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Anomalous Traffic Pattern Detection in Large Urban Areas: Tensor-Based Approach with Continuum Modeling of Traffic Flow

机译:大城市地区的异常交通模式检测:基于张量的交通流连续模型

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Analysis of traffic dynamics in large urban transportation networks is a complicated procedure, yet critical for many areas oftransportation research and contemporary intelligent transportation systems. The degree of complexity is increasing, consideringthe existence of unexpected events such as natural or manmade disasters. The study addresses the needs of detection anddescription of abnormal traffic patterns formed due to the presence of aforementioned disruptions. In order to take into accountcomplex spatiotemporal structure of traffic dynamics and preserve multi-mode correlations, tensor-based traffic data representationis put forward. Tensor robust principal component analysis is applied for the purpose of discovering distinctive normal andabnormal traffic patterns. For validation purposes, continuum modeling approach is employed to emulate traffic dynamics, withconsideration of the effect of disruptions. The results suggested applicability of proposed approach in order to discover abnormalpatterns in large urban networks.
机译:大型城市交通网络中交通动态的分析是一个复杂的过程,但对于交通研究和现代智能交通系统的许多领域而言却至关重要。考虑到自然或人为灾难等意外事件的存在,复杂性的程度正在增加。该研究满足了检测和描述由于上述中断而形成的异常流量模式的需求。为了考虑复杂的交通时空结构并保持多模式相关性,提出了基于张量的交通数据表示方法。张量鲁棒主成分分析用于发现独特的正常和异常流量模式的目的。为了进行验证,考虑了干扰的影响,采用了连续建模方法来模拟交通动态。结果表明该方法的适用性,以发现大型城市网络中的异常模式。

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