Attitude Estimation & Control of a CubeSat Using Linear Quadratic Gaussian Approach

Hoor Bano, Bisma Sajid
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Abstract

Attitude estimation of satellites using Kalman Filters has been in practice for many years. The optimal attitude control in the presence of noise can be achieved by using the optimal controller and the optimal estimator, simultaneously. In this paper, the Linear Quadratic Regulator (LQR) has been implemented in conjunction with the Extended Kalman Filter (EKF) on a CubeSat model. Full quaternion-based model (dynamics & kinematics) of the CubeSat is employed for the design of LQR. Furthermore, an extended Kalman filter is designed using the reduced quaternion model. The filter is then implemented in the closed loop with the LQR, and the simulations are conducted. The data generation using the full quaternion model and the filter implementation using the reduced model, provide the benefit of computational ease all the while catering for any singularities in the model. The simulation results show adequate attitude control, estimation and noise filtration within a reasonable time and optimum control effort.
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基于线性二次高斯方法的立方体卫星姿态估计与控制
利用卡尔曼滤波器进行卫星姿态估计已经有多年的实践经验。通过同时使用最优控制器和最优估计器,可以实现存在噪声情况下的最优姿态控制。本文将线性二次型调节器(LQR)与扩展卡尔曼滤波器(EKF)结合在CubeSat模型上实现。采用立方体卫星的全四元数模型(动力学和运动学)设计LQR。在此基础上,利用四元数简化模型设计了扩展卡尔曼滤波器。然后利用LQR在闭环中实现滤波器,并进行了仿真。使用完整四元数模型的数据生成和使用简化模型的过滤器实现提供了计算方便的好处,同时满足了模型中的任何奇异性。仿真结果表明,该系统在合理的时间和最优的控制力度内实现了良好的姿态控制、估计和噪声过滤。
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