[期刊论文][research article]


A multi-hierarchical method to extract spatial network structures from large-scale origin-destination flow data

作   者:
Xingxing Zhou;Haiping Zhang;Xinyue Ye;

出版年:2024

页     码:577 - 602
出版社:Taylor And Francis


摘   要:

Abstract Extracting spatial network structure (SNS) from large-scale origin-destination flow data is an important approach for understanding interregional association patterns and interaction laws. Currently, the extraction of SNS primarily relies on complex network clustering or aggregated statistics with predefined regional constraints. However, these methods often overlook one or more fundamental principles essential for ensuring correctness and accuracy: 1) Aggregation of spatially proximate nodes is necessary when strong interactions exist, whereas separation is preferred in the absence of such interactions. 2) It is crucial to maintain strong interactions between non-spatially proximate nodes. 3) Ultimately, nodes within each group should exhibit spatial continuity. To address these challenges, a multi-hierarchical SNS extraction method is proposed, which focuses on raw node aggregating and generalization, measurement of interaction volume and strength between node groups and strategies for node/edge filtering. The effectiveness and value of the proposed method are demonstrated through a case study using city population migration data. Furthermore, the method provides a general approach for extracting SNSs from any origin-destination flow dataset that includes locations and weights, facilitating effective flow map generalization through aggregation of origin destination (OD) flow data.



关键字:

Spatial complex network;spatial network structure;map generalization;spatial interaction;intelligent optimization


所属期刊
International Journal of Geographical Information Science
ISSN: 1365-8816
来自:Taylor And Francis