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Operational Scenario Definition in Traffic Simulation-Based Decision Support Systems: Pattern Recognition Using a Clustering Algorithm

机译:基于交通仿真的决策支持系统中的操作场景定义:使用聚类算法的模式识别

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This paper is intended to mine historical data by presenting a scenario clustering approach to identify appropriate scenarios for mesoscopic simulation as a part of the evaluation of transportation projects or operational measures. It provides a systematic and efficient approach to select and prepare effective input scenarios for a given traffic simulation model. The scenario clustering procedure has two primary applications: travel time reliability analysis, and traffic estimation and prediction systems. The ability to systematically identify similarity and dissimilarity among weather scenarios can facilitate the selection of critical scenarios for reliability studies. It can also support real-time weather-responsive traffic management (WRTM) by quickly classifying a current or predicted weather condition into predefined categories and suggesting relevant WRTM strategies that can be tested via real-time traffic simulation before deployment. A detailed method for clustering weather time series data is presented and demonstrated using historical data. Two clustering algorithms with different similarity measures are compared. Clustering results using a k-means clustering algorithm with squared Euclidean distance are illustrated in the travel time reliability application.
机译:本文旨在通过提出一种情景聚类方法来挖掘历史数据,以识别适合介观模拟的情景,作为交通项目或运营措施评估的一部分。它为选择和准备给定交通模拟模型的有效输入方案提供了系统有效的方法。场景聚类过程具有两个主要应用程序:旅行时间可靠性分析以及交通估计和预测系统。系统地识别天气情况之间的相似性和不相似性的能力可以帮助为可靠性研究选择关键的情况。它还可以通过将当前或预测的天气状况快速分类到预定义的类别中,并提出可以在部署之前通过实时流量模拟进行测试的相关WRTM策略,来支持实时天气响应流量管理(WRTM)。提出并使用历史数据演示了对天气时间序列数据进行聚类的详细方法。比较了两种具有不同相似性度量的聚类算法。在旅行时间可靠性应用中说明了使用平方欧几里德距离的k均值聚类算法进行聚类的结果。

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