Abstract

With the availability of large geospatial datasets, the study of collective human mobility spatiotemporal patterns provides a new way to explore urban spatial environments from the perspective of residents. In this paper, we constructed a classification model for mobility patterns that is suitable for taxi OD (Origin-Destination) point data, and it is comprised of three parts. First, a new aggregate unit, which uses a road intersection as the constraint condition, is designed for the analysis of the taxi OD point data. Second, the time series similarity measurement is improved by adding a normalization procedure and time windows to address the particular characteristics of the taxi time series data. Finally, the DBSCAN algorithm is used to classify the time series into different mobility patterns based on a proximity index that is calculated using the improved similarity measurement. In addition, we used the random forest algorithm to establish a correlation model between the mobility patterns and the regional functional characteristics. Based on the taxi OD point data from Nanjing, we delimited seven mobility patterns and illustrated that the regional functions have obvious driving effects on these mobility patterns. These findings are applicable to urban planning, traffic management and planning, and land use analyses in the future.

Highlights

  • Urban applications for city planning represent one of the most significant areas in ubiquitous computing, which has great application prospects in urban space research [1,2,3]

  • We expect to classify more mobility patterns from taxi Origin and Destination (OD) point data to support the in-depth study of urban planning and traffic analysis

  • We designed a new aggregate unit and improved Chouakria and Nagabhushan’s method according to the particular characteristics of taxi travel and used the DBSCAN clustering method to construct a model that is suitable for classifying the mobility patterns obtained from the taxi OD point data

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Summary

Introduction

Urban applications for city planning represent one of the most significant areas in ubiquitous computing, which has great application prospects in urban space research [1,2,3]. The classification of mobility patterns still has shortcomings that need to be further studied to understand the causal mechanism of different patterns for the prediction of travel demand, personalized traffic recommendation systems, location choosing, and the planning and management of urban facilities and services [31,32,33]. We expect to classify more mobility patterns from taxi OD point data to support the in-depth study of urban planning and traffic analysis. We designed a new aggregate unit and improved Chouakria and Nagabhushan’s method according to the particular characteristics of taxi travel and used the DBSCAN clustering method to construct a model that is suitable for classifying the mobility patterns obtained from the taxi OD point data.

Materials and Methods
Study as
1–15 September
Travel Time Series Similarity Measurement
Distance Function Based on Dynamic Time Warping
Adaptive Dissimilarity Index
Construction of the Similarity Measurement Function
Clustering Method for the Travel Time Series
Comparing the Results with the K-Means Method
Clusterof1the contained
Screening the Aggregate
Classification of the Travel Time Series
Spatial Distribution of the Travel Patterns
Discussion
Conclusions

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