论文标题
通过准确的测量建模和多模型自适应估计,INS/里程表土地导航
INS/Odometer Land Navigation by Accurate Measurement Modeling and Multiple-Model Adaptive Estimation
论文作者
论文摘要
基于惯性导航系统(INS)的陆地车辆导航是经典的自主导航应用程序,并且在过去几十年中已经进行了广泛的研究。在这项工作中,我们认真分析了里程表(OD)脉冲的误差特性,并研究了INS/OD集成系统中三种类型的里程表测量模型。具体而言,在脉冲速度模型中,初步的卡尔曼滤波器设计为从累积的脉冲中获得准确的车速速度。相应地通过整合脉冲速度来获得脉冲增量模型。通过扩大到达系统状态的行驶距离,提出了一个新的脉冲积累模型。标准扩展的卡尔曼滤波器中实现了三种类型的测量以及非核组约束(NHC)。鉴于与运动相关的脉冲误差特性,多重模型自适应估计(MMAE)方法被利用以进一步提高性能。进行了模拟和长距离实验,以验证所提出方法的可行性和有效性。结果表明,标准的脉冲速度测量可实现出色的性能,而累积的脉冲测量最有利于MMAE增强。
Land vehicle navigation based on inertial navigation system (INS) and odometers is a classical autonomous navigation application and has been extensively studied over the past several decades. In this work, we seriously analyze the error characteristics of the odometer (OD) pulses and investigate three types of odometer measurement models in the INS/OD integrated system. Specifically, in the pulse velocity model, a preliminary Kalman filter is designed to obtain accurate vehicle velocity from the accumulated pulses; the pulse increment model is accordingly obtained by integrating the pulse velocity; a new pulse accumulation model is proposed by augmenting the travelled distance into the system state. The three types of measurements, along with the nonhonolomic constraint (NHC), are implemented in the standard extended Kalman filter. In view of the motion-related pulse error characteristics, the multiple model adaptive estimation (MMAE) approach is exploited to further enhance the performance. Simulations and long-distance experiments are conducted to verify the feasibility and effectiveness of the proposed methods. It is shown that the standard pulse velocity measurement achieves the superior performance, whereas the accumulated pulse measurement is most favorable with the MMAE enhancement.