Iterated rational quadratic kernel - High-order unscented Kalman filtering algorithm for spacecraft tracking

IF 5 Q1 ENGINEERING, MULTIDISCIPLINARY
Xinru Liang, Changsheng Gao, Wuxing Jing, Ruoming An
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引用次数: 0

Abstract

The high-speed development of space defense technology demands a high state estimation capacity for spacecraft tracking methods. However, reentry flight is accompanied by complex flight environments, which brings to the uncertain, complex, and strongly coupled non-Gaussian detection noise. As a result, there are several intractable considerations on the problem of state estimation tasks corrupted by complex non-Gaussian outliers for non-linear dynamics systems in practical application. To address these issues, a new iterated rational quadratic (RQ) kernel high-order unscented Kalman filtering (IRQ-HUKF) algorithm via capturing the statistics to break through the limitations of the Gaussian assumption is proposed. Firstly, the characteristic analysis of the RQ kernel is investigated in detail, which is the first attempt to carry out an exploration of the heavy-tailed characteristic and the ability on capturing high-order moments of the RQ kernel. Subsequently, the RQ kernel method is first introduced into the UKF algorithm as an error optimization criterion, termed the iterated RQ kernel-UKF (RQ-UKF) algorithm by derived analytically, which not only retains the high-order moments propagation process but also enhances the approximation capacity in the non-Gaussian noise problem for its ability in capturing high-order moments and heavy-tailed characteristics. Meanwhile, to tackle the limitations of the Gaussian distribution assumption in the linearization process of the non-linear systems, the high-order Sigma Points (SP) as a subsidiary role in propagating the state high-order statistics is devised by the moments matching method to improve the RQ-UKF. Finally, to further improve the flexibility of the IRQ-HUKF algorithm in practical application, an adaptive kernel parameter is derived analytically grounded in the Kullback-Leibler divergence (KLD) method and parametric sensitivity analysis of the RQ kernel. The simulation results demonstrate that the novel IRQ-HUKF algorithm is more robust and outperforms the existing advanced UKF with respect to the kernel method in reentry vehicle tracking scenarios under various noise environments.
迭代有理二次核--用于航天器跟踪的高阶无符号卡尔曼滤波算法
空间防御技术的高速发展对航天器跟踪方法的状态估计能力提出了更高的要求。然而,再入飞行伴随着复杂的飞行环境,带来了不确定的、复杂的、强耦合的非高斯检测噪声。因此,在实际应用中,非线性动力学系统的状态估计任务被复杂非高斯离群值破坏的问题存在一些难以解决的问题。为了解决这些问题,提出了一种新的迭代有理二次(RQ)核高阶无气味卡尔曼滤波(IRQ-HUKF)算法,该算法通过捕获统计量来突破高斯假设的局限性。首先,对RQ核的特征分析进行了详细的研究,首次对RQ核的重尾特征和高阶矩捕获能力进行了探索。随后,首先将RQ核方法作为误差优化准则引入到UKF算法中,推导出迭代RQ核-UKF (RQ-UKF)算法,该算法不仅保留了高阶矩的传播过程,而且由于具有捕获高阶矩和重尾特征的能力,增强了在非高斯噪声问题中的近似能力。同时,为了解决高斯分布假设在非线性系统线性化过程中的局限性,采用矩匹配方法设计了高阶西格玛点(SP)作为状态高阶统计量传播的辅助作用,改进了RQ-UKF。最后,为了进一步提高IRQ-HUKF算法在实际应用中的灵活性,基于Kullback-Leibler散度(KLD)方法和RQ核的参数敏感性分析,导出了自适应核参数。仿真结果表明,在各种噪声环境下的再入飞行器跟踪场景中,IRQ-HUKF算法的鲁棒性优于现有的先进UKF算法。
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来源期刊
Defence Technology(防务技术)
Defence Technology(防务技术) Mechanical Engineering, Control and Systems Engineering, Industrial and Manufacturing Engineering
CiteScore
8.70
自引率
0.00%
发文量
728
审稿时长
25 days
期刊介绍: Defence Technology, a peer reviewed journal, is published monthly and aims to become the best international academic exchange platform for the research related to defence technology. It publishes original research papers having direct bearing on defence, with a balanced coverage on analytical, experimental, numerical simulation and applied investigations. It covers various disciplines of science, technology and engineering.
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