Print Email Facebook Twitter Exploring Demand Patterns of a Ride-Sourcing Service using Spatial and Temporal Clustering Title Exploring Demand Patterns of a Ride-Sourcing Service using Spatial and Temporal Clustering Author Liu, Theo (TU Delft Civil Engineering & Geosciences) Contributor Krishnakumari, P.K. (mentor) Cats, O. (graduation committee) Degree granting institution Delft University of Technology Project CriticalMaaS Date 2019-01-11 Abstract On-demand transit has become a common mode of transport with ride-sourcing companies like Uber, Lyft, Didi transforming the way we move. With the increase in popularity for such services, the supply needs to adapt according to the demand. For this, the demand needs to analyzed to examine if there are recurrent patterns in them; making it predictable and easily manageable. The identified demand patterns can then be used for optimized fleet management. In this paper, we propose three steps for extracting such demand patterns from travel requests (1) constructing the origin-destination zones by spatial clustering (2) calculating the hourly origin-destination matrix for each day, and (3) temporal clustering to extract the dynamic demand patterns. We demonstrate the three step approach on the open-source Didi taxi data. The data is composed of 1 month (November 2016) of travel requests data from a small area in Chengdu, China with approximately 200 000 rides for a single day on average. It can provide insight into the day-to-day regularity and within-day regularity of the demand patterns in Chengdu. Subject ride-sourcingspatial clusteringtemporal clusteringdemand patterns To reference this document use: http://resolver.tudelft.nl/uuid:4954aaaf-4fe8-4720-91da-d86d1bce3641 Coordinates 30.7, 104.1 Part of collection Student theses Document type student report Rights © 2019 Theo Liu Files PDF DiDI_demand_patterns_thesis.pdf 2.85 MB Close viewer /islandora/object/uuid:4954aaaf-4fe8-4720-91da-d86d1bce3641/datastream/OBJ/view