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Enhanced vehicle identification in motor vehicle accident databases

机译:机动车事故数据库中的车辆识别

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Motor vehicle accident databases provide valuable safety information about the real-world crash experience for millions of motor vehicles. The associated research often requires specific information about vehicle characteristics derived from the Vehicle Identification Number (VIN). The complicated process of large-scale VIN decoding is made easier with software that identifies specific make, model and other characteristics. Data entry errors and truncated VINs (i.e., less than 17 characters), however, pose challenges to reliable vehicle identification. A study of VIN coding requirements and data entry patterns indicates that reliable accident vehicle identification can be accomplished by supplementing VIN decoding software to systematically minimize common transcription errors and invalid characters. This process can yield reliable vehicle identification and maximize utilization of vehicle records for motor vehicle crash analysis. This paper discusses the processes involved in VIN decoding for millions of accident-involved vehicles and demonstrates, using VINDICATOR software, the application of supplemental VIN processing.
机译:机动车事故数据库提供了有关数百万机动车的真实世界的碰撞体验的宝贵安全信息。相关的研究往往需要有关从车辆识别代号(VIN)衍生的车辆特征的具体信息。大型VIN解码的复杂过程与软件变得更容易的是确定了具体品牌,型号等特点。数据输入错误和截短的VIN(即,小于17个字符),然而,构成对可靠车辆识别挑战。 VIN的编码要求和数据输入模式的研究表明,可靠的事故车辆识别可以通过补充VIN解码软件,系统地减少常见的抄写错误和无效字符来完成。这个过程可以得到可靠的车辆识别和车辆碰撞分析的车辆记录最大化利用。本文讨论了数百万事故涉及车辆的解码涉及VIN的过程和演示,使用守备软件,补充VIN处理中的应用。

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