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基于智能体的交通推荐系统:重新审视与修订城市交通管理策略

An Agent-Based Traffic Recommendation System: Revisiting and Revising Urban Traffic Management Strategies

IEEE Transactions on Systems, Man, and Cybernetics: Systems · 2022
被引 39
ABS 3

中文导读

提出一种人机协同的智能体推荐系统,通过深度推荐模型为每个控制对象(如路口)生成定制化策略,并用真实数据验证其优于人工操作。

Abstract

Strategic traffic management is crucial for combating traffic congestion at the macroscopic level. However, such a field is still relatively unexplored, particularly for microscopic control objects, such as intersections and coordinated intersection groups. This article proposes a human-in-the-loop recommendation system for strategic urban traffic management, which follows an agent-based structure. A regional agent dispatcher is defined to assign agents for operation whenever “operation on-demand” is required. Such a requirement is identified by a daily-dependent operational mode on strategic traffic operations at a control object level. The strategic management scheme for each control object is guided by a strategic agent (customized), which is essentially a deep recommender model with a specific architecture. By featuring the multiagent design, a customized operational scheme can be generated at the intersection level, which instructs the corresponding controller to take specific operations. The utility of the recommendation system is demonstrated via a case study using real-world traffic data. In both offline and online evaluations, the system performs consistently at traffic operational recommendations in different scenarios and has the potential to provide more reasonable traffic operational strategies than a human-operated system.

交通工程计算机科学交通优化运筹学交通拥堵