识别城市功能区域:整合地铁智能卡数据和汽车租赁数据的多维框架方法

IF 2.6 3区 经济学 Q2 ENVIRONMENTAL STUDIES Environment and Planning B: Urban Analytics and City Science Pub Date : 2024-07-30 DOI:10.1177/23998083241267370
Yuling Xie, Xiao Fu, Yi Long, Mingyang Pei
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引用次数: 0

摘要

由于居民行为的变化,城市功能往往会与最初的规划相背离。有效的城市规划和更新需要根据居民行为数据(包括活动和出行数据)准确识别城市功能区域。然而,以往的方法主要依赖兴趣点(POI)数据或单一来源的交通数据,往往忽略了居民活动和出行行为的综合影响。在本研究中,我们引入了一个新颖的框架,将多种交通数据源(如地铁智能卡数据和打车数据)与兴趣点数据整合在一起,以识别城市功能区域。这种方法的独特之处在于它同时考虑了居民行为的两个关键维度:出行和活动行为。通过结合这些维度,我们提取了一整套特征,包括出行时间、出行流量、出发地-目的地模式、活动类型和活动时间,然后在区域层面(即交通分析区)对这些特征进行汇总。为了处理这些特征,我们使用潜在 Dirichlet 分配(LDA)从每种数据类型中提取高级语义特征。此外,为了处理来自地铁智能卡的稀疏数据,我们采用了专门的聚类技术。与单一数据源和 k-means 聚类算法相比,整合来自多个数据源的多样化互补信息能够更准确、更细致地识别城市功能区域,为城市规划者提供有价值的见解。
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Identifying Urban functional regions: A multi-dimensional framework approach integrating metro smart card data and car-hailing data
Urban functions often diverge from initial planning due to changes driven by residents’ behaviors. Effective urban planning and renewal require accurately identifying urban functional regions based on residents’ behavior data (including activity and travel data). However, previous methods have primarily relied on either point of interest (POI) data or a single source of traffic data, and often ignore the combined influence of residents’ activities and travel behaviors. In this study, we introduce a novel framework that integrates multiple sources of traffic data (such as metro smart card data and car-hailing data) with POI data to identify urban functional regions. This approach is unique because it simultaneously considers two critical dimensions of residents’ behavior: travel and activity behaviors. By combining these dimensions, we extract a comprehensive set of characteristics, including travel time, travel flow, origin-destination patterns, activity types, and activity time, which are then aggregated at the regional level (i.e., traffic analysis zone). To process these characteristics, we use latent Dirichlet allocation (LDA) to extract high-level semantic features from each data type. Additionally, to handle the sparse data from metro smart cards, we employ a specialized clustering technique. The integration of diverse and complementary information from multiple data sources enables more accurate and nuanced identification of urban functional regions than single data source and k-means clustering algorithm, providing valuable insights for urban planners.
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来源期刊
CiteScore
6.10
自引率
11.40%
发文量
159
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