探索基于深度学习的传感器误差估计对提高姿态和位置精度的好处

Eslam Mounier, Paulo Ricardo Marques de Araujo, Mohamed Elhabiby, Michael Korenberg, Aboelmagd Noureldin
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引用次数: 0

摘要

惯性导航系统是各种组合导航系统的主要组成部分。然而,惯性测量单元(IMU)测量结果的数值积分受到各种传感器误差的影响,特别是与微机电系统(MEMS)传感器的误差,影响了惯性测量系统的性能。为了应对这些挑战,我们研究了现代深度学习(DL)方法的性能,以减轻此类错误。具体来说,我们提出了一个深度陀螺仪误差(DGE)模型,用于估计和补偿陀螺仪测量中的误差。DGE模型结合了卷积神经网络(CNN)的特征提取能力和长短期记忆(LSTM)的顺序数据建模优势。我们不依赖高级IMU测量,而是采用一种独特的逆机械化算法,从集成导航解决方案状态生成人工IMU测量。这种方法提供了准确的地面真值数据,便于直接监督学习。利用MEMS-IMU的真实数据,在加拿大安大略省金斯顿的一辆陆地车辆上进行了真实道路测试实验,对所提出的模型进行了训练和验证。当对未知数据进行评估时,DGE模型在独立惯性导航场景中表现出显著的改进,特别是在减轻姿态漂移误差和随后改善位置估计方面。在统一的测试间隔内,DGE模型的姿态均方根误差平均降低了43.1%,位置均方根误差平均降低了25.4%。这强调了所提出的方法在提高INS性能方面的有效性,特别是在独立模式下运行时。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Exploring the Benefits of Deep Learning-Based Sensors Error Estimation for Improved Attitude and Position Accuracy
Inertial Navigation System (INS) is a primary component in various integrated navigation systems. However, the performance of INS is hindered due to the numerical integration of the measurements obtained from the Inertial Measurement Unit (IMU), which are contaminated by various sensor errors, especially with Micro-Electro-Mechanical Systems (MEMS) sensors. To address these challenges, we examine the performance of modern Deep Learning (DL) methods for mitigating such errors. Specifically, we propose a Deep Gyroscope Error (DGE) model designed to estimate and compensate for errors in the gyroscope measurements. The DGE model combines the feature extraction capabilities of a Convolutional Neural Network (CNN) with the sequential data modelling strengths of Long Short-Term Memory (LSTM). Instead of relying on high-grade IMU measurements, we distinctively employ an inverse mechanization algorithm that generates artificial IMU measurements from the integrated navigation solution states. This approach provides accurate ground truth data facilitating direct supervised learning. The proposed model was trained and verified using real data from MEMS-IMU on real road test experiments performed on a land vehicle in Kingston, Ontario, Canada. When subjected to evaluation against unseen data, the DGE model demonstrated significant improvements in standalone inertial navigation scenarios, particularly in mitigating attitude drift errors and subsequently improving position estimation. Over a uniform testing interval, the DGE model achieved an average reduction in attitude RMSE by 43.1% and in position RMSE by 25.4%. This emphasizes the efficacy of the proposed method in improving INS performance, particularly when operating in standalone mode.
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