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A maximum entropy-least squares estimator for elastic origindestination trip matrix estimation

机译:用于弹性促进跳闸矩阵估计的最大熵 - 最小二乘估计

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In transportation subnetwork-supernetwork analysis, it is well known that the origin-destination (O-D) flow table of a subnetwork is not only determined by trip generation and distribution, but also by traffic routing and diversion, due to the existence of internal-external, external-internal and external-external flows. This result indicates the variable nature of subnetwork O-D flows. This paper discusses an elastic O-D flow table estimation problem for subnetwork analysis. The underlying assumption is that each cell of the subnetwork O-D flow table contains an elastic demand function rather than a fixed demand rate and the demand function can capture all traffic diversion effect under various network changes. We propose a combined maximum entropy-least squares (ME-LS) estimator, by which O-D flows are distributed over the subnetwork so as to maximize the trip distribution entropy, while demand function parameters are estimated for achieving the least sum of squared estimation errors. While the estimator is powered by the classic convex combination algorithm, computational difficulties emerge within the algorithm implementation until we incorporate partial optimality conditions and a column generation procedure into the algorithmic framework. Numerical results from applying the combined estimator to a couple of subnetwork examples show that an elastic O-D flow table, when used as input for subnetwork flow evaluations, reflects network flow changes significantly better than its fixed counterpart.
机译:在运输子网 - 超网络分析中,众所周知,子网的原点 - 目的地(OD)流表不仅通过行程生成和分布而确定,而且由于内部外部的存在,也由流量路由和转移决定,外部内部和外部外部流动。该结果表示子网O-D流的可变性质。本文讨论了子网分析的弹性O-D流表估计问题。基础假设是子网O-D流动表的每个单元都包含弹性需求函数而不是固定需求速率,并且需求函数可以在各种网络变化下捕获所有流量转移效果。我们提出了一个组合的最大熵 - 最小二乘(ME-LS)估计器,通过该估计器,通过该估计器通过该估计器分布在子网上,以便最大化跳闸分布熵,而需求函数参数估计用于实现平方估计误差的最小总和。虽然估计器由经典凸组合算法供电,但是计算困难在算法实现中出现,直到我们将部分最优条件和列生成过程纳入算法框架。将组合估计器应用于几个子网示例的数值结果表明,当用作子网流量评估的输入时,弹性O-D流表反映了网络流量明显优于固定对应物的变化。

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