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Enhancing Attitude Estimation Accuracy Via System Noise Optimization

机译:通过系统噪声优化提高姿态估计精度

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摘要

It is well known to the Kalman filter design and estimation community that the values for the process noise, Q, and measurement noise, R, covariance matrices primarily dictate the filter performance. In addition, selecting proper values for Q and R is traditionally done in an ad-hoc manner. This paper provides a new look into the roles of the process noise and measurement noise matrices using the spacecraft attitude estimation problem as the design benchmark. This includes an interesting situation where the theoretical values of Q and R, derived as a function of gyro and star tracker noise parameters, are exactly matched with the noise characteristics employed on the sensor model side. However, the filter still exhibits poor attitude estimation performance, as measured against an attitude knowledge requirement, while subject to a high rate slew profile. A simulation based tuning methodology is developed to optimize the filter performance and bring the attitude estimation back to within the required attitude knowledge bound.
机译:卡尔曼滤波器设计和估计社区众所周知,过程噪声Q和测量噪声R协方差矩阵的值主要决定了滤波器的性能。此外,传统上以临时方式选择Q和R的适当值。本文以航天器姿态估计问题为设计基准,对过程噪声和测量噪声矩阵的作用有了新的认识。这包括一个有趣的情况,其中根据陀螺仪和恒星跟踪仪噪声参数得出的Q和R的理论值与传感器模型侧采用的噪声特性完全匹配。然而,该滤波器仍然表现出较差的姿态估计性能,这是根据姿态知识要求测得的,同时要经历高速率摆率曲线。开发了一种基于仿真的调整方法,以优化滤波器性能,并将姿态估计带回到所需的姿态知识范围内。

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