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首页> 外文期刊>Journal of Intelligent Transportation Systems >Time series relations between parking garage occupancy and traffic speed in macroscopic downtown areas - a data driven study
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Time series relations between parking garage occupancy and traffic speed in macroscopic downtown areas - a data driven study

机译:宏观市区停车库占用和交通速度之间的时间序列关系 - 数据驱动研究

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This paper investigates time-series correlations between macroscopic travel speed and parking garage occupancy in downtown area, using the real-time parking occupancy data via SFPark.org and travel speed data from HERE Maps for San Francisco downtown areas as a data-driven case study. This study significantly expands recent work on instantaneous correlations by incorporating variables as time series. The equivalency between the nonlinear regression with logistic curves and the single-node single hidden layer neural network is established. By testing time delay neural network models, this study investigates the time delay effects between macroscopic travel speed and parking garage occupancy. The performance of single-layer multi-nodes nonlinear autoregressive with exogenous inputs neural network is evaluated, which suggests such types of time series neural networks can effectively forecast macroscopic travel speed by using travel speed and parking occupancy information with various forecasting delay tabs.
机译:本文研究了宏观旅行速度和停车库在市中心的停车库之间的时间序列相关性,使用SFPark.org和旅行速度数据从这里的旧金山市中心地区的旅行速度数据作为数据驱动案例研究。本研究通过将变量作为时间序列结合到瞬时相关性,显着扩展了近似的工作。建立了具有逻辑曲线的非线性回归与单节点单个隐藏层神经网络之间的等效。通过测试时间延迟神经网络模型,本研究调查了宏观旅行速度和停车库占用之间的时间延迟效应。评估单层多节点非线性自回归的单层多节点非线性自动增加神经网络,这表明这种类型的时间序列神经网络可以通过使用各种预测延迟标签的旅行速度和停车占用信息有效地预测宏观行驶速度。

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