全球导航卫星系统应用
里程表
计算机科学
实时计算
惯性导航系统
全球导航卫星系统增强
惯性测量装置
智能交通系统
卫星系统
卫星导航
测距
钥匙(锁)
全球定位系统
精密点定位
导航系统
计算机视觉
工程类
约束(计算机辅助设计)
人工智能
传感器融合
组分(热力学)
地面轨道
定位系统
卫星
模拟
航位推算
均方误差
车辆动力学
领域(数学)
风三角
计量单位
加速度计
作者
zemin wang,Shujie Zhou,Xinye Dai,Chunqi Dai,Jingchen Xiong,Shengfeng Gu
标识
DOI:10.1109/tits.2025.3614463
摘要
Intelligent vehicle (IV) navigation is a key component of intelligent transportation systems (ITS). To enhance their performance in positioning, navigation and timing (PNT), usually inputs from the exteroceptive sensors, e.g., camera (images) or light detection and ranging (LiDAR) (point clouds), can be used to identify the environment and objects, or help other sensors with signal quality assessment. However, the measurements from the interoceptive sensors, e.g., inertial measurement unit (IMU) and wheel odometer (ODO), are rarely considered, while they are more resilient to the environment changes and commonly equipped within the modern vehicles. Integrating the global navigation satellite system (GNSS) precise point positioning (PPP) algorithm and centered on the inertial navigation system (INS), this paper proposes a tightly coupled (TC) GNSS PPP/INS/ODO integration algorithm that utilizes long short-term memory (LSTM) to predict non-holonomic constraint (NHC) components. To further assess the online prediction quality without ground truth, a novel cross-validation method is proposed, also to adjust the corresponding measurement variance. Results of field tests show that, compared with traditional GNSS PPP/INS/ODO system, the proposed algorithm can achieve an average root mean square (RMS) improvement of (16.05%, 16.03%, 16.06%) and a maximum (MAX) improvement of (22.10%, 27.57%, 29.90%) in positioning along the north, east and down (NED) directions. More importantly, the proposed method can effectively mitigate the degradation in positioning performance caused by erroneous constraints under complex motion conditions.
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