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首页> 外文期刊>International Journal of Control, Automation, and Systems >Attitude Determination Algorithm using State Estimation Including Lever Arms between Center of Gravity and IMU
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Attitude Determination Algorithm using State Estimation Including Lever Arms between Center of Gravity and IMU

机译:基于状态估计的姿态确定算法,包括重心和IMU之间的杠杆臂

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In this paper, an enhanced attitude determination algorithm is proposed to decrease the estimation error by including an additive state variable for the lever arm. Attitude determination generally is carried out by measurements from an IMU (inertial measurement unit), which is typically located at the center of gravity of the vehicle. The IMU lever arm, which spans the distance between the IMU and the center of gravity, causes extra acceleration in the accelerometer and increases the error in attitude estimates. However, if the extra accelerations caused by the lever arm can be removed from the measurements of accelerometers, the increased attitude error caused by the IMU lever arm can be prevented. Because an IMU lever arm is fixed in a vehicle after installation, it can be considered as an additive element of the state vector in Kalman filter for attitude determination. The proposed algorithm is composed of a quaternion-based Kalman filter and includes an estimation of the IMU lever arm. In addition, in order to determine components of lever arm, the gross measure of modal observability is investigated for the system. An evaluation of the proposed algorithm is carried out by simulations with a noise model based on an actual IMU. Evaluations through simulations show that the proposed algorithm improves the performance with regard to errors.
机译:本文提出了一种改进的姿态确定算法,通过为杠杆臂包括一个附加状态变量来减少估计误差。通常通过来自IMU(惯性测量单元)的测量来进行姿态确定,IMU通常位于车辆的重心。 IMU杠杆臂横跨IMU和重心之间的距离,在加速度计中产生额外的加速度,并增加了姿态估计中的误差。但是,如果可以从加速度计的测量结果中消除由杠杆臂引起的额外加速度,则可以防止由IMU杠杆臂引起的增加的姿态误差。由于IMU杠杆臂在安装后固定在车辆中,因此可以将其视为确定姿态的卡尔曼滤波器中状态向量的加法元素。所提出的算法由基于四元数的卡尔曼滤波器组成,并包括IMU杠杆臂的估计。另外,为了确定杠杆臂的组件,对系统的模态可观察性进行了总体测量。通过基于实际IMU的噪声模型进行仿真,对提出的算法进行了评估。通过仿真评估表明,所提出的算法在错误方面提高了性能。

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