矿山交通事故预测影响

Mahalia Miller, Chetan Gupta
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引用次数: 38

摘要

利用固定高速公路交通探测器的传感器数据,以及高速公路巡逻日志和当地气象站的数据,我们的目标是回答域问题:“刚刚发生了一起交通事故。它的影响会有多严重?”在本文中,我们展示了一个实用的系统,用于使用传感器数据和警察报告训练的分类模型来预测公路事故的成本和影响。我们的模型是建立在对一天中不同时间、不同地点和过去事故的预期交通状态的时空模式的理解之上的。我们的模型具有很高的准确性,可以预测高速公路巡警收到的虚假事件报告,并对事件导致的延误的持续时间和事件影响的程度进行分类,以延误车辆、事件的空间和时间范围为函数进行测量。有了我们对交通事故成本和相关影响的预测,高速公路运营商和急救人员将能够更有效地对高速公路事故报告做出反应,最终改善司机的福利,减少城市拥堵。
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Mining traffic incidents to forecast impact
Using sensor data from fixed highway traffic detectors, as well as data from highway patrol logs and local weather stations, we aim to answer the domain problem: "A traffic incident just occurred. How severe will its impact be?" In this paper we show a practical system for predicting the cost and impact of highway incidents using classification models trained on sensor data and police reports. Our models are built on an understanding of the spatial and temporal patterns of the expected state of traffic at different times of day and locations and past incidents. With high accuracy, our model can predict false reports of incidents that are made to the highway patrol and classify the duration of the incident-induced delays and the magnitude of the incident impact, measured as a function of vehicles delayed, the spatial and temporal extent of the incident. Equipped with our predictions of traffic incident costs and relative impacts, highway operators and first responders will be able to more effectively respond to reports of highway incidents, ultimately improving drivers' welfare and reducing urban congestion.
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