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Statistical analysis of road-vehicle-driver interaction as an enabler to designing behavioral models

机译:道路车辆驾驶员交互行为设计统计模型的统计分析

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Telematics form an important technology enabler for intelligent transportation systems. One application of the same is that by deploying on-board diagnostic devices, the signatures of vehicle vibration along with its location and time are recorded. Detailed analyses of the collected signatures offer deep insights into the state of the objects under study. Towards that objective, we carried out experiments by deploying telematics device in one of the office bus that ferries employees to office and back. Data is collected from 3-axis accelerometer, GPS speed and the time for all the journeys. In this paper, we present initial results of the above exercise by applying statistical methods to derive information through systematic analysis of the data collected over four months. It is demonstrated that the higher order derivative of the measured Z-axis acceleration samples display the properties of Weibull distribution when the time axis is replaced by the amplitude of such processed acceleration data. Such an observation offers us a method to predict future behavior where deviations from prediction are classified as context-based aberrations or progressive degradation of the system. In addition, we capture the relationship between speed of the vehicle and median of the jerk energy samples using regression analysis. That analysis is further used to identify low, normal and high JE values for a velocity and classify journey at a micro-trip (small section of a trip) level. Such results offer an opportunity to develop a robust method to model road-vehicle interaction thereby enabling us to predict such like driving behavior and condition-based maintenance, etc.
机译:远程信息处理是智能交通系统的重要技术推动力。相同的一种应用是,通过部署车载诊断设备,可以记录车辆振动的特征以及其位置和时间。对收集到的签名进行详细分析,可以深入了解研究对象的状态。为了实现这一目标,我们通过在一辆将员工带到办公室来回的办公室总线中部署远程信息处理设备进行了实验。数据从3轴加速度计,GPS速度和所有行程的时间收集。在本文中,我们通过应用统计方法通过对四个月内收集的数据进行系统分析来获取信息,从而展示了上述练习的初步结果。结果表明,当时间轴被这种处理后的加速度数据的幅度代替时,所测得的Z轴加速度样本的高阶导数显示出威布尔分布的特性。这样的观察为我们提供了一种预测未来行为的方法,其中与预测的偏差归类为基于上下文的像差或系统的渐进退化。此外,我们使用回归分析来捕获车辆速度与加速度率样本中值之间的关系。该分析还用于识别速度的低,正常和高JE值,并在微行程(行程的一小段)级别对行程进行分类。这样的结果为开发一种强大的方法来建模道路车辆交互作用提供了机会,从而使我们能够预测诸如驾驶行为和基于状况的维护等。

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