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基于防抱死传感器和全球导航卫星系统信息的扩展卡尔曼滤波和反向传播神经网络算法定位方法。

An Extended Kalman Filter and Back Propagation Neural Network Algorithm Positioning Method Based on Anti-lock Brake Sensor and Global Navigation Satellite System Information.

机构信息

Hubei Key Laboratory of Advanced Technology for Automotive Components, Wuhan University of Technology, Wuhan 430070, China.

Hubei Collaborative Innovation Center for Automotive Components Technology, Wuhan University of Technology, Wuhan 430070, China.

出版信息

Sensors (Basel). 2018 Aug 21;18(9):2753. doi: 10.3390/s18092753.

Abstract

Telematics box (T-Box) chip-level Global Navigation Satellite System (GNSS) receiver modules usually suffer from GNSS information failure or noise in urban environments. In order to resolve this issue, this paper presents a real-time positioning method for Extended Kalman Filter (EKF) and Back Propagation Neural Network (BPNN) algorithms based on Antilock Brake System (ABS) sensor and GNSS information. Experiments were performed using an assembly in the vehicle with a T-Box. The T-Box firstly use automotive kinematical Pre-EKF to fuse the four wheel speed, yaw rate and steering wheel angle data from the ABS sensor to obtain a more accurate vehicle speed and heading angle velocity. In order to reduce the noise of the GNSS information, After-EKF fusion vehicle speed, heading angle velocity and GNSS data were used and low-noise positioning data were obtained. The heading angle speed error is extracted as target and part of low-noise positioning data were used as input for training a BPNN model. When the positioning is invalid, the well-trained BPNN corrected heading angle velocity output and vehicle speed add the synthesized relative displacement to the previous absolute position to realize a new position. With the data of high-precision real-time kinematic differential positioning equipment as the reference, the use of the dual EKF can reduce the noise range of GNSS information and concentrate good-positioning signals of the road within 5 m (i.e. the positioning status is valid). When the GNSS information was shielded (making the positioning status invalid), and the previous data was regarded as a training sample, it is found that the vehicle achieved 15 minutes position without GNSS information on the recycling line. The results indicated this new position method can reduce the vehicle positioning noise when GNSS information is valid and determine the position during long periods of invalid GNSS information.

摘要

远程信息处理盒 (T-Box) 芯片级全球导航卫星系统 (GNSS) 接收器模块通常在城市环境中遭受 GNSS 信息故障或噪声的影响。为了解决这个问题,本文提出了一种基于防抱死制动系统 (ABS) 传感器和 GNSS 信息的实时扩展卡尔曼滤波 (EKF) 和反向传播神经网络 (BPNN) 算法的定位方法。实验在带有 T-Box 的车辆总成上进行。T-Box 首先使用汽车运动学预 EKF 融合来自 ABS 传感器的四个车轮速度、偏航率和方向盘角度数据,以获得更准确的车辆速度和航向角速度。为了减少 GNSS 信息的噪声,使用后 EKF 融合车辆速度、航向角速度和 GNSS 数据,并获得低噪声定位数据。提取航向角速度误差作为目标,并将部分低噪声定位数据作为输入,用于训练 BPNN 模型。当定位无效时,经过良好训练的 BPNN 会修正航向角速度输出,并将合成的相对位移添加到先前的绝对位置,以实现新的位置。使用高精度实时动态差分定位设备的数据作为参考,双 EKF 的使用可以减少 GNSS 信息的噪声范围,并将道路的良好定位信号集中在 5 米范围内(即定位状态有效)。当 GNSS 信息被屏蔽(使定位状态无效),并且将先前的数据视为训练样本时,发现车辆在回收线上无需 GNSS 信息即可实现 15 分钟的定位。结果表明,当 GNSS 信息有效时,该新位置方法可以降低车辆定位噪声,并在长时间无效 GNSS 信息期间确定位置。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/5ac2/6164620/3d08d5df6d4e/sensors-18-02753-g001.jpg

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