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2014 | 2 | 145--153
Tytuł artykułu

MITC: An Intention-Based Model for Cooperative Resolution of Traffic Conflicts

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Języki publikacji
Urban traffic problems have become a quotidian problem that affects many cities in the world. This problem, caused by the exponential increase of vehicles, leads to the appearance of different complications such as environmental pollution, accidents and slow mobility. This work formulates MITC, a model of cooperation focused to conflict resolution for the traffic agents, considering explicit communication of their intentions, allowing them to adjust their decisions intelligently, so as to reduce the conflicts and mitigate traffic congestion.(original abstract)
Opis fizyczny
  • Pontifical Javeriana University
  • Pontifical Javeriana University
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