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Spatial partition for heterogeneous city networks composed of factors that influence the distribution of the macroscopic fundamental diagram

    Heng Ding Affiliation
    ; Hanyu Yuan Affiliation
    ; Xiaoyan Zheng Affiliation
    ; Hanyue Ma Affiliation
    ; Haijian Bai Affiliation

Abstract

Using a Macroscopic Fundamental Diagram (MFD) to implement partition control is effective in improving mobility in heterogeneous city networks. As one of the most complex issues in partition control, accurate sub-region partition is critical for control effectiveness. Current partition methods focus on the link density and precondition of existing MFD and disregard the factors that influence MFD distribution. To overcome this drawback, this study uses the characteristic value of the link and the intersection connected to the link as the analysis object and proposes an MFD sub-region partitioning method for large-scale networks. Firstly, the influences of road state parameters on MFD distribution are classified into traffic flow parameters, network physical properties, network operation mechanisms and emergencies. Simulation experiments are conducted to determine the degree to which these classifications affect MFD distribution. Secondly, a partition method combined with the link density and influence parameters of MFD is developed. The method is used for a preliminarily division of a road network through Minimum Spanning Tree (MST) and depth partition by the Normalised Cut (Ncut) algorithm. Finally, a case study is conducted in an actual city centre network, and results show that the developed method is superior to the single method based simply on link density.

Keyword : partition control, sub-region partition, macroscopic fundamental diagram, minimum spanning tree, normalised cut algorithm

How to Cite
Ding, H., Yuan, H., Zheng, X., Ma, H., & Bai, H. (2023). Spatial partition for heterogeneous city networks composed of factors that influence the distribution of the macroscopic fundamental diagram. Transport, 38(3), 152–164. https://doi.org/10.3846/transport.2023.20424
Published in Issue
Dec 21, 2023
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This work is licensed under a Creative Commons Attribution 4.0 International License.

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