Resident Travel Analysis based on GPS Trajectory

Authors

  • Ruiqi Dong

DOI:

https://doi.org/10.54097/ajmss.v2i3.8764

Keywords:

Time, GPS, Space, Resident, Taxi

Abstract

Taxi is an important means of transportation, and its trajectory data contains a wealth of travel information. Taxi trajectory data processed by trajectory data mining technology can reflect residents' activity rules and behavior patterns, so as to provide a reference for urban planning decisions. with its wide coverage, high sampling rate, good location accuracy, large data scale and rich information, taxi trajectory data has been widely used in traffic management, urban planning, user behavior analysis and intelligent transportation. Analyze the characteristics of residents' travel demand from two dimensions: time and space. Analysis of travel demand time characteristics. firstly, analyze the overall demand characteristics of residents, and secondly, analyze the demand characteristics of residents on workdays and rest days; In the analysis of spatial characteristics of travel demand, the static and dynamic spatial characteristics of residents are analyzed separately.

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References

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Published

22-05-2023

Issue

Section

Articles

How to Cite

Dong, R. (2023). Resident Travel Analysis based on GPS Trajectory. Academic Journal of Management and Social Sciences, 2(3), 180-182. https://doi.org/10.54097/ajmss.v2i3.8764