Optimal detection of faulty traffic sensors used in route planning

Amin Ghafouri, Aron Laszka, A. Dubey, X. Koutsoukos
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引用次数: 19

Abstract

In a smart city, real-time traffic sensors may be deployed for various applications, such as route planning. Unfortunately, sensors are prone to failures, which result in erroneous traffic data. Erroneous data can adversely affect applications such as route planning, and can cause increased travel time. To minimize the impact of sensor failures, we must detect them promptly and accurately. However, typical detection algorithms may lead to a large number of false positives (i.e., false alarms) and false negatives (i.e., missed detections), which can result in suboptimal route planning. In this paper, we devise an effective detector for identifying faulty traffic sensors using a prediction model based on Gaussian Processes. Further, we present an approach for computing the optimal parameters of the detector which minimize losses due to false-positive and false-negative errors. We also characterize critical sensors, whose failure can have high impact on the route planning application. Finally, we implement our method and evaluate it numerically using a real- world dataset and the route planning platform OpenTripPlanner.
路径规划中交通传感器故障的最优检测
在智慧城市中,实时交通传感器可以用于各种应用,如路线规划。不幸的是,传感器容易出现故障,从而导致错误的交通数据。错误的数据可能会对应用程序(如路线规划)产生不利影响,并可能导致旅行时间的增加。为了尽量减少传感器故障的影响,我们必须及时准确地检测它们。然而,典型的检测算法可能会导致大量的假阳性(即假警报)和假阴性(即漏检),从而导致次优的路由规划。在本文中,我们设计了一个有效的检测器来识别故障的交通传感器使用基于高斯过程的预测模型。此外,我们提出了一种计算检测器的最佳参数的方法,该方法可以最大限度地减少由于假阳性和假阴性误差造成的损失。我们还描述了关键传感器,其故障可能对路线规划应用产生重大影响。最后,我们使用真实世界的数据集和路线规划平台OpenTripPlanner实现了我们的方法并对其进行了数值评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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