Trust in Smart City Mobility Applications: A Multi-Agent System Perspective

This chapter presents a recommendation system framework for smart mobility applications, emphasizing traffic monitoring and parking management in smart cities. Using Reinforcement Learning (RL) and Social Network (SN) concepts, the methodology classifies agents as trustworthy or untrustworthy, tackl...

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Bibliographic Details
Main Author: Maryam Javaherian
Format: Article
Language:English
Published: Universidade do Porto 2025-05-01
Series:U.Porto Journal of Engineering
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Online Access:https://journalengineering.fe.up.pt/index.php/upjeng/article/view/2665
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Summary:This chapter presents a recommendation system framework for smart mobility applications, emphasizing traffic monitoring and parking management in smart cities. Using Reinforcement Learning (RL) and Social Network (SN) concepts, the methodology classifies agents as trustworthy or untrustworthy, tackling multi-agent system challenges in uncertain environments. The research aims to create algorithms and models for safe, efficient, sustainable mobility solutions, addressing data exchange and decision-making issues. Agents gather and process information, make decisions with incomplete data, and interact to achieve goals. Real-world data will validate the approach, enhancing decision-making and improving urban mobility.
ISSN:2183-6493