Dynamic Time-Dependent Route Planning in Road Networks with User Preferences
December 30, 2015 Β· Declared Dead Β· π The Sea
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Authors
Moritz Baum, Julian Dibbelt, Thomas Pajor, Dorothea Wagner
arXiv ID
1512.09132
Category
cs.DS: Data Structures & Algorithms
Citations
39
Venue
The Sea
Last Checked
3 months ago
Abstract
There has been tremendous progress in algorithmic methods for computing driving directions on road networks. Most of that work focuses on time-independent route planning, where it is assumed that the cost on each arc is constant per query. In practice, the current traffic situation significantly influences the travel time on large parts of the road network, and it changes over the day. One can distinguish between traffic congestion that can be predicted using historical traffic data, and congestion due to unpredictable events, e.g., accidents. In this work, we study the \emph{dynamic and time-dependent} route planning problem, which takes both prediction (based on historical data) and live traffic into account. To this end, we propose a practical algorithm that, while robust to user preferences, is able to integrate global changes of the time-dependent metric~(e.g., due to traffic updates or user restrictions) faster than previous approaches, while allowing subsequent queries that enable interactive applications.
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