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The treatment of uncertainty in the dynamic origin-destination estimation problem using a fuzzy approach

机译:用模糊方法处理动态原点估计问题中的不确定性

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Regardless of existing types of transportation and traffic model and their applications, the essential input to these models is travel demand, which is usually described using origin-destination (OD) matrices. Due to the high cost and time required for the direct development of such matrices, they are sometimes estimated indirectly from traffic measurements recorded from the transportation network. Based on an assumed demand profile, OD estimation problems can be categorized into static or dynamic groups. Dynamic OD demand provides valuable information on the within-day fluctuation of traffic, which can be employed to analyse congestion dissipation. In addition, OD estimates are essential inputs to dynamic traffic assignment (DTA) models. This study presents a fuzzy approach to dynamic OD estimation problems. The problems are approached using a two-level model in which demand is estimated in the upper level and the lower level performs DTA via traffic simulation. Using fuzzy rules and the fuzzy C-Mean clustering approach, the proposed method treats uncertainty in historical OD demand and observed link counts. The approach employs expert knowledge to model fitted link counts and to set boundaries for the optimization problem by defining functions in the fuzzification process. The same operation is performed on the simulation outputs, and the entire process enables different types of optimization algorithm to be employed. The Box-complex method is utilized as an optimization algorithm in the implementation of the approach. Empirical case studies are performed on two networks to evaluate the validity and accuracy of the approach. The study results for a synthetic network and a real network demonstrate the robust performance of the proposed method even when using low-quality historical demand data.
机译:无论现有的运输和交通模型类型及其应用如何,这些模型的基本输入都是旅行需求,通常使用始发地(OD)矩阵对其进行描述。由于直接开发这样的矩阵需要高昂的成本和时间,因此有时会根据从运输网络记录的流量测量结果间接估算它们。基于假定的需求概况,OD估计问题可以分为静态或动态组。动态OD需求提供了有关当日流量波动的有价值的信息,可用于分析拥塞消散。此外,OD估算是动态流量分配(DTA)模型的重要输入。这项研究提出了一种解决动态OD估计问题的模糊方法。使用两级模型来解决问题,在该模型中,上层需求被估计,而下层则通过流量模拟执行DTA。使用模糊规则和模糊C均值聚类方法,该方法可以处理历史OD需求和观察到的链接数中的不确定性。该方法利用专家知识来对拟合的链接数进行建模,并通过在模糊化过程中定义功能来设置优化问题的边界。对模拟输出执行相同的操作,并且整个过程可以采用不同类型的优化算法。 Box-complex方法在该方法的实现中被用作优化算法。在两个网络上进行经验案例研究,以评估该方法的有效性和准确性。合成网络和真实网络的研究结果表明,即使使用低质量的历史需求数据,该方法也具有鲁棒的性能。

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