A data and physical model dual-driven based trajectory estimator for long-term navigation

IF 5 Q1 ENGINEERING, MULTIDISCIPLINARY Defence Technology(防务技术) Pub Date : 2024-10-01 DOI:10.1016/j.dt.2024.05.006
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Abstract

Long-term navigation ability based on consumer-level wearable inertial sensors plays an essential role towards various emerging fields, for instance, smart healthcare, emergency rescue, soldier positioning et al. The performance of existing long-term navigation algorithm is limited by the cumulative error of inertial sensors, disturbed local magnetic field, and complex motion modes of the pedestrian. This paper develops a robust data and physical model dual-driven based trajectory estimation (DPDD-TE) framework, which can be applied for long-term navigation tasks. A Bi-directional Long Short-Term Memory (Bi-LSTM) based quasi-static magnetic field (QSMF) detection algorithm is developed for extracting useful magnetic observation for heading calibration, and another Bi-LSTM is adopted for walking speed estimation by considering hybrid human motion information under a specific time period. In addition, a data and physical model dual-driven based multi-source fusion model is proposed to integrate basic INS mechanization and multi-level constraint and observations for maintaining accuracy under long-term navigation tasks, and enhanced by the magnetic and trajectory features assisted loop detection algorithm. Real-world experiments indicate that the proposed DPDD-TE outperforms than existing algorithms, and final estimated heading and positioning accuracy indexes reaches 5° and less than 2 m under the time period of 30 min, respectively.
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基于数据和物理模型双驱动的长期导航轨迹估计器
基于消费级可穿戴惯性传感器的长期导航能力在智能医疗、紧急救援、士兵定位等多个新兴领域发挥着至关重要的作用。现有长期导航算法的性能受到惯性传感器累积误差、本地磁场干扰和行人复杂运动模式的限制。本文开发了一种基于数据和物理模型双驱动的稳健轨迹估计(DPDD-TE)框架,可用于长期导航任务。本文开发了一种基于双向长短期记忆(Bi-LSTM)的准静态磁场(QSMF)检测算法,用于提取有用的磁场观测信息以进行航向校准;还采用了另一种 Bi-LSTM 算法,通过考虑特定时间段内的混合人体运动信息来估计步行速度。此外,还提出了基于数据和物理模型双驱动的多源融合模型,以整合基本的 INS 机械化和多层次约束与观测,从而在长期导航任务中保持精度,并通过磁场和轨迹特征辅助环路检测算法进行增强。实际实验表明,所提出的 DPDD-TE 优于现有算法,在 30 分钟的时间内,最终估计的航向和定位精度指标分别达到 5°和小于 2 米。
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来源期刊
Defence Technology(防务技术)
Defence Technology(防务技术) Mechanical Engineering, Control and Systems Engineering, Industrial and Manufacturing Engineering
CiteScore
8.70
自引率
0.00%
发文量
728
审稿时长
25 days
期刊介绍: Defence Technology, a peer reviewed journal, is published monthly and aims to become the best international academic exchange platform for the research related to defence technology. It publishes original research papers having direct bearing on defence, with a balanced coverage on analytical, experimental, numerical simulation and applied investigations. It covers various disciplines of science, technology and engineering.
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