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首页> 外文期刊>Complexity >Improved Pedestrian Positioning with Inertial Sensor Based on Adaptive Gradient Descent and Double-Constrained Extended Kalman Filter
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Improved Pedestrian Positioning with Inertial Sensor Based on Adaptive Gradient Descent and Double-Constrained Extended Kalman Filter

机译:基于自适应梯度下降和双约束扩展卡尔曼滤波器的惯性传感器改进了行人定位

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The Foot-mounted Inertial Pedestrian-Positioning System (FIPPS) based on the Micro-Inertial Measurement Unit (MIMU) is a good choice for the forest fire fighters when the Global Navigation Satellite System is unavailable. Zero Velocity Update (ZUPT) provides a solution for reducing cumulative positioning errors caused by the integral calculation of the inertial navigation. However, the performance of ZUPT is highly affected by the low accuracy and high noise of the MIMU. The accuracy of conventional ZUPT for attitude alignment is reduced by the zero offset of acceleration and the drift of a gyroscope during the standing phase. An initial alignment algorithm based on Adaptive Gradient Descent Algorithm (AGDA) is proposed. In the stepping phase, the extended Kalman filter (EKF) is often used to correct attitude and position in track estimation. However, the measurement noise of the EKF is influenced by the high-frequency acceleration and angular velocity. Thus, the accuracy of the attitude and position will decrease. A double-constrained extended Kalman filtering (DEKF) is proposed. An adaptive parameter positively correlated with the acceleration and angular velocity is set, and the measurement noise in the DEKF is adaptively adjusted. The performance of the proposed method is verified by implementing the pedestrian test trajectory using MPU-9150 MIMU manufactured by InvenSense. The results show that the attitude error of the AGDA is 33.82% less than that of the conventional GDA. The attitude error of DEKF is 21.70% less than that of the conventional EKF. The experimental results verify the effectiveness and applicability of the proposed method.
机译:基于微型惯性测量单元(MIMU)的脚踏惯性步行定位系统(MIMU)是森林消防卫星系统不可用的好选择。零速度更新(zupt)提供了一种用于减少由惯性导航的积分计算引起的累积定位误差的解决方案。然而,Zupt的性能受到MIMU的低精度和高噪声的高度影响。通过在站立相期间的加速度和陀螺仪的漂移的零点偏移来减小常规ZUPT的准确性。提出了一种基于自适应梯度下降算法(AGDA)的初始对准算法。在步进阶段,扩展的卡尔曼滤波器(EKF)通常用于校正轨道估计中的姿态和位置。然而,EKF的测量噪声受高频加速度和角速度的影响。因此,姿态和位置的准确性将减少。提出了一种双限制的扩展卡尔曼滤波(DEKF)。设定了与加速度和角速度呈正相关的自适应参数,并且可以自适应地调整DEKF中的测量噪声。通过使用Invensense制造的MPU-9150 MIMU实施行人测试轨迹来验证所提出的方法的性能。结果表明,agda的姿态误差比常规GDA小33.82%。 DEKF的姿态误差比传统EKF小于21.70%。实验结果验证了该方法的有效性和适用性。

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