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A Bayesian method for estimating traffic flows based on plate scanning

机译:基于车牌扫描的贝叶斯交通流量估计方法

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In this paper a special conjugate Bayesian method, for reconstructing and estimating traffic flows, based on α-shifted-Gamma ( Upgamma (theta ,,lambda ) ) models ( H(alpha ,,theta ,,lambda ) ) is given. If the numbers of users traveling through different routes are assumed to be independent ( H(alpha ,,theta ,,lambda) ) variables with common ( lambda,) the link, origin–destination (OD) and node flows are also ( H(alpha ,,theta ,,lambda ) ) random variables. We assume that the main source of information is plate scanning, which permits us to identify, totally or partially, the vehicle route, OD and link flows by scanning their corresponding plate numbers at an adequately selected subset of links. The reconstruction of the sample flows can be done exactly or approximately, depending on the intensity of the plate scanning sampling procedure. To this end a generalized least squares technique is used together with the conservation laws. A Bayesian approach using special conjugate families is proposed that allows us to estimate different traffic flows, such as route, OD-pair, scanned link or counted link flows. A detailed description of how the prior assessment, the sampling, the posterior updating and the obtention of the Bayesian distribution is given. Finally, one example of application is used to illustrate the methods and procedures.
机译:在本文中,给出了一种特殊的共轭贝叶斯方法,用于基于α移位的伽玛(Upgamma(theta ,, lambda))模型(H(alpha ,, theta ,, lambda))来重建和估计交通流量。如果假设通过不同路径旅行的用户数是具有共同(lambda)的独立(H(alpha ,, theta ,, lambda))变量,则链接,起点-目的地(OD)和节点流也为(H( alpha ,, theta ,, lambda))随机变量。我们假设信息的主要来源是车牌扫描,这使我们能够通过在适当选择的链接子集上扫描相应的车牌号来全部或部分地识别车辆路线,OD和链接流。样品流的重建可以完全或近似完成,具体取决于板扫描采样程序的强度。为此,将广义最小二乘技术与守恒定律一起使用。提出了一种使用特殊共轭族的贝叶斯方法,该方法允许我们估计不同的流量,例如路线,OD对,扫描的链接或计数的链接流。详细介绍了如何进行事前评估,抽样,后验更新和贝叶斯分布的遵循性。最后,以一个应用示例说明方法和步骤。

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