Traffic and Mobility Optimization Using AI: Comparative Study between Dubai and Riyadh
- URL: http://arxiv.org/abs/2506.01974v1
- Date: Thu, 15 May 2025 15:07:00 GMT
- Title: Traffic and Mobility Optimization Using AI: Comparative Study between Dubai and Riyadh
- Authors: Kanwal Aalijah,
- Abstract summary: We will explore how AI can be used to understand the traffic and mobility related issues and its effects on the residents sentiment.<n>The approach combines real-time traffic data with geo-located sentiment analysis, offering a comprehensive and dynamic approach to urban mobility planning.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Urban planning plays a very important role in development modern cities. It effects the economic growth, quality of life, and environmental sustainability. Modern cities face challenges in managing traffic congestion. These challenges arise to due to rapid urbanization. In this study we will explore how AI can be used to understand the traffic and mobility related issues and its effects on the residents sentiment. The approach combines real-time traffic data with geo-located sentiment analysis, offering a comprehensive and dynamic approach to urban mobility planning. AI models and exploratory data analysis was used to predict traffic congestion patterns, analyze commuter behaviors, and identify congestion hotspots and dissatisfaction zones. The findings offer actionable recommendations for optimizing traffic flow, enhancing commuter experiences, and addressing city specific mobility challenges in the Middle East and beyond.
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