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Predictive models of road reliability for traffic sensor configuration and routing

机译:用于交通传感器配置和路线选择的道路可靠性预测模型

摘要

Methods for decision making about sensor location/configuration for traffic sensing and routing are described. Construction of predictive models via machine learning that infer variance of road speeds, in general or for specific contexts (e.g., rush hours for a traffic system) occurs. The predictive models for road reliability are built from libraries of data about sensed variances and road segments. The datasets include information for road segments monitored by fixed sensors/moving probes, road segment properties, geometric relationships among road segments, and proximal resources. Road segments are labeled by the sensed variance seen in traffic speeds over similar contexts. A model is created that can apply estimates of the variance of the traffic speed for a segment, including non-sensed segments via generalization to non-sensed road segments. Methods are described for employing the predictive models of variance, along with demand and propagation models, to make decisions about configuration of sensors.
机译:描述了关于用于交通检测和路由的传感器位置/配置的决策方法。通过机器学习来构建预测模型,该模型可以推断出一般或特定情况下(例如,交通系统的高峰时间)道路速度的变化。道路可靠性的预测模型是从有关感测到的方差和路段的数据库中建立的。数据集包括有关由固定传感器/移动探测器监视的路段的信息,路段属性,路段之间的几何关系以及近端资源。道路路段由在类似情况下在交通速度中看到的感知变化来标记。创建了一个模型,该模型可以将路段(包括非感测路段)的通行速度方差的估计值通过泛化应用于非感测路段。描述了使用方差的预测模型以及需求和传播模型来做出有关传感器配置的决策的方法。

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