首页> 外文OA文献 >Probabilistic Routing for On-Street Parking Search
【2h】

Probabilistic Routing for On-Street Parking Search

机译:路内停车搜索的概率路由

摘要

An estimated 30% of urban traffic is caused by search for parking spots [Shoup, 2005]. Suggesting routes along highly probable parking spots could reduce traffic. In this paper, we formalize parking search as a probabilistic problem on a road graph and show that it is NP-complete. We explore heuristics that optimize for the driving duration and the walking distance to the destination. Routes are constrained to reach a certain probability threshold of finding a spot. Empirically estimated probabilities of successful parking attempts are provided by TomTom on a per-street basis. We release these probabilities as a dataset of about 80,000 roads covering the Berlin area. This allows to evaluate parking search algorithms on a real road network with realistic probabilities for the first time. However, for many other areas, parking probabilities are not openly available. Because they are effortful to collect, we propose an algorithm that relies on conventional road attributes only. Our experiments show that this algorithm comes close to the baseline by a factor of 1.3 in our cost measure. This leads to the conclusion that conventional road attributes may be sufficient to compute reasonably good parking search routes.
机译:估计有30%的城市交通是由寻找停车位引起的[Shoup,2005]。建议沿高度可能的停车位的路线可能会减少交通。在本文中,我们将停车搜索正式化为路线图上的一个概率问题,并证明它是NP完全的。我们探索启发式技术,以优化驾驶时间和到达目的地的步行距离。路线被限制为达到找到地点的特定概率阈值。 TomTom根据每个街道提供根据经验得出的成功停车尝试的估计概率。我们将这些概率作为覆盖柏林地区约80,000条道路的数据集发布。这允许首次在具有现实概率的真实道路网络上评估停车搜索算法。但是,对于许多其他区域,没有公开提供停车概率。由于收集起来很费力,因此我们提出了一种仅依赖于常规道路属性的算法。我们的实验表明,在我们的成本衡量中,该算法接近基线的1.3倍。由此得出结论,常规道路属性可能足以计算合理的停车搜索路线。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号