Generalized Maximum Correntropy Kalman Filter for Target Tracking in TianGong-2 Space Laboratory

Yang Mo, Yaonan Wang, Hong Yang, Badong Chen, Hui Li, Zhihong Jiang
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引用次数: 2

Abstract

Target tracking plays an important role in the construction, operation, and maintenance of the space station by the robot, which puts forward high requirements on the accuracy of target tracking. However, the special space environment may cause complex non-Gaussian noise in target tracking data. And the performance of traditional Kalman Filter will deteriorate seriously when the error signals are non-Gaussian, which may lead to mission failure. In the paper, a novel Kalman Filter algorithm with Generalized Maximum Correntropy Criterion (GMCKF) is proposed to improve the tracking accuracy with non-Gaussian noise. The GMCKF algorithm, which replaces the default Gaussian kernel with the generalized Gaussian density function as kernel, can adapt to multi-type non-Gaussian noises and evaluate the noise accurately. A parameter automatic selection algorithm is proposed to determine the shape parameter of GMCKF algorithm, which helps the GMCKF algorithm achieve better performance for complex non-Gaussian noise. The performance of the proposed algorithm has been evaluated by simulations and the ground experiments. Then, the algorithm has been applied in the maintenance experiments in TianGong-2 space laboratory of China. The results validated the feasibility of the proposed method with the target tracking precision improved significantly in complex non-Gaussian environment.
广义最大熵卡尔曼滤波在天宫二号空间实验室目标跟踪中的应用
目标跟踪在机器人空间站的建设、运行和维护中起着重要的作用,这对目标跟踪的精度提出了很高的要求。然而,特殊的空间环境会导致目标跟踪数据中存在复杂的非高斯噪声。而传统的卡尔曼滤波在非高斯误差信号下性能会严重下降,可能导致任务失败。为了提高非高斯噪声下的跟踪精度,提出了一种基于广义最大相关系数准则(GMCKF)的卡尔曼滤波算法。GMCKF算法以广义高斯密度函数代替默认高斯核作为核,能够适应多种类型的非高斯噪声,并能准确地评估噪声。提出了一种参数自动选择算法来确定GMCKF算法的形状参数,使GMCKF算法在处理复杂非高斯噪声时获得更好的性能。通过仿真和地面实验对该算法的性能进行了评价。并将该算法应用于中国天宫二号空间实验室的维修实验中。结果验证了该方法的可行性,在复杂的非高斯环境下,目标跟踪精度显著提高。
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