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首页> 外文期刊>IEEE transactions on industrial informatics >SafeDrive: Online Driving Anomaly Detection From Large-Scale Vehicle Data
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SafeDrive: Online Driving Anomaly Detection From Large-Scale Vehicle Data

机译:SafeDrive:基于大规模车辆数据的在线驾驶异常检测

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Identifying driving anomalies is of great significance for improving driving safety. The development of the Internet-of-Vehicle (IoV) technology has made it feasible to acquire big data from multiple vehicle sensors, and such big data play a fundamental role in identifying driving anomalies. Existing approaches are mainly based on either rules or supervised learning. However, such approaches often require labeled data, which are typically not available in big data scenarios. In addition, because driving behaviors differ under vehicle statuses (e.g., speed and gear position), to precisely model driving behaviors needs to fuse multiple sources of sensor data. To address these issues, in this paper, we propose SafeDrive, an online and status-aware approach, which does not require labeled data. From a historical dataset, SafeDrive statistically offline derives a state graph (SG) as a behavior model. Then, SafeDrive splits the online data stream into segments and compares each segment with the SG. SafeDrive identifies a segment that significantly deviates from the SG as an anomaly. We evaluate SafeDrive on a cloud-based IoV platform with over 29 000 real connected vehicles. The evaluation results demonstrate that SafeDrive is capable of identifying a variety of driving anomalies effectively from a large-scale vehicle data stream with an overall accuracy of 93%; such identified driving anomalies can be used to timely alert drivers to correct their driving behaviors.
机译:识别驾驶异常对于提高驾驶安全性具有重要意义。车载互联网(IoV)技术的发展使从多个车辆传感器获取大数据变得可行,并且这种大数据在识别驾驶异常中起着基本作用。现有的方法主要基于规则或监督学习。但是,此类方法通常需要标记数据,而这些数据通常在大数据场景中不可用。另外,由于驾驶行为在车辆状态(例如,速度和档位)下是不同的,因此为了精确地建模驾驶行为需要融合传感器数据的多个源。为了解决这些问题,在本文中,我们提出了SafeDrive,这是一种在线状态识别方法,不需要标签数据。从历史数据集中,SafeDrive在统计上脱机导出状态图(SG)作为行为模型。然后,SafeDrive将在线数据流分成多个段,并将每个段与SG进行比较。 SafeDrive将明显偏离SG的段标识为异常。我们在基于云的IoV平台上评估SafeDrive,该平台具有超过29 000辆实际联网的车辆。评估结果表明,SafeDrive能够从大规模车辆数据流中有效识别各种驾驶异常,总体准确度为93%;这样识别的驾驶异常可以用于及时警告驾驶员以纠正他们的驾驶行为。

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