Article ID Journal Published Year Pages File Type
525432 Transportation Research Part C: Emerging Technologies 2012 15 Pages PDF
Abstract

City logistics routing requires time-dependent travel times for each network link. We rely on the concept of Floating Car Data (FCD) to develop and provide such travel times. Different levels of aggregation in the determination of time-dependent travel times from a database of historical FCD are presented and evaluated with regard to routing quality. Furthermore, a Data Mining approach is introduced, allowing for a substantial reduction of the volume of input data required for city logistics routing. The different approaches are investigated and evaluated by a huge amount of FCD collected for the urban area of Stuttgart, Germany. The results show that the Data Mining approach enables efficient provision of time-dependent travel times without a significant loss of routing quality for city logistics applications.

► More reliable travel time anticipation by utilization of Floating Car Data. ► Cluster analysis for compact representation of time-dependent travel times. ► Comparison of different planning data sets for routing in city logistics. ► Simulation investigates benefits and efforts of time-dependent traffic data sets.

Related Topics
Physical Sciences and Engineering Computer Science Computer Science Applications
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