Abstract

Along with the rapid development of China’s economy as well as the continuing urbanization, the internal spatial and functional structures of cities within this country are also gradually changing and restructuring. The study of functional region identification of a city is of great significance to the city’s functional cognition, spatial planning, economic development, human livability, and so forth. Backed by the emerging urban Big Data, and taking the traffic community as the smallest research unit, a method is proposed to identify urban functional regions by combining floating car track data with point of interest (POI) data recorded on an electronic map. It provides a new perspective for the study of urban functional region identification. Firstly, the main functional regions of the city studied are identified through clustering analysis according to the passenger’s spatial-temporal travel characteristics derived from the floating car data. Secondly, the fine-grained identification of the functional region attributes of the traffic communities is achieved using the label information from POI data. Finally, the AND-OR operation is performed on the recognition results derived by the clustering algorithm and the Delphi method, to obtain the identification of urban functional regions. This approach is verified by applying it to the main urban zone within Chengdu’s Third Ring Road. The results show that: (1) There are fewer single functional regions and more mixed functional regions in the main urban zone of Chengdu, and the distribution of the functional regions are roughly concentric centering in the city center. (2) Using the traffic community as a research unit, combined with dynamic human activity trajectory data and static urban interest point data, complex urban functional regions can be effectively identified.

Highlights

  • A city is a complex system, a dense combination of people and houses with convenient transportation which covers a certain region [1,2,3]

  • We propose a method of urban functional region identification based on the floating car track data and point of interest (POI) data

  • The traffic community was selected as the smallest research unit in the study area, and the Expectation-Maximization algorithm and Delphi method were used as the main methods of research

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Summary

Introduction

A city is a complex system, a dense combination of people and houses with convenient transportation which covers a certain region [1,2,3]. With the continuous development of cities, different functional regions are gradually formed, such as residential, commercial, and industrial regions, and so on. This makes the spatial structure of cities more and more complex [4,5,6]. The traditional functional urban region survey is usually carried out by a field survey to update the existing historical urban planning map of a city. This process is laborious, and the survey accuracy is subject to subjective factors. The emergence of massive urban big data has created new opportunities for urban geographical computing and analysis, and has provided abundant means for the identification of urban functional regions [7,8,9,10]

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