基于足部惯性传感器的倒立摆行走模型预测行人导航不确定性

Chi-Shih Jao, Eudald Sangenis, Paula Simo, Alexandra S. Voloshina, A. Shkel
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引用次数: 0

摘要

提出了一种简化的行人导航不确定性预测模型。该模型模拟一个人的脚的轨迹,然后这些轨迹被用来生成模拟的IMU读数。考虑了模拟加速度计和陀螺仪读数的八种不同的噪声误差,包括白噪声、偏置不稳定性、随机游走、比例因子误差、不校准、开启偏置、有限满量程和有限带宽。我们进行了一系列的行人步行实验来验证所提出的模型。实验结果表明,在行走约40 [m]时,仿真结果与实验结果的位置均方根误差(rmse)相差6%。该模型还预测了垂直位置漂移的边界,与实验中估计的垂直位置不确定性趋势相吻合。研究结果表明,该模型能够较好地预测足部惯性导航系统的导航不确定性,并建议在未来的研究中增加足部运动的细节,以进一步提高模型的预测精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Inverted Pendulum Model of Walking for Predicting Navigation Uncertainty of Pedestrian in Case of Foot-mounted Inertial Sensors
This paper presents a simplified model for predicting navigation uncertainty of a pedestrian. The model simulates trajectories of a person's foot, and these trajectories are then used to generate simulated IMU readings. Eight different noise errors are considered for both the simulated accelerometer and gyroscope readings, including white noise, bias instability, random walk, scale factor error, misalignment, turn-on bias, limited full-scale range, and limited bandwidth. We conducted a series of pedestrian walking experiments to validate the proposed model. The experimental results showed that the position Root-Mean-Square-Errors (RMSEs) in the simulations and in the experiments had a discrepancy of 6% for about 40 [m] of walk. The model also predicted the bounds of the vertical position drift, which matched the trend of estimated vertical position uncertainties in the experiments. We concluded that the model could predict, with sufficient accuracy, the navigation uncertainty for foot-mounted IMU-based systems, and we suggested future research to enhance the model with additional details of foot motion to further improve the prediction accuracy.
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