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High-dimensional offline origin-destination (OD) demand calibration for stochastic traffic simulators of large-scale road networks

机译:大型路网随机交通模拟器的高维离线原点(OD)需求校准

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摘要

This paper considers high-dimensional offline calibration problems for large-scale simulation-based network models. We propose a metamodel simulation-based optimization (SO) approach. The proposed method is formulated and validated on a simple synthetic toy network. It is then applied to a high-dimensional case study of a large-scale Singapore network. Compared to two benchmark methods, a derivative-free pattern search method and the SPSA method, the proposed method improves the objective function estimates by two orders of magnitude. Moreover, this improvement is achieved after only 2 simulation runs. Hence, the proposed method is computationally efficient.The main idea of the proposed approach is to embed, within the SO algorithm, information from an analytical (i.e., lower-resolution) yet differentiable and tractable network model. It is this analytical structural information that enables the SO algorithm to become both suitable for high-dimensional problems and computationally efficient. For a network with n links, the analytical network model is implemented as a system of n nonlinear equations. Hence, it scales linearly with the number of links in the network and independently of link attributes (such as link length) and of the dimension of the route choice set. (C) 2019 Published by Elsevier Ltd.
机译:本文考虑了基于大规模仿真的网络模型的高维离线校准问题。我们提出了一种基于元模型仿真的优化(SO)方法。该方法是在一个简单的合成玩具网络上制定并验证的。然后将其应用于大型新加坡网络的高维案例研究。与两种基准方法(无导数模式搜索方法和SPSA方法)相比,该方法将目标函数估计值提高了两个数量级。此外,仅运行2次仿真即可实现此改进。因此,提出的方法在计算上是有效的。提出的方法的主要思想是将来自解析(即,较低分辨率)但可区分且易于处理的网络模型的信息嵌入到SO算法中。正是这种分析结构信息使SO算法变​​得既适合于高维问题,又具有计算效率。对于具有n个链接的网络,分析网络模型被实现为n个非线性方程组。因此,它与网络中链路的数量成线性比例,并且与链路属性(例如链路长度)和路由选择集的尺寸无关。 (C)2019由Elsevier Ltd.发布

著录项

  • 来源
    《Transportation research》 |2019年第6期|18-43|共26页
  • 作者

    Osorio Carolina;

  • 作者单位

    MIT, Civil & Environm Engn Dept, Off 1-232, Cambridge, MA 02139 USA;

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  • 正文语种 eng
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