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Performance evaluation on GNSS, wheel speed sensor, yaw rate sensor, and gravity sensor integrated positioning algorithm for automotive navigation system

机译:用于汽车导航系统的GNSS,轮速传感器,偏航角速度传感器和重力传感器集成定位算法的性能评估

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The Global Navigation Satellite System (GNSS) positioning technique is widely used for the automotive navigation system since it can provide the stable and accurate position and velocity in the most road environments at an affordable price. However, the performance of GNSS positioning technique is degraded in certain areas, where GNSS signals are blocked by buildings and tunnel. To overcome this problem, the GNSS positioning technique should be integrated with dead reckoning (DR) sensors such as accelerometer, gyroscope, and odometer. Recently, the most passenger cars are equipped with the Advanced Driver Assistance System (ADAS) based on numerous sensors to improve safety and convenience in driving. Among sensors for the ADAS, vehicle dynamic sensors such as wheel speed sensor (WSS), yaw rate sensor (YRS), gravity sensor (GS) can be used for the DR algorithm since those sensors measure vehicle’s motions. Therefore, this paper evaluates the vehicle positioning algorithm that integrate the GNSS with a three-dimensional dead reckoning based on WSS, YRS, and GS. The vehicle positioning algorithm is implemented through the extended Kalman filter of a loosely-coupled mode. Performance was evaluated through tests carried out in real driving trajectory including various GNSS signals reception environments. It is found that the proposed algorithm can be an alternative solution to compensate the limitation of the GNSS positioning technique, without the use of a low-cost inertial measurement unit.
机译:全球导航卫星系统(GNSS)定位技术被广泛用于汽车导航系统,因为它能够以可承受的价格在大多数道路环境中提供稳定,准确的位置和速度。但是,在某些区域,GNSS定位技术的性能会下降,在这些区域中,GNSS信号被建筑物和隧道阻挡。为了克服这个问题,GNSS定位技术应与航位推算(DR)传感器(如加速度计,陀螺仪和里程表)集成在一起。最近,大多数乘用车都配备了基于众多传感器的高级驾驶员辅助系统(ADAS),以提高驾驶的安全性和便利性。在用于ADAS的传感器中,诸如轮速传感器(WSS),偏航率传感器(YRS),重力传感器(GS)之类的车辆动态传感器可用于DR算法,因为这些传感器可测量车辆的运动。因此,本文评估了将GNSS与基于WSS,YRS和GS的三维航位推算相结合的车辆定位算法。通过松耦合模式的扩展卡尔曼滤波器实现车辆定位算法。通过在包括各种GNSS信号接收环境的实际驾驶轨迹中进行的测试来评估性能。发现所提出的算法可以是补偿GNSS定位技术的局限性的替代解决方案,而无需使用低成本的惯性测量单元。

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