart cities, focusing on its applications, methodologies, and outcomes.AI technologies such as machine learning, deep learning, and reinforcement learning are employed to analyze vast amounts of traffic data collected from sensors, cameras, and IoT devices. These technologies facilitate dynamic traffic signal control, anomaly detection, and demand forecasting. For instance, systems like Scalable Urban Traffic Control (SURTRAC) and Project Green Light have demonstrated significant improvements in traffic flow and reduction in emissions .The methodology section delves into various AI models and frameworks, including Convolutional Neural Networks (CNNs), Long Short- Term Memory (LSTM) networks, and multi-agent reinforcement learning, highlighting their roles in traffic prediction and optimization . Furthermore, the paper discusses the challenges and limitations of implementing AI in urban traffic systems, such as data privacy concerns, infrastructure requirements, and algorithmic biases.Case studies from cities like Ahmedabad and Mangaluru illustrate the practical applications and outcomes of AI-driven traffic management systems. These real-world examples provide insights into the effectiveness and scalability of AI solutions in diverse urban settings In conclusion, AI-driven network traffic management represents a pivotal advancement in creating smarter, more sustainable urban environments. While challenges persist, ongoing research and technological advancements continue to enhance the efficacy and applicability of AI in urban mobility.

References

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Published

2025-01-01

How to Cite

Intelligent Network Traffic Management in Smart Cities Using AI. (2025). International Journal of Computer Technology and Electronics Communication, 8(1), 10025-10029. https://doi.org/10.15680/5aj38n88