基于核嵌入的彩色噪声系统状态估计

Kyuman Lee, Youngjun Choi, Eric N. Johnson
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引用次数: 4

摘要

作为航空电子系统中应用最广泛的状态估计器,卡尔曼滤波器的一个必要假设是过程噪声和测量噪声的高斯和白度。如果假设不成立,卡尔曼滤波器的性能就会下降,其估计结果也不再是最优的。事实上,许多航空电子应用会产生彩色噪声,而彩色噪声模型的参数通常是事先未知的,没有关于噪声统计的额外信息。此外,每个底层模型(非线性动态模型和测量模型)的功能有时是不正确的或部分未知的。为了估计每个噪声实例的未知相关性和参数模型的不确定建模误差的系统状态,我们提出了一种将分布的核嵌入到扩展卡尔曼滤波器中的新方法。在我们的方法中,核嵌入将过程和测量残差(由近似系统模型的输出和收集的训练数据之间的差异定义)映射到一个再现核希尔伯特空间中,以在函数空间中生成非参数模型。蒙特卡罗仿真结果表明,与现有方法(如扩展卡尔曼滤波和基于高斯过程的滤波)相比,该方法提高了有色噪声条件下状态估计的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Kernel embedding-based state estimation for colored noise systems
A required assumption of a Kalman filter, the most-widely-used state estimator in avionic systems, is the Gaussian and whiteness of process and measurement noise. If the assumption fails, the performance of the Kalman filter degrades, and its estimation results are no longer optimal. In fact, many avionic applications produce colored noise, and the parameters of colored noise models are typically unknown beforehand without additional information about the noise statistics. In addition, the functions of each underlying model — nonlinear dynamic and measurement models — are sometimes improper or partially unknown. To estimate the states of systems with unknown correlations of each instance of noise and uncertain modeling errors of parametric models, we propose a novel approach that incorporates the kernel embedding of distributions into the extended Kalman filter. In our approach, kernel embedding maps process and measurement residuals, defined by differences between outputs of approximate system models and collected training data, into a reproducing kernel Hilbert space to generate nonparametric models in the functional space. Results from Monte Carlo simulations demonstrate that the proposed method, compared to existing methods (e.g., extended Kalman filter and Gaussian process-based filter), improves the accuracy of state estimation under colored noise conditions.
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