Print Email Facebook Twitter Identification of the Hierarchy in Public Transport Networks based on Passenger Flow Patterns Title Identification of the Hierarchy in Public Transport Networks based on Passenger Flow Patterns Author Wang, Ziyulong (TU Delft Civil Engineering and Geosciences) Contributor Cats, Oded (mentor) Verma, Trivik (graduation committee) Luo, Ding (graduation committee) Degree granting institution Delft University of Technology Date 2019-08-19 Abstract In this study, a data-driven, generic and transfer-based methodology for separation and ranking the PTNs has been put forward. With the hierarchy of a network, this is beneficiary for the management and operation of operators for focusing on the higher level network layer and in turn provide better service for passengers. The study introduces three steps to rank the hierarchy of a PTN: (1) using the passenger journey and ride data to derive transfer flow matrix; (2) applying C-space network representation with community detection method to separate and visualize the PTN layer; (3) performing ranking method, regarding inner- and intra- transfer flow. To this end, the hierarchy of a PTN could be presented with temporal attributes. Different day of week and various time period of a day could potentially yield different hierarchy. The proposed unsupervised learning algorithm is based on passenger transfer flow data, independent from geographic location and the mode of transportation. The study shows that the level is changing based on the selected time slot and can be a mixture of different modes, which is dissimilar from the hierarchy purely based on qualitative method. Subject HierarchyPublic TransportData-Driven To reference this document use: http://resolver.tudelft.nl/uuid:752f180e-1db7-4dcc-ada5-dffabf505125 Part of collection Student theses Document type student report Rights © 2019 Ziyulong Wang Files PDF Mini_thesis_Report_of_Ziyulong.pdf 2.38 MB Close viewer /islandora/object/uuid:752f180e-1db7-4dcc-ada5-dffabf505125/datastream/OBJ/view