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Multi-state and multi-sensor incident detection systems for arterial streets

机译:动脉街道的多状态和多传感器事件检测系统

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Incident detection systems typically emphasize incident presence and location over incident severity and incident recovery. Yet, Advanced Traveller Information Systems (ATIS) and Advanced Traffic Manage- ment Systems (ATMS) rely on the latter states to implement and terminate diversion, and its supportive control strategies. Further, incident detection systems directly benefit from processing measurement vectors rather than scalars. Vectors of lane measurements favor detection through lane imbalances and identifi- cation of incident host lanes. Intelligent Transportation Systems promise new sensor data to control centers, including the travel times experienced by probe vehicles. Vectors of new and old sensor inputs may possess enhanced discriminatory values. To accomodate added detection states and the fusion of multi-sensor input vectors, this paper refor- mulates the arterial incident detection problem as a multiple attribute decision making problem with Bayesian scores. This novel approach utilizes as input the combinations of simulated probe travel times, number of probe reports, lane specific detector occupancies and vehicle counts. Models based solely on probe data lack in performance due to excessive overlaps in class distributions. Models based on detector occupancies and vehicle counts by lane perform outstandingly. They display a propensity to detect through lane measurement imbalances. The probe data is shown to enhance the performance of detector data based models.
机译:事件检测系统通常在事件严重性和事件恢复上着重于事件的存在和位置。然而,高级旅客信息系统(ATIS)和高级交通管理系统(ATMS)依靠后者来实现和终止转移及其支持性控制策略。此外,事件检测系统直接受益于处理测量向量而不是标量。车道测量向量有助于通过车道失衡和识别入射主机车道来进行检测。智能交通系统向控制中心承诺提供新的传感器数据,包括探测车经历的旅行时间。新的和旧的传感器输入的向量可能具有增强的区分值。为了适应增加的检测状态和多传感器输入向量的融合,本文将动脉事件检测问题重新构造为具有贝叶斯评分的多属性决策问题。这种新颖的方法将模拟探针的行进时间,探针报告的数量,特定车道的检测器占用率和车辆数量的组合作为输入。由于类分布中的过度重叠,仅基于探测数据的模型缺乏性能。基于检测器占用率和车道车辆数的模型表现出色。它们显示出检测车道测量不平衡的可能性。显示的探测数据可增强基于探测器数据的模型的性能。

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