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On-Street and Off-Street Parking Availability Prediction Using Multivariate Spatiotemporal Models

机译:使用多元时空模型的路内和路外停车可用性预测

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摘要

Parking guidance and information (PGI) systems are becoming important parts of intelligent transportation systems due to the fact that cars and infrastructure are becoming more and more connected. One major challenge in developing efficient PGI systems is the uncertain nature of parking availability in parking facilities (both on-street and off-street). A reliable PGI system should have the capability of predicting the availability of parking at the arrival time with reliable accuracy. In this paper, we study the nature of the parking availability data in a big city and propose a multivariate autoregressive model that takes into account both temporal and spatial correlations of parking availability. The model is used to predict parking availability with high accuracy. The prediction errors are used to recommend the parking location with the highest probability of having at least one parking spot available at the estimated arrival time. The results are demonstrated using real-time parking data in the areas of San Francisco and Los Angeles.
机译:由于汽车和基础设施之间的联系越来越紧密,停车指导和信息(PGI)系统正成为智能交通系统的重要组成部分。开发高效的PGI系统的一大挑战是停车设施(路内和路外)的可用停车位的不确定性。可靠的PGI系统应具有以可靠的精度预测到达时间的停车可用性的能力。在本文中,我们研究了大城市停车位可用数据的性质,并提出了考虑停车位可用时空相关性的多元自回归模型。该模型用于高精度地预测停车位。预测误差用于建议在估计的到达时间具有至少一个可用停车位的可能性最高的停车位置。使用旧金山和洛杉矶地区的实时停车数据演示了结果。

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