Performance Test and Evaluation of Vehicle IMU Installation Angle Calculation Considering Road Surface State
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摘要: 轮速里程计和非完整性约束是抑制全球导航卫星系统(Global Navigation Satellite System,GNSS)信号长时间中断情形下GNSS/INS组合导航系统误差发散的2种常用方法,准确的车载惯性测量单元(inertial measurement unit,IMU)安装姿态是应用轮速里程计和非完整性约束的必要条件。传统的安装角标定方法在理想路面下表现良好,但其核心运动学约束的成立严重依赖于轮胎与地面的理想接触条件,在实际复杂行驶环境中,不同的路面状态会通过引起车辆异常运动破坏约束条件的基本假设,导致在线安装角估计算法性能下降甚至失效。为研究不同路况和行驶状态对IMU安装姿态估计算法的影响,针对路面颠簸、长时间小角度转弯和短时间大角度转弯这3种场景进行了仿真分析和车载实验。通过对比速度观测模型和位置观测模型在不同场景下的表现,分析了不同路面状态对IMU安装角的精度和鲁棒性的影响。实验结果表明:在路面颠簸场景下,位置观测模型较速度观测模型具有更高的估计精度,分别提高了76%俯仰安装角和67%航向安装角的估计精度;在长时间小角度弯道行驶场景下,速度观测模型表现更好,分别提高了32%俯仰安装角和57%航向安装角的估计精度;然而,在大角度急弯场景下,由于车辆航向快速变化产生了较大的横向速度和横向位移,破坏了约束条件,因此大角度急弯场景下需增强动力学约束和误差补偿,满足高动态下稳定精确的安装角估计结果的获取。Abstract: Wheel speed odometry and nonholonomic constraints are two commonly used methods to suppress error divergence in Global Navigation Satellite System (GNSS)/Inertial Navigation System (INS) integrated navigation systems during prolonged GNSS signal outages. Accurate in-vehicle inertial measurement unit (IMU) mounting attitude is a prerequisite for applying wheel speed odometry and nonholonomic constraints. Traditional mounting angle calibration methods perform well on ideal road surfaces, but the validity of their core kinematic constraints heavily relies on ideal tire-ground contact conditions. In actual complex driving environments, different road surface conditions can disrupt the fundamental assumptions of these constraints by inducing abnormal vehicle motions, leading to degraded performance or even failure of online mounting angle estimation algorithms. To investigate the impact of different road conditions and driving states on IMU mounting attitude estimation algorithms, this study conducts simulation analyses and in-vehicle experiments focusing on three scenarios: road bumps, prolonged small-angle turns, and short-duration large-angle turns. By comparing the performance of velocity observation models and position observation models across these scenarios, the influence of different road surface conditions on the accuracy and robustness of IMU mounting angle estimation is analyzed. Experimental results show that in road bump scenarios, the position observation model achieves higher estimation accuracy than the velocity observation model, improving pitch mounting angle estimation by 76% and heading mounting angle estimation by 67%. In prolonged small-angle curve driving scenarios, the velocity observation model performs better, enhancing pitch mounting angle estimation by 32% and heading mounting angle estimation by 57%. However, in large-angle sharp turn scenarios, rapid changes in vehicle heading generate significant lateral velocity and displacement, which violate the constraint conditions. Therefore, in such high-dynamic scenarios, enhanced dynamic constraints and error compensation are required to achieve stable and accurate mounting angle estimation.
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表 1 SCHA634设备参数
Table 1. The equipment parameters of SCHA634
传感器 参数 数值 加速度计 零偏不稳定性/μg 15 速度随机游走/(m/s)/$\sqrt{h} $ 0.035 陀螺仪 零偏不稳定性/(°/h) 0.9 角度随机游走/(°/$ \sqrt{s}$) 0.09 表 2 路面颠簸场景下RMSE统计值
Table 2. The statistics of RMSE under bumpy road scene
观测量 俯仰角/(°) 航向角/(°) 速度 0.221 3 0.060 8 位置 0.207 9 0.054 2 表 3 2种观测模型的RMSE统计值
Table 3. The RMSE statistics of the two observation models
观测量 俯仰角/(°) 航向角/(°) 速度 0.074 2 0.240 0 位置 0.017 4 0.078 3 表 4 小角度弯道行驶场景下RMSE统计值
Table 4. The statistics of RMSE under small-angle curve driving scene
观测量 俯仰角/(°) 航向角/(°) 速度 0.021 4 0.049 8 位置 0.205 4 0.292 0 表 5 大角度弯道行驶场景下RMSE统计值
Table 5. The statistics of RMSE under large-angle curve driving scene
观测量 俯仰角/(°) 航向角/(°) 速度 观测量 23.612 421.915 6 位置 26.485 949.161 9 表 6 2种观测模型的RMSE统计值
Table 6. The RMSE statistics of the two observation models
观测量 俯仰角/(°) 航向角/(°) 速度 0.109 1 0.037 4 位置 0.159 7 0.087 2 -
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