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Assessing Driving Risk Using Internet of Vehicles Data: An Analysis Based on Generalized Linear Models

机译:利用车联网数据评估驾驶风险:基于广义线性模型的分析

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摘要

With the major advances made in internet of vehicles (IoV) technology in recent years, usage-based insurance (UBI) products have emerged to meet market needs. Such products, however, critically depend on driving risk identification and driver classification. Here, ordinary least square and binary logistic regressions are used to calculate a driving risk score on short-term IoV data without accidents and claims. Specifically, the regression results reveal a positive relationship between driving speed, braking times, revolutions per minute and the position of the accelerator pedal. Different classes of risk drivers can thus be identified. This study stresses both the importance and feasibility of using sensor data for driving risk analysis and discusses the implications for traffic safety and motor insurance.
机译:近年来,随着车联网(IoV)技术的重大进步,基于使用的保险(UBI)产品已经出现,可以满足市场需求。但是,此类产品严重取决于驾驶风险识别和驾驶者分类。在这里,普通的最小二乘和二进制逻辑回归用于计算基于短期IoV数据的驾驶风险评分,而没有发生事故和索赔。具体而言,回归结果显示出行驶速度,制动时间,每分钟转数与油门踏板位置之间存在正相关关系。因此可以确定不同类别的风险驱动因素。这项研究强调了使用传感器数据进行驾驶风险分析的重要性和可行性,并讨论了对交通安全和汽车保险的影响。

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