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Anomaly detection in transportation networks using machine learning techniques

机译:使用机器学习技术的交通网络异常检测

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We develop a method to detect atypical traffic jams in the City of Boston. Our motivation is to detect these traffic jams which are often caused by some event (e.g., accident, lane closure, etc.) and enable the City to intervene before congestion spreads and adjacent roads are negatively affected. Using a traffic jam dataset provided by the City of Boston, we present a novel detection system for anomalous jam identification. We demonstrate its effectiveness by using it to identify traffic jams that cannot be explained by typical traffic patterns.
机译:我们开发了一种检测波士顿市非典型交通拥堵的方法。我们的动机是检测经常由某些事件(例如,事故,关闭车道等)引起的交通拥堵,并使纽约市能够在拥堵蔓延和相邻道路受到不利影响之前进行干预。使用波士顿市提供的交通拥堵数据集,我们提出了一种用于异常拥堵识别的新颖检测系统。我们通过使用它来识别典型交通模式无法解释的交通拥堵来证明其有效性。

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