Moving in time and space – Location intelligence for carsharing decision support
作者:
Highlights:
• We apply location intelligence to provide decision support to carsharing operators.
• Spatial and temporal variation in carsharing demand is explained and predicted.
• The system enables operators to develop zone-based flexible pricing schemes.
• Prediction quality is validated by analyzing data from Amsterdam and Berlin.
摘要
In this paper we develop a spatial decision support system that assists free-floating carsharing providers in countering imbalances between vehicle supply and customer demand in existing business areas and reduces the risk of imbalance when expanding the carsharing business to a new city. For this purpose, we analyze rental data of a major carsharing provider in the city of Amsterdam in combination with points of interest (POIs). The spatio-temporal demand variations are used to develop pricing zones for existing business areas. We then apply the influence of POIs derived from carsharing usage in Amsterdam in order to predict carsharing demand in the city of Berlin. The results indicate that predicted and actual usage patterns are very similar. Hence, our approach can be used to define new business areas when expanding to new cities to include high demand areas and exclude low demand areas, thereby reducing the risk of supply-demand imbalance.
论文关键词:Carsharing,Spatial analytics,Location-based services,Spatial decision support system
论文评审过程:Received 5 October 2016, Revised 12 April 2017, Accepted 4 May 2017, Available online 8 May 2017, Version of Record 26 June 2017.
论文官网地址:https://doi.org/10.1016/j.dss.2017.05.005