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research-article

Anytime route planning with constrained devices

Published: 01 August 2016 Publication History

Abstract

Urban mobility became a major challenge around the world, with frequent congestion and ever growing travel time. Albeit recent advances in the area of Intelligent Transportation Systems (ITS), it is still difficult to predict and manage the road infrastructure due to dynamics and instability of the traffic. One key issue is how, given some traffic monitoring information, a vehicle decides to dynamically change its route. In this paper, we analyze algorithms of the anytime class to make the route planning considering GPS traces of buses in Rio de Janeiro, as a measurement of traffic flows. Anytime algorithms inform, in a timely fashion, a sub-optimal response and progressively improves it as time goes by. We evaluate time and memory consumption, route length, arrival time, average velocity, distance traveled, and pathways on an experimental platform composed of Raspberry Pi nodes. For different time windows, the results show that ARA* allows finding alternative routes that, if used, help reduce traffic congestion.

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Information & Contributors

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Published In

cover image Computers and Electrical Engineering
Computers and Electrical Engineering  Volume 54, Issue C
August 2016
551 pages

Publisher

Pergamon Press, Inc.

United States

Publication History

Published: 01 August 2016

Author Tags

  1. ARA*
  2. Anytime algorithms
  3. Route planning
  4. Vehicular networks

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