Optimal Detection of Fault Traffic Sensors Used in Route Planning
Title | Optimal Detection of Fault Traffic Sensors Used in Route Planning |
Publication Type | Conference Paper |
Year of Publication | 2017 |
Authors | Amin Ghafouri, Aron Laszka, Abhishek Dubey, Xenofon Koutsoukos |
Conference Name | 2nd International Workshop on Science of Smart City Operations and Platforms Engineering (SCOPE) |
Date Published | April |
Keywords | learning and control for resilience, Vanderbilt |
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 and environmental impact. To minimize the impact of sensor failures, we must detect them promptly and with high accuracy. 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 falsepositive 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. |
URL | https://cps-vo.org/node/38491 |
Citation Key | GhafouriLaszkaDubeyKoutsoukos17_OptimalDetectionOfFaultTrafficSensorsUsedInRoutePlanning |