4.6 Article

GATC and DeepCut: Deep spatiotemporal feature extraction and clustering for large-scale transportation network partition

Journal

Publisher

ELSEVIER
DOI: 10.1016/j.physa.2022.128110

Keywords

Transportation network partition; Clustering; Graph attention; Auto-encoder

Funding

  1. National Natural Science Foundation of China [52131203]
  2. Hong Kong Polytechnic University [P0041520]

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This paper presents two partition frameworks, GATC and DeepCut, for transportation network partition. These frameworks combine unsupervised deep learning and clustering, considering both temporal and spatial factors. A numerical example is used to verify the rationality and effectiveness of GATC and DeepCut in transportation network partition.
The network partition is an important method for many key transport problems, e.g., transport network zoning, parallel computing of traffic assignment problem, and analysis of the macroscopic fundamental diagram, to name a few. This paper designs two partition frameworks called GATC (Graph attention auto-encoder for clustering) and DeepCut, which can partition the transportation network into several components. These two frameworks combine unsupervised deep learning and clustering, taking into account both temporal factors and spatial factors. Firstly, the traffic flow time series data is encoded by graph attention auto-encoder, with graph structure and content considered. Secondly, the normalized cut method is used to partition the transportation network into several homogeneous sub-networks. DeepCut encodes the input data by a simple encoder, and the normalized cut method is used to partition the transportation network. The proposed methods are verified by a numerical example, which demonstrates the rationality and effectiveness of GATC and DeepCut for transportation network partition. (c) 2022 Elsevier B.V. All rights reserved.

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