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Estimating multi-class dynamic origin-destination demand through a forward-backward algorithm on computational graphs

机译:通过在计算图上的前向后算法估算多级动态源目标需求

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摘要

Transportation networks are unprecedentedly complex with heterogeneous vehicular flow. Conventionally, vehicles are classified by size, the number of axles or engine types, e.g., standard passenger cars versus trucks. However, vehicle flow heterogeneity stems from many other aspects in general, e.g., ride-sourcing vehicles versus personal vehicles, human driven vehicles versus connected and automated vehicles. Provided with some observations of vehicular flow for each class in a large-scale transportation network, how to estimate the multi-class spatio-temporal vehicular flow, in terms of time-varying Origin-Destination (OD) demand and path/link flow, remains a big challenge. This paper presents a solution framework for multi-class dynamic OD demand estimation (MCDODE) in large-scale networks that work for any vehicular data in general. The proposed framework cast the standard OD estimation methods into a computational graph with tensor representations of spatio-temporal flow and all intermediate features involved in the MCDODE formulation. A forward-backward algorithm is proposed to efficiently solve the MCDODE formulation on computational graphs. In addition, we propose a novel concept of tree-based cumulative curves to compute the exact multi-class Dynamic Assignment Ratio (DAR) matrix. A Growing Tree algorithm is developed to construct tree-based cumulative curves. The proposed framework is examined on a small network, a mid-size network as well as a real-world large-scale network. The experiment results indicate that the proposed framework is compelling, satisfactory and computationally plausible.
机译:运输网络具有前所未有的复杂性,具有异质车辆流量。传统上,车辆按尺寸为尺寸,轴或发动机类型的数量,例如标准乘用车与卡车。然而,车辆流动异质性源于许多其他方面,例如,例如,乘坐车辆与个人车辆,人类驱动的车辆与连接和自动车辆。在大规模的运输网络中为每个类进行了一些观察,在大规模的运输网络中,如何在时变原始目的地(OD)需求和路径/链接流程方面估计多级时空车辆流量,仍然是一个很大的挑战。本文为大型网络中的多级动态OD需求估计(MCDode)提供了一种用于任何车辆数据的多级动态OD需求估计(MCDode)的解决方案框架。所提出的框架将标准OD估计方法铸造成具有时空流量的张量表示的计算图和MCDode配方中涉及的所有中间特征。提出了一种前后算法,以有效地解决计算图中的MCDODE制剂。此外,我们提出了一种基于树的累积曲线的新颖概念来计算精确的多级动态分配比(DAR)矩阵。开发了一种生长的树算法以构建基于树的累积曲线。拟议的框架是在一个小型网络上进行检查,中型网络以及现实世界的大型网络。实验结果表明,拟议的框架是引人注目的,令人满意和计算的符号。

著录项

  • 来源
    《Transportation research》 |2020年第10期|102747.1-102747.30|共30页
  • 作者

    Ma Wei; Pi Xidong; Qian Sean;

  • 作者单位

    Hong Kong Polytech Univ Dept Civil & Environm Engn Hong Kong Peoples R China;

    Carnegie Mellon Univ Dept Civil & Environm Engn Pittsburgh PA 15213 USA;

    Carnegie Mellon Univ Dept Civil & Environm Engn Pittsburgh PA 15213 USA|Carnegie Mellon Univ H John Heinz III Heinz Coll Pittsburgh PA 15213 USA;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    O-D estimation; Machine learning; Neural network; Dynamic networks; Multi-source data;

    机译:O-D估计;机器学习;神经网络;动态网络;多源数据;

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