Vehicle Localization Using Wheel Speed Sensor (WSS) and Inertial Measurement Unit (IMU)

Mohd Azizi Abdul Rahman, H. Zamzuri
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引用次数: 1

Abstract

The advent of autonomous driving has led researchers toward a whole new technological age where vehicle positioning and localization system form the back bone of an autonomous electric vehicle. However, localization becomes poor as a vehicle enters GPS-denied areas due to multi path errors. Autonomous vehicle, in addition, needs to be localized from time to time and be guided on the right path along its destination. The purpose of this study is to overcome the problem of adopting an alternative method by using the vehicle’s Wheel Speed Sensor (WSS) for localization. WSS as an auxiliary sensor is attached to the vehicle’s wheel to track its position upon considering its travelling speed in a period of time. This is done in such a way that the existence of obscured portion along the guideway will be neglected. The data obtained from WSS are combined with yaw rate from an Inertial Measurement Unit (IMU) through Kinematic Modelling algorithm and then be converted to get the local position coordinates. In order to analyse whether the yaw rate produced by IMU is acceptable or not, comparison with simulation is needed. A Bicycle Model is used to generate simulated yaw rate from the steering angle of the vehicle and Kalman Filter estimates the simulated yaw rate to be close with the raw yaw rate. Therefore, this will clarify that the yaw rate obtained from IMU is acceptable and that true localization path is generated.
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基于轮速传感器和惯性测量单元的车辆定位
随着自动驾驶的出现,研究人员进入了一个全新的技术时代,车辆定位和定位系统将成为自动驾驶电动汽车的核心。然而,当车辆进入gps拒绝区域时,由于多路径误差,定位变得很差。此外,自动驾驶汽车需要不时地进行定位,并在其目的地的正确路径上进行引导。本研究的目的是克服采用车辆轮速传感器(WSS)进行定位的替代方法的问题。WSS作为一种辅助传感器,附着在车辆的车轮上,根据车辆在一段时间内的行驶速度来跟踪车辆的位置。这是这样做的,沿导轨的模糊部分的存在将被忽略。通过运动学建模算法将WSS获取的数据与惯性测量单元(IMU)的横摆角速度相结合,然后进行转换得到局部位置坐标。为了分析IMU产生的横摆角速度是否可以接受,需要与仿真进行比较。利用自行车模型从车辆的转向角度生成模拟的横摆角速度,卡尔曼滤波估计的模拟横摆角速度与原始横摆角速度接近。因此,这将澄清从IMU获得的偏航率是可以接受的,并且生成了真正的定位路径。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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