基于深度学习的卡尔曼滤波用于GNSS/INS集成:神经网络结构和特征选择

Shuo Li, M. Mikhaylov, N. Mikhaylov, T. Pany
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引用次数: 0

摘要

本文提供了基于深度学习(DL)的全球卫星导航系统(GNSS)和惯性导航系统(INS)集成算法的进一步细节,该算法将深度神经网络(DNN)插入到误差状态扩展卡尔曼滤波器(ES-EKF)的流中以学习系统的复杂动力学。该算法学习最优卡尔曼增益以及惯性测量单元(IMU)的误差,在估计导航解和IMU误差方面优于ES-EKF。在这项工作中,我们分析了神经网络的不同实现,网络架构,以及各种特征对所提出算法性能的影响。我们建议使用卷积神经网络(CNN)来提取空间信息,使用长短期记忆神经网络(LSTM)来捕获时间依赖性。与其他类型的递归神经网络(RNN)相比,我们证明LSTM的使用是合理的。还确定了完全连接层的最佳尺寸、层数和隐藏状态大小。我们报告了在学习中观察到的困难,即消失和爆炸梯度,并列出了我们用来处理这些问题的技术。比较了基于dl的ES-EKF算法与常规ES-EKF算法的计算效率,认为基于dl的ES-EKF算法能够满足实时性要求。分析了不同特征对算法收敛性和性能的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Learning Based Kalman Filter for GNSS/INS Integration: Neural Network Architecture and Feature Selection
This paper provides further details of the deep learning (DL) based integration algorithm for global navigation satellite system (GNSS) and inertial navigation system (INS) integration, where a deep neural network (DNN) is inserted into the flow of an error-state extended Kalman filter (ES-EKF) to learn the complex dynamics of the system. The proposed algorithm learns the optimal Kalman gain along with the errors in the inertial measurement units (IMU) and demonstrates superior performance over ES-EKF in terms of estimated navigation solutions and IMU errors. In this work, we analyze different implementations of the neural networks, the network architectures, and the impact of the various features to the performance of the proposed algorithm. We suggest a convolutional neural network (CNN) to extract spatial information and a long shortterm memory neural network (LSTM) to capture temporal dependencies. We justify the use of LSTM as compared to other types of recurrent neural networks (RNN). Optimal sizes for the fully connected layers, number of layers, and hidden state sizes are determined too. We report the observed difficulties in the learning, namely vanishing and exploding gradients and list the techniques we used to cope with these issues. The computational efficiency of the DL-based ES-EKF is compared to regular ES-EKF, the DL-based algorithm is supposed to fit into real-time requirements. Analysis of the impact different features have on the convergence and performance of the algorithms is carried out.
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