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首页> 外文期刊>IEEE Transactions on Intelligent Transportation Systems >Smart Parking: Using a Crowd of Taxis to Sense On-Street Parking Space Availability
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Smart Parking: Using a Crowd of Taxis to Sense On-Street Parking Space Availability

机译:智能停车:使用出租车人群来感知路边停车位的可用性

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Monitoring the occupancy of on-street parking spaces on a city-wide scale is still an open issue. Past research demonstrated the viability of parking crowd-sensing by means of the standard on-board sensors of probe vehicles, foreseeing the use of high-mileage vehicles, like taxis. Nevertheless, the achievable spatio-temporal sensing coverage has never been deeply investigated. In this paper, we investigate the suitability of taxi fleets of different sizes to crowd-sense on-street parking availability. We considered 579 road segments in San Francisco (USA), covered both by sensors of the SFpark project and by the GPS traces of 536 taxis. For each of these segments, we computed the taxi transit frequencies, representing the achievable coverage by vehicles equipped with sensors detecting empty parking spots. By combining these frequencies with parking occupancy data coming from SFpark, we estimated the potential quality of crowd-sensed on-street parking information for different fleet sizes. Moreover, we investigated the impact of different misdetection amounts, and Kalman filters to handle them. The results show that a total of 300 taxis can crowd-sense on-street parking availability with an error of up to +/- 1 stall in 86% of the cases. Moreover, the quality of the sensors is as important as the fleet size (300 taxis with 10% probability of misreadings provide availability information comparable to 486 taxis with 16% probability), while the use of Kalman filters did not lead to statistically significant improvements. In conclusion, the traffic management authorities should consider parking crowd-sensing via probe vehicles as a promising alternative to the expensive deployment of the static parking sensors.
机译:在整个城市范围内监控路边停车位的使用仍然是一个悬而未决的问题。过去的研究表明,借助探测车的标准车载传感器,可以感知停车拥挤感的可行性,并预见了出租车等高里程车辆的使用。然而,尚未对可实现的时空感测范围进行深入研究。在本文中,我们研究了不同规模的出租车车队对人群感知路边停车位的适用性。我们考虑了美国旧金山的579个路段,包括SFpark项目的传感器和536辆出租车的GPS轨迹。对于这些部分中的每一个,我们都计算了出租车的乘车频率,代表配备有检测空车位的传感器的车辆所能达到的覆盖范围。通过将这些频率与SFpark的停车占用数据结合起来,我们估计了不同车队规模的人群感知路边停车信息的潜在质量。此外,我们调查了不同误检量的影响,并使用卡尔曼滤波器对其进行了处理。结果表明,总共有300辆出租车可以对路边停车位进行大众感知,在86%的情况下,失速高达+/- 1。此外,传感器的质量与机队规模同样重要(误读概率为10%的300辆出租车提供了16%概率的486出租车可比的可用性信息),而卡尔曼滤波器的使用并未带来统计学上的显着改善。总之,交通管理当局应考虑通过探查车辆进行停车人群感知,以作为昂贵的静态停车传感器部署方案。

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