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Detection of wheel faults in electric vehicles via localization data

机译:通过定位数据检测电动车辆的车轮缺陷

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This paper addresses the detection of wheel faults in autonomous vehicles. Instead of the typically broad range of sensors involved, localization data is used to detect and classify three major faults in torque-controlled DC motors. A four wheeled vehicle is implemented in simulation with independent steering and in-hub motors to generate localization data. The vehicle model is based on extensive vehicle dynamics modeling to accurately predict a small passenger vehicle. These three faults are induced on the vehicle to determine the effectiveness of the localization method and test its ability to detect the faults and delineate between the different fault types. Lastly, an extension is outlined for detection and classification for broader error types beyond those represented by the three errors examined.
机译:本文解决了自主车辆中的车轮缺陷的检测。代替涉及的典型传感器,定位数据用于检测和分类扭矩控制的直流电动机中的三个主要故障。在具有独立转向和集线器电机的模拟中实现了四轮车辆,以产生本地化数据。车辆模型基于广泛的车辆动力学建模,以准确地预测小型客车。这三个故障在车辆上诱导,以确定本地化方法的有效性,并测试其检测不同故障类型之间的故障和描绘的能力。最后,概述了扩展,用于检测和分类,以便超越审查的三个错误所代表的错误类型。

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