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Estimation of origin-destination matrices using link counts and partial path data

机译:使用链接计数和部分路径数据估计原点 - 目的地矩阵

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摘要

After several decades of work by several talented researchers, estimation of the origin-destination matrix using traffic data has remained very challenging. This paper presents a set of innovative methods for estimation of the origin-destination matrix of large-scale networks, using vehicle counts on links, partial path data obtained from an automated vehicle identification system, and combinations of both data. These innovative methods are used to solve three origin-destination matrix estimation models. The first model is an extension of Spiess's model which uses vehicle count data while the second model is an extension of Jamali's model and it uses partial path data. The third model is a multiobjective model which utilizes combinations of vehicle counts and partial path data. The methods were tested to estimate the origin-destination matrix of a large-scale network from Mashhad City with 163 traffic zones and 2093 links, and the results were compared with the conventional gradient-based algorithm. The results show that the innovative methods performed better as compared to the gradient-based algorithm.
机译:经过几十年的几十年的工作,几十几位有才华的研究人员,使用交通数据估计原始目的地矩阵仍然非常具有挑战性。本文介绍了一组创新方法,用于估计大规模网络的原始目的地矩阵,使用了从自动化车辆识别系统获得的部分路径数据,以及两个数据的组合。这些创新方法用于解决三个原始目的地矩阵估计模型。第一个模型是Spiess模型的扩展,它使用车辆计数数据,而第二种模型是Jamali模型的扩展,它使用部分路径数据。第三种模型是一种多目标模型,其利用车辆计数和部分路径数据的组合。测试该方法以估计来自Mashhad城市的大规模网络的原始目的地矩阵,其中163个流量区和2093个链路,结果与传统的基于梯度的算法进行了比较。结果表明,与基于梯度的算法相比,创新方法更好。

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